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%$Header: /home/dashley/cvsrep/e3ft_gpl01/e3ft_gpl01/dtaipubs/esrgubka/c_rat0/c_rat0.tex,v 1.28 2004/02/22 19:27:48 dtashley Exp $
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\chapter{Rational Linear Approximation}
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\label{crat0}
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\beginchapterquote{``Die ganzen Zahlen hat der liebe Gott gemacht,
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alles andere ist Menschenwerk.''\footnote{German
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language: God made the integers; everything
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else was made by man.}}
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{Leopold Kronecker}
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%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
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\section{Introduction}
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%Section tag: INT0
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\label{crat0:sint0}
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In this chapter, we consider practical applications of
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rational approximation.
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Chapters \cfryzeroxrefhyphen\ref{cfry0} and \ccfrzeroxrefhyphen\ref{ccfr0}
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have presented algorithms for finding
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the closest rational numbers to an arbitrary real number,
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subject to constraints on the numerator and denominator.
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The basis of these algorithms is complex and comes from number theory, and so
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these algorithms and their basis have been presented in separate chapters.
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In Section \ref{crat0:srla0}, rational linear approximation itself
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and associated error bounds are presented. By \emph{rational linear
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approximation} we mean simply the approximation of a line
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$y = r_I x$ ($y, r_I, x \in \vworkrealset$) by a line
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\begin{equation}
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\label{eq:crat0:sint0:01}
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y = \left\lfloor
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\frac{h \lfloor x \rfloor + z}{k}
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\right\rfloor ,
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\end{equation}
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\noindent{}where we choose $h/k \approx r_I$ and optionally choose $z$ to
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shift the error introduced. Note that (\ref{eq:crat0:sint0:01}) is
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very economical for microcontroller instruction sets, since only integer
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arithmetic is required. We may choose $h/k$ from a Farey series (see
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Chapters \cfryzeroxrefhyphen\ref{cfry0} and \ccfrzeroxrefhyphen\ref{ccfr0}), or
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we may choose a ratio $h/2^q$ so that the division in (\ref{eq:crat0:sint0:01})
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can be implemented
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by a bitwise right shift.
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Section \ref{crat0:srla0} discusses linear rational approximation
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in general, with a special eye on error analysis.
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Section \ref{crat0:spwi0} discusses piecewise linear rational approximation,
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which is the approximation of a curve or complex mapping by a
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number of joined line segments.
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Section \ref{crat0:sfdv0} discusses frequency division and rational counting.
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Such techniques share the same mathematical framework as rational linear
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approximation, and as with rational linear approximation the ratio
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involved may be chosen from a Farey series or with a denominator of $2^q$, depending
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on the algorithm employed.
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Section \ref{crat0:sbla0} discusses Bresenham's classic line algorithm,
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which is a practical application of rational linear approximation.
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\section{Rational Linear Approximation}
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%Section tag: RLA0
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\label{crat0:srla0}
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It occurs frequently in embedded software design that one wishes to
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implement a linear scaling from a domain to a range of the form
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\begin{equation}
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\label{eq:crat0:srla0:01}
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f(x) = r_I x ,
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\end{equation}
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\noindent{}where $r_I$ is the \emph{ideal}
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\subsection{Model Functions}
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%Section tag: mfu0
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\label{crat0:srla0:smfu0}
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In general, we seek to approximate the ideal function
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\noindent{}by some less ideal function where
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\begin{itemize}
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\item $r_A \neq r_I$, although we seek to choose $r_A \approx r_I$.
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\item The input to the function, $x$, may already contain
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quantization error.
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\item Although $r_I x \in \vworkrealsetnonneg$, we must choose
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an integer as the function output.
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\end{itemize}
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In modeling quantization error, we use the floor function\index{floor function}
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($\lfloor\cdot\rfloor$)
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for algebraic simplicity. The floor function precisely
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describes the behavior of integer division instructions (where
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remainders are discarded), but may not describe other sources of
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quantization, such as quantization that occurs in A/D conversion.
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However, techniques identical to those presented in this
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section may be used when quantization is not best described
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by the floor function, and these results are left to the reader.
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Traditionally, because addition of integers is an inexpensive
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machine operation, a parameter $z \in \vworkintset$ may optionally
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be added to the product $hx$ in order to round or otherwise
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shift the result.
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If $x$ is assumed to be without error, the ideal function is
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given by (\ref{eq:crat0:srla0:smfu0:01}), whereas the function
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that can be economically implemented is
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\begin{equation}
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\label{eq:crat0:srla0:smfu0:02}
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g(x) = \left\lfloor \frac{hx + z}{k} \right\rfloor
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=
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\left\lfloor r_A x + \frac{z}{k} \right\rfloor .
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\end{equation}
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If, on the other hand, $x$ may be already quantized,
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the function that can actually be implemented is
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\begin{equation}
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\label{eq:crat0:srla0:smfu0:03}
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h(x) = \left\lfloor \frac{h \lfloor x \rfloor + z}{k} \right\rfloor
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=
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\left\lfloor r_A \lfloor x \rfloor + \frac{z}{k} \right\rfloor .
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\end{equation}
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\section[\protect\mbox{\protect$h/2^q$} and \protect\mbox{\protect$2^q/k$} Rational Linear Approximation]
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{\protect\mbox{\protect\boldmath$h/2^q$} and \protect\mbox{\protect\boldmath$2^q/k$} Rational Linear Approximation}
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%Section tag: HQQ0
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\label{crat0:shqq0}
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\index{h/2q@$h/2^q$ rational linear approximation}
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\index{rational linear approximation!h/2q@$h/2^q$}
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The algorithms presented in
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Chapters \cfryzeroxrefhyphen\ref{cfry0} and \ccfrzeroxrefhyphen\ref{ccfr0}
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will always provide the rational number $h/k$ closest to
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an arbitrary real number $r_I$ subject to the constraints
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$h \leq h_{MAX}$ and $k \leq k_{MAX}$.
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However, because shifting in order
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to implement multiplication or division by a power of 2
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is at least as fast (and often \emph{much} faster)
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on all processors as arbitrary multiplication or division,
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and because not all processors have multiplication and division instructions,
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it is worthwhile to examine choosing $h/k$ so that either $h$ or $k$ are
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powers of 2.
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There are thus three rational linear approximation techniques to be
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examined:
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\begin{enumerate}
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\item \emph{$h/k$ rational linear approximation}, in which an arbitrary
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$h \leq h_{MAX}$ and an arbitrary $k \leq k_{MAX}$ are used,
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with $r_A = h/k$. $h$ and $k$ can be chosen using the algorithms
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presented in Chapters \cfryzeroxrefhyphen\ref{cfry0} and \ccfrzeroxrefhyphen\ref{ccfr0}.
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Implementation of this technique would most often involve a single integer
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multiplication instruction to form the product $hx$, followed by an optional single
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addition instruction to form the sum $hx+z$, and then
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followed by by a single division instruction
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to form the quotient $\lfloor (hx+z)/k \rfloor$. Implementation may also less commonly involve
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multiplication, addition, and division of operands too large to be processed
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with single machine instructions.
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\item \emph{$h/2^q$ rational linear approximation}, in which an arbitrary
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$h \leq h_{MAX}$ and an integral power of two $k=2^q$ are used, with
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$r_A = h/2^q$.
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Implementation of this technique would most often involve a single integer
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multiplication instruction to form the product $hx$, followed by an optional single
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addition instruction to form the sum $hx+z$, and then
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followed by right shift instruction(s)
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to form the quotient $\lfloor (hx+z)/2^q \rfloor$. Implementation may also less commonly involve
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multiplication, addition, and right shift of operands too large to be processed
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with single machine instructions.
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\item \emph{$2^q/k$ rational linear approximation}, in which an integral
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power of two $h=2^q$ and an arbitrary $k \leq k_{MAX}$ are used, with
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$r_A = 2^q/k$.
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Implementation of this technique would most often involve left shift
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instruction(s) to form the product $2^qx$, followed by an optional single
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addition instruction to form the sum $2^qx+z$, and then
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followed by a single division instruction to form
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the quotient $\lfloor (2^qx+z)/k \rfloor$. Implementation may also less
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commonly involve
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left shift, addition, and division of operands too large to be processed
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with single machine instructions.
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\end{enumerate}
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We use the nomenclature ``\emph{$h/k$ rational linear approximation}'',
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``\emph{$h/2^q$ rational linear approximation}'', and
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``\emph{$2^q/k$ rational linear approximation}'' to identify the three
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techniques enumerated above.
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%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
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%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
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\subsection{Integer Arithmetic and Processor Instruction Set Characteristics}
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%Subsection tag: pis0
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\label{crat0:shqq0:pis0}
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The following observations about integer arithmetic and about processors
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used in embedded control can be made:
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\begin{enumerate}
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\item \label{enum:crat0:shqq0:pis0:01:01a}
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\emph{Shifting is the fastest method of integer multiplication or division
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(by $2^q$ only),
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followed by utilization of the processor multiplication or division instructions (for arbitrary
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operands),
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followed by software implementation of multiplication or division (for arbitrary operands).}
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Relative costs vary depending on the processor, but the monotonic
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ordering always holds.
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$h/2^q$ and $2^q/k$ rational linear
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approximation are thus worthy of investigation. (Note also that in many practical
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applications of $h/2^q$ and $2^q/k$ rational linear approximation,
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the required shift is performed by
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addressing the operand with an offset,
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and so has no cost.)
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\item \label{enum:crat0:shqq0:pis0:01:01b}
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\emph{Shifting is $O(N)$ (where $N$ is the number of bits in the argument),
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but both
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multiplication and division are $O(N^2)$ for
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practical\footnote{\index{Karatsuba multiplication}Karatsuba
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multiplication, for example, is
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$O(N^{\log_2 3}) \approx O(N^{1.58}) \ll O(N^2)$. However, Karatsuba
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multiplication cannot be applied economically to the small
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operands that typically occur in embedded control work. It would
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be rare in embedded control applications
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for the length of a multiplication operand to exceed four
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times the length that is accommodated by a machine instruction; and this
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is far below the threshold at which Karatsuba multiplication is
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economical. Thus, for all intents and purposes in embedded control work,
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multiplication is $O(N^2)$.} operands (where
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$N$ is the number of bits in each
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operand).} It follows that $2^q/k$ and $h/2^q$ rational
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linear approximation
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will scale to large operands better than $h/k$ rational linear approximation.
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\item \label{enum:crat0:shqq0:pis0:01:02a}
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\emph{Integer division instructions take as long or longer than
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integer multiplication instructions.} In designing digital logic
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to implement basic integer arithmetic, division is the operation most difficult
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to perform economically.\footnote{For some processors, the penalty is extreme.
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For example, on the NEC V850 (a RISC processor),
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a division requires 36 clock cycles,
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whereas multiplication, addition, and subtraction each effectively
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require 1 clock cycle.}
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It follows that multiplication using operands that exceed the machine's word size
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is often far less expensive than division using operands that exceed the
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machine's word size.
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\item \label{enum:crat0:shqq0:pis0:01:03a}
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\emph{All processors that have an integer division instruction also
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have an integer multiplication instruction.}
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Phrased
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differently, no processor has an integer division instruction but no
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integer multiplication instruction.
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\end{enumerate}
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Enumerated items
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(\ref{enum:crat0:shqq0:pis0:01:01a}) through
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(\ref{enum:crat0:shqq0:pis0:01:03a}) above lead to the following conclusions.
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\begin{enumerate}
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\item $h/2^q$ rational linear approximation is likely to be implementable
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more efficiently on most processors than $h/k$ rational linear approximation.
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(\emph{Rationale:} shift instruction(s) or accessing a
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memory address with an offset
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is
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likely to be more economical than division, particularly if $k$ would exceed
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the native
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operand size of the processor.)
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\item $h/2^q$ rational linear approximation is likely to be a more useful
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technique than $2^q/k$ rational linear approximation.
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(\emph{Rationale:} the generally high cost of division compared to
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multiplication, and the existence of processors that possess a multiplication
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instruction but no division instruction.)
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\end{enumerate}
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%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
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%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
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%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
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\subsection[Design Procedure For \protect\mbox{\protect$h/2^q$} Rational Linear Approximations]
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{Design Procedure For \protect\mbox{\protect\boldmath$h/2^q$} Rational Linear Approximation}
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%Subsection tag: dph0
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\label{crat0:shqq0:dph0}
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An $h/2^q$ rational linear approximation is parameterized by:
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\begin{itemize}
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\item The unsigned or signed nature of $h$ and $x$. (Rational linear approximations
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may involve either signed or unsigned domains and ranges. Furthermore,
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signed integers may be maintained using either 2's-complement
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or sign-magnitude representation, and the processor instruction set
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may or may not directly support signed multiplication.)
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\item $r_I$, the real number we wish to approximate by $r_A = h/2^q$.
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\item $x_{MAX}$, the maximum possible value of the input argument $x$. (Typically,
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software contains a test to clip the output if $x > x_{MAX}$.)
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\item $w_h$, the width in bits allowed for $h$. (Typically, $w_h$ is
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the maximum operand size of a machine multiplication instruction.)
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\item $w_r$, the width in bits allowed for the result $hx$. (Typically,
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$w_r$ is the maximum result size of a machine multiplication instruction.)
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|
|
\item The rounding mode when choosing $h$ (and thus effectively $r_A$)
|
319 |
|
|
based on $r_I$. It is common to choose the
|
320 |
|
|
closest value,
|
321 |
|
|
$r_A=\lfloor r_I 2^q + 1/2 \rfloor/2^q$
|
322 |
|
|
or
|
323 |
|
|
$r_A=\lceil r_I 2^q - 1/2 \rceil/2^q$,
|
324 |
|
|
but other choices are possible.
|
325 |
|
|
\item The rounding mode for the result (i.e. the choice of $z$ in
|
326 |
|
|
Eq. \ref{eq:crat0:sint0:01}).
|
327 |
|
|
\end{itemize}
|
328 |
|
|
|
329 |
|
|
This section develops a design procedure for $h/2^q$ rational linear
|
330 |
|
|
approximations with the most typical set of assumptions: unsigned arithmetic,
|
331 |
|
|
$r_A=\lfloor r_I 2^q + 1/2 \rfloor/2^q$,
|
332 |
|
|
and $z=0$. Design procedures for other scenarios are presented as exercises.
|
333 |
|
|
|
334 |
|
|
By definition, $h$ is constrained in two ways:
|
335 |
|
|
|
336 |
|
|
\begin{equation}
|
337 |
|
|
\label{eq:crat0:shqq0:dph0:00}
|
338 |
|
|
h \leq 2^{w_h} - 1
|
339 |
|
|
\end{equation}
|
340 |
|
|
|
341 |
|
|
\noindent{}and
|
342 |
|
|
|
343 |
|
|
\begin{equation}
|
344 |
|
|
\label{eq:crat0:shqq0:dph0:01}
|
345 |
|
|
h \leq \frac{2^{w_r} - 1}{x_{MAX}} .
|
346 |
|
|
\end{equation}
|
347 |
|
|
|
348 |
|
|
\noindent{}(\ref{eq:crat0:shqq0:dph0:00}) comes directly from the
|
349 |
|
|
requirement that $h$ fit in $w_h$ bits.
|
350 |
|
|
(\ref{eq:crat0:shqq0:dph0:01}) comes directly from the requirement
|
351 |
|
|
that $hx$ fit in $w_r$ bits.
|
352 |
|
|
(\ref{eq:crat0:shqq0:dph0:00}) and (\ref{eq:crat0:shqq0:dph0:01})
|
353 |
|
|
may be combined to form one inequality:
|
354 |
|
|
|
355 |
|
|
\begin{equation}
|
356 |
|
|
\label{eq:crat0:shqq0:dph0:02}
|
357 |
|
|
h \leq \min \left( { 2^{w_h} - 1, \frac{2^{w_r} - 1}{x_{MAX}} } \right ) .
|
358 |
|
|
\end{equation}
|
359 |
|
|
|
360 |
|
|
If $q$ is known, the choice of $h$ that will be made so as to minimize
|
361 |
|
|
$|r_A-r_I| = |h/2^q - r_I|$ is
|
362 |
|
|
|
363 |
|
|
\begin{equation}
|
364 |
|
|
\label{eq:crat0:shqq0:dph0:03}
|
365 |
|
|
h=\left\lfloor r_I 2^q + \frac{1}{2} \right\rfloor .
|
366 |
|
|
\end{equation}
|
367 |
|
|
|
368 |
|
|
\noindent{}It is required that the choice of $h$ specified by
|
369 |
|
|
(\ref{eq:crat0:shqq0:dph0:03}) meet
|
370 |
|
|
(\ref{eq:crat0:shqq0:dph0:02}). Making the most pessimistic
|
371 |
|
|
assumption about the rounding of $h$ and substituting into
|
372 |
|
|
(\ref{eq:crat0:shqq0:dph0:02}) leads to
|
373 |
|
|
|
374 |
|
|
\begin{equation}
|
375 |
|
|
\label{eq:crat0:shqq0:dph0:04}
|
376 |
|
|
r_I 2^q + \frac{1}{2}
|
377 |
|
|
\leq
|
378 |
|
|
\min \left( { 2^{w_h} - 1, \frac{2^{w_r} - 1}{x_{MAX}} } \right ) .
|
379 |
|
|
\end{equation}
|
380 |
|
|
|
381 |
|
|
\noindent{}Isolating $q$ in (\ref{eq:crat0:shqq0:dph0:04})
|
382 |
|
|
yields
|
383 |
|
|
|
384 |
|
|
\begin{equation}
|
385 |
|
|
\label{eq:crat0:shqq0:dph0:05}
|
386 |
|
|
2^q
|
387 |
|
|
\leq
|
388 |
|
|
\frac{\min \left( { 2^{w_h} - 1, \frac{2^{w_r} - 1}{x_{MAX}} } \right ) - \frac{1}{2}}
|
389 |
|
|
{r_I}.
|
390 |
|
|
\end{equation}
|
391 |
|
|
|
392 |
|
|
\noindent{}Solving
|
393 |
|
|
(\ref{eq:crat0:shqq0:dph0:05})
|
394 |
|
|
for maximum value of $q$ that meets the constraint yields
|
395 |
|
|
|
396 |
|
|
\begin{equation}
|
397 |
|
|
\label{eq:crat0:shqq0:dph0:06}
|
398 |
|
|
q=
|
399 |
|
|
\left\lfloor
|
400 |
|
|
{
|
401 |
|
|
\log_2
|
402 |
|
|
\left(
|
403 |
|
|
{
|
404 |
|
|
\frac{\min \left( { 2^{w_h} - 1, \frac{2^{w_r} - 1}{x_{MAX}} } \right ) - \frac{1}{2}}{r_I}
|
405 |
|
|
}
|
406 |
|
|
\right)
|
407 |
|
|
}
|
408 |
|
|
\right\rfloor .
|
409 |
|
|
\end{equation}
|
410 |
|
|
|
411 |
|
|
\noindent{}(\ref{eq:crat0:shqq0:dph0:06})
|
412 |
|
|
can be rewritten for easier calculation using most calculators (which do
|
413 |
|
|
not allow the direct evaluation of base-2 logarithms):
|
414 |
|
|
|
415 |
|
|
\begin{equation}
|
416 |
|
|
\label{eq:crat0:shqq0:dph0:07}
|
417 |
|
|
q=
|
418 |
|
|
\left\lfloor
|
419 |
|
|
\frac
|
420 |
|
|
{
|
421 |
|
|
{
|
422 |
|
|
\ln
|
423 |
|
|
\left(
|
424 |
|
|
{
|
425 |
|
|
\frac{\min \left( { 2^{w_h} - 1, \frac{2^{w_r} - 1}{x_{MAX}} } \right ) - \frac{1}{2}}{r_I}
|
426 |
|
|
}
|
427 |
|
|
\right)
|
428 |
|
|
}
|
429 |
|
|
}
|
430 |
|
|
{\ln 2}
|
431 |
|
|
\right\rfloor .
|
432 |
|
|
\end{equation}
|
433 |
|
|
|
434 |
|
|
\noindent{}Once $q$ is established using (\ref{eq:crat0:shqq0:dph0:07}),
|
435 |
|
|
$h$ can be calculated using (\ref{eq:crat0:shqq0:dph0:03}).
|
436 |
|
|
|
437 |
|
|
In embedded control work (as well as in operating system internals),
|
438 |
|
|
$h/2^q$ rational linear approximations are often used in conjunction with
|
439 |
|
|
tabulated constants or calibratable parameters
|
440 |
|
|
where each constant or calibratable parameter may vary over a range of
|
441 |
|
|
$[0, r_I]$, and where $r_I$ is the value used in the design procedure
|
442 |
|
|
presented above. In these applications, the values of $h$ are
|
443 |
|
|
tabulated, but $q$ is invariant (usually hard-coded)
|
444 |
|
|
and is chosen at design time based on the upper bound $r_I$
|
445 |
|
|
of the interval $[0, r_I]$ in which each tabulated constant or calibratable
|
446 |
|
|
parameter will fall. With $q$ fixed,
|
447 |
|
|
$r_A$ can be adjusted in steps of $1/2^q$.
|
448 |
|
|
|
449 |
|
|
If $r_I$ is invariant, a final design step may be to reduce the rational
|
450 |
|
|
number $h/2^q$ by dividing some or all occurrences of 2 as a factor from both the
|
451 |
|
|
numerator and denominator. With some processors and in some applications, this
|
452 |
|
|
may save execution time by reducing the number of shift instructions that
|
453 |
|
|
must be executed, reducing the execution time of the shift instructions
|
454 |
|
|
that are executed, or allowing shifting via offset addressing.
|
455 |
|
|
For example, on a byte-addressible machine, if the design procedure
|
456 |
|
|
yields $h=608$ and $q=10$, it may be desirable to divide both $h$ and $2^q$ by 4 to
|
457 |
|
|
yield $h=152$ and $q=8$, as this allows the shift by 8 to be done by fetching
|
458 |
|
|
alternate bytes (rather than by actual shifting). In other applications, it may
|
459 |
|
|
be desirable to remove \emph{all} occurrences of 2 as a prime factor
|
460 |
|
|
from $h$.
|
461 |
|
|
|
462 |
|
|
For an invariant $r_I$, a suitable design procedure is:
|
463 |
|
|
|
464 |
|
|
\begin{enumerate}
|
465 |
|
|
\item Choose $q$ using (\ref{eq:crat0:shqq0:dph0:07}).
|
466 |
|
|
\item With $q$ fixed, choose $h$ using (\ref{eq:crat0:shqq0:dph0:03}).
|
467 |
|
|
\item If economies can be achieved on the target processor,
|
468 |
|
|
examine the possibility of removing some or all occurrences
|
469 |
|
|
of 2 as a prime factor from $h$ and decreasing $q$.
|
470 |
|
|
\end{enumerate}
|
471 |
|
|
|
472 |
|
|
For tabulated or calibratable constants in the
|
473 |
|
|
interval $[0,r_I]$, a suitable design procedure is to use the
|
474 |
|
|
procedure presented immediately above but without the third step.
|
475 |
|
|
Each tabulated value of $h$ is chosen using (\ref{eq:crat0:shqq0:dph0:03}).
|
476 |
|
|
|
477 |
|
|
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
|
478 |
|
|
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
|
479 |
|
|
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
|
480 |
|
|
\subsection[Design Procedure For \protect\mbox{\protect$2^q/k$} Rational Linear Approximations]
|
481 |
|
|
{Design Procedure For \protect\mbox{\protect\boldmath$2^q/k$} Rational Linear Approximation}
|
482 |
|
|
%Subsection tag: dpk0
|
483 |
|
|
\label{crat0:shqq0:dpk0}
|
484 |
|
|
|
485 |
|
|
TBD.
|
486 |
|
|
|
487 |
|
|
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
|
488 |
|
|
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
|
489 |
|
|
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
|
490 |
|
|
\section{Piecewise Rational Linear Approximation}
|
491 |
|
|
%Section tag: PWI0
|
492 |
|
|
\label{crat0:spwi0}
|
493 |
|
|
|
494 |
|
|
TBD.
|
495 |
|
|
|
496 |
|
|
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
|
497 |
|
|
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
|
498 |
|
|
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
|
499 |
|
|
\section[Frequency Division And Rational Counting]
|
500 |
|
|
{Frequency Division And Rational Counting Techniques}
|
501 |
|
|
%Section tag: FDV0
|
502 |
|
|
\label{crat0:sfdv0}
|
503 |
|
|
|
504 |
|
|
\index{frequency division}\index{rational counting}\index{counting}%
|
505 |
|
|
Often, software must ``divide down'' an execution rate. For example,
|
506 |
|
|
an interrupt service routine may be scheduled by hardware every
|
507 |
|
|
10ms, but may perform useful processing only every 50ms. This requires
|
508 |
|
|
that the ISR maintain a counter and only perform useful processing
|
509 |
|
|
every fifth invocation. This section deals with counting strategies
|
510 |
|
|
used to achieve invocation frequency division and other similar results.
|
511 |
|
|
|
512 |
|
|
Frequency division and
|
513 |
|
|
rational counting techniques presented in this section find application
|
514 |
|
|
primarily in the following scenarios:
|
515 |
|
|
|
516 |
|
|
\begin{itemize}
|
517 |
|
|
\item ISRs and other software components which must divide down
|
518 |
|
|
their invocation rate.
|
519 |
|
|
\item Pulse counting and scaling from encoders and other
|
520 |
|
|
similar systems.
|
521 |
|
|
\item The correction of inaccuracies in timebases (such as crystals
|
522 |
|
|
which oscillate at a frequency different than the
|
523 |
|
|
nominal rate).
|
524 |
|
|
\end{itemize}
|
525 |
|
|
|
526 |
|
|
Because the techniques presented must be usable with inexpensive
|
527 |
|
|
microcontrollers, such techniques must meet these constraints:
|
528 |
|
|
|
529 |
|
|
\begin{enumerate}
|
530 |
|
|
\item \label{enum:01:crat0:sfdv0:econex}
|
531 |
|
|
The counting techniques must be economical to execute on
|
532 |
|
|
an inexpensive microcontroller.
|
533 |
|
|
\item \label{enum:01:crat0:sfdv0:econcccalc}
|
534 |
|
|
An inexpensive microcontroller must be capable of calculating any
|
535 |
|
|
constants used as limits in counting (i.e. it cannot necessarily
|
536 |
|
|
be assumed that a more powerful computer calculates these constants,
|
537 |
|
|
and it cannot be assumed that these limits do not change on the fly).
|
538 |
|
|
\end{enumerate}
|
539 |
|
|
|
540 |
|
|
In this section, we analyze the behavior of several types of
|
541 |
|
|
rational counting algorithms, supplied as Algorithms
|
542 |
|
|
\ref{alg:crat0:sfdv0:01a}
|
543 |
|
|
through
|
544 |
|
|
\ref{alg:crat0:sfdv0:02a}.
|
545 |
|
|
|
546 |
|
|
\begin{algorithm}
|
547 |
|
|
\begin{verbatim}
|
548 |
|
|
/* The constants K1 through K4, which parameterize the */
|
549 |
|
|
/* counting behavior, are assumed assigned elsewhere in */
|
550 |
|
|
/* the code. The solution is analyzed in terms of the */
|
551 |
|
|
/* parameters K1 through K4. */
|
552 |
|
|
/* */
|
553 |
|
|
/* We also place the following restrictions on K1 through */
|
554 |
|
|
/* K4: */
|
555 |
|
|
/* K1 : K1 <= K3 - K2. */
|
556 |
|
|
/* K2 : K4 > K2 > 0. */
|
557 |
|
|
/* K3 : No restrictions. */
|
558 |
|
|
/* K4 : K4 > K2 > 0. */
|
559 |
|
|
|
560 |
|
|
void base_rate_sub(void)
|
561 |
|
|
{
|
562 |
|
|
static int state = K1;
|
563 |
|
|
|
564 |
|
|
state += K2;
|
565 |
|
|
|
566 |
|
|
if (state >= K3)
|
567 |
|
|
{
|
568 |
|
|
state -= K4;
|
569 |
|
|
A();
|
570 |
|
|
}
|
571 |
|
|
}
|
572 |
|
|
\end{verbatim}
|
573 |
|
|
\caption{Rational Counting Algorithm For $K_2/K_4 < 1$}
|
574 |
|
|
\label{alg:crat0:sfdv0:01a}
|
575 |
|
|
\end{algorithm}
|
576 |
|
|
|
577 |
|
|
\begin{algorithm}
|
578 |
|
|
\begin{verbatim}
|
579 |
|
|
/* The constants K1 through K4, which parameterize the */
|
580 |
|
|
/* counting behavior, are assumed assigned elsewhere in */
|
581 |
|
|
/* the code. The solution is analyzed in terms of the */
|
582 |
|
|
/* parameters K1 through K4. */
|
583 |
|
|
/* */
|
584 |
|
|
/* We also place the following restrictions on K1 through */
|
585 |
|
|
/* K4: */
|
586 |
|
|
/* K1 : K1 <= K3 - K2. */
|
587 |
|
|
/* K2 : K2 > 0. */
|
588 |
|
|
/* K3 : No restrictions. */
|
589 |
|
|
/* K4 : K4 > 0. */
|
590 |
|
|
|
591 |
|
|
void base_rate_sub(void)
|
592 |
|
|
{
|
593 |
|
|
static int state = K1;
|
594 |
|
|
|
595 |
|
|
state += K2;
|
596 |
|
|
|
597 |
|
|
while (state >= K3)
|
598 |
|
|
{
|
599 |
|
|
state -= K4;
|
600 |
|
|
A();
|
601 |
|
|
}
|
602 |
|
|
}
|
603 |
|
|
\end{verbatim}
|
604 |
|
|
\caption{Rational Counting Algorithm For $K_2/K_4 \geq 1$}
|
605 |
|
|
\label{alg:crat0:sfdv0:01b}
|
606 |
|
|
\end{algorithm}
|
607 |
|
|
|
608 |
|
|
\begin{algorithm}
|
609 |
|
|
\begin{verbatim}
|
610 |
|
|
/* The constants K1, K2, and K4, which parameterize the */
|
611 |
|
|
/* counting behavior, are assumed assigned elsewhere in */
|
612 |
|
|
/* the code. The solution is analyzed in terms of the */
|
613 |
|
|
/* parameters K1 through K4. */
|
614 |
|
|
/* */
|
615 |
|
|
/* We also place the following restrictions on K1, K2, */
|
616 |
|
|
/* and K4: */
|
617 |
|
|
/* K1 : K1 >= 0. */
|
618 |
|
|
/* K2 : K4 > K2 > 0. */
|
619 |
|
|
/* K4 : K4 > K2 > 0. */
|
620 |
|
|
/* */
|
621 |
|
|
/* Special thanks to Chuck B. Falconer (of the */
|
622 |
|
|
/* comp.arch.embedded newsgroup) for this rational */
|
623 |
|
|
/* counting algorithm. */
|
624 |
|
|
/* */
|
625 |
|
|
/* Note below that the test against K3 does not exist, */
|
626 |
|
|
/* instead a test against zero is used, which many */
|
627 |
|
|
/* machine instruction sets will do as part of the */
|
628 |
|
|
/* subtraction (but perhaps this needs to be coded in */
|
629 |
|
|
/* A/L). This saves machine code and also eliminates */
|
630 |
|
|
/* one unnecessary degree of freedom (K3). */
|
631 |
|
|
|
632 |
|
|
void base_rate_sub(void)
|
633 |
|
|
{
|
634 |
|
|
static int state = K1;
|
635 |
|
|
|
636 |
|
|
if ((state -= K2) < 0)
|
637 |
|
|
{
|
638 |
|
|
state += K4;
|
639 |
|
|
A();
|
640 |
|
|
}
|
641 |
|
|
}
|
642 |
|
|
\end{verbatim}
|
643 |
|
|
\caption{Zero-Test Rational Counting Algorithm For $K_2/K_4 < 1$}
|
644 |
|
|
\label{alg:crat0:sfdv0:01c}
|
645 |
|
|
\end{algorithm}
|
646 |
|
|
|
647 |
|
|
\begin{algorithm}
|
648 |
|
|
\begin{verbatim}
|
649 |
|
|
;Special thanks to John Larkin (of the comp.arch.embedded
|
650 |
|
|
;newsgroup) for this rational counting algorithm.
|
651 |
|
|
;
|
652 |
|
|
;This is the TMS-370C8 assembly-language version of the
|
653 |
|
|
;algorithm. The algorithm is parameterized solely by
|
654 |
|
|
;K1 and K2, with no restrictions on their values, because
|
655 |
|
|
;the values are naturally constrained by the data types.
|
656 |
|
|
;K1, which is the initial value of "state", is assumed
|
657 |
|
|
;assigned elsewhere. The snippet shown here uses only
|
658 |
|
|
;K2.
|
659 |
|
|
MOV state, A ;Get "state".
|
660 |
|
|
ADD #K2, A ;Increase by K2. Carry flag
|
661 |
|
|
;will be set if rollover to or
|
662 |
|
|
;past zero.
|
663 |
|
|
PUSH ST ;Save carry flag.
|
664 |
|
|
MOV A, state ;Move new value back.
|
665 |
|
|
POP ST ;Restore carry flag.
|
666 |
|
|
JNC done ;If didn't roll, don't run sub.
|
667 |
|
|
CALL A_SUBROUTINE ;Run sub.
|
668 |
|
|
done:
|
669 |
|
|
|
670 |
|
|
/* This is the 'C' version of the algorithm. It is not */
|
671 |
|
|
/* as easy or efficient in 'C' to detect rollover. */
|
672 |
|
|
|
673 |
|
|
void base_rate_sub(void)
|
674 |
|
|
{
|
675 |
|
|
static unsigned int state = K1;
|
676 |
|
|
unsigned int old_state;
|
677 |
|
|
|
678 |
|
|
old_state = state;
|
679 |
|
|
state += K2;
|
680 |
|
|
if (state < old_state)
|
681 |
|
|
{
|
682 |
|
|
A();
|
683 |
|
|
}
|
684 |
|
|
}
|
685 |
|
|
\end{verbatim}
|
686 |
|
|
\caption{$2^q$ Rollover Rational Counting Algorithm}
|
687 |
|
|
\label{alg:crat0:sfdv0:01d}
|
688 |
|
|
\end{algorithm}
|
689 |
|
|
|
690 |
|
|
\begin{algorithm}
|
691 |
|
|
\begin{verbatim}
|
692 |
|
|
/* The constants K1 through K4, which parameterize the */
|
693 |
|
|
/* counting behavior, are assumed assigned elsewhere in */
|
694 |
|
|
/* the code. The solution is analyzed in terms of the */
|
695 |
|
|
/* parameters K1 through K4. */
|
696 |
|
|
/* */
|
697 |
|
|
/* We also place the following restrictions on K1 through */
|
698 |
|
|
/* K4: */
|
699 |
|
|
/* K1 : K1 <= K3. */
|
700 |
|
|
/* K2 : K2 > 0. */
|
701 |
|
|
/* K3 : No restrictions. */
|
702 |
|
|
/* K4 : K4 > 0. */
|
703 |
|
|
|
704 |
|
|
void base_rate_sub(void)
|
705 |
|
|
{
|
706 |
|
|
static unsigned int state = K1;
|
707 |
|
|
|
708 |
|
|
if (state >= K3)
|
709 |
|
|
{
|
710 |
|
|
state -= K4;
|
711 |
|
|
A();
|
712 |
|
|
}
|
713 |
|
|
else
|
714 |
|
|
{
|
715 |
|
|
state += K2;
|
716 |
|
|
B();
|
717 |
|
|
}
|
718 |
|
|
}
|
719 |
|
|
\end{verbatim}
|
720 |
|
|
\caption{Rational Counting Algorithm With \texttt{else} Clause}
|
721 |
|
|
\label{alg:crat0:sfdv0:02a}
|
722 |
|
|
\end{algorithm}
|
723 |
|
|
|
724 |
|
|
|
725 |
|
|
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
|
726 |
|
|
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
|
727 |
|
|
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
|
728 |
|
|
\subsection[Properties Of Algorithm \ref{alg:crat0:sfdv0:01a}]
|
729 |
|
|
{Properties Of Rational Counting Algorithm \ref{alg:crat0:sfdv0:01a}}
|
730 |
|
|
%Section tag: PRC0
|
731 |
|
|
\label{crat0:sfdv0:sprc0}
|
732 |
|
|
|
733 |
|
|
Algorithm \ref{alg:crat0:sfdv0:01a}
|
734 |
|
|
is used frequently in microcontroller
|
735 |
|
|
software. A base rate subroutine\footnote{For brevity, we usually
|
736 |
|
|
call this just the \emph{base subroutine}.} (named ``\texttt{base\_rate\_sub()}''
|
737 |
|
|
in the algorithm) is called at a periodic rate, and subroutine
|
738 |
|
|
``\texttt{A()}'' is called at a lesser rate.
|
739 |
|
|
We are interested in determining the relationships between the rates
|
740 |
|
|
as a function of $K_1$, $K_2$, $K_3$, and $K_4$; and we are interested
|
741 |
|
|
in developing other properties.
|
742 |
|
|
|
743 |
|
|
Notationally when analyzing rational counting algorithms, we agree
|
744 |
|
|
that $state_n$ denotes the value of the \texttt{state} variable
|
745 |
|
|
after the $n$th invocation and before the $n+1$'th invocation
|
746 |
|
|
of the base rate subroutine.
|
747 |
|
|
Using this convention with Algorithm \ref{alg:crat0:sfdv0:01a},
|
748 |
|
|
$state_0 = K_1$.\footnote{Algorithm \ref{alg:crat0:sfdv0:01a}
|
749 |
|
|
requires a knowledge of
|
750 |
|
|
`C' to fully understand. The \texttt{static} keyword ensures that the
|
751 |
|
|
variable \texttt{state} is initialized only once, at the time the program
|
752 |
|
|
is loaded. \texttt{state} is \emph{not} initialized each time the
|
753 |
|
|
base subroutine runs.}
|
754 |
|
|
|
755 |
|
|
We can first easily derive the number of initial invocations of
|
756 |
|
|
the base subroutine before ``\texttt{A()}'' is called for the first
|
757 |
|
|
time.
|
758 |
|
|
|
759 |
|
|
\begin{vworklemmastatement}
|
760 |
|
|
\label{lem:crat0:sfdv0:sprc0:01}
|
761 |
|
|
$N_{STARTUP}$, the number of invocations of the base subroutine
|
762 |
|
|
in Algorithm \ref{alg:crat0:sfdv0:01a} before ``\texttt{A()}'' is called
|
763 |
|
|
for the first time, is given by
|
764 |
|
|
|
765 |
|
|
\begin{equation}
|
766 |
|
|
\label{eq:lem:crat0:sfdv0:sprc0:01:01}
|
767 |
|
|
N_{STARTUP} =
|
768 |
|
|
\left\lceil
|
769 |
|
|
{
|
770 |
|
|
\frac{-K_1 - K_2 + K_3}{K_2}
|
771 |
|
|
}
|
772 |
|
|
\right\rceil .
|
773 |
|
|
\end{equation}
|
774 |
|
|
\end{vworklemmastatement}
|
775 |
|
|
\begin{vworklemmaproof}
|
776 |
|
|
The value of \texttt{state} after the $n$th invocation
|
777 |
|
|
is $state_n = K_1 + n K_2$. In order for the test in the
|
778 |
|
|
\texttt{if()} statement not to be met, we require that
|
779 |
|
|
|
780 |
|
|
\begin{equation}
|
781 |
|
|
\label{eq:lem:crat0:sfdv0:sprc0:01:02}
|
782 |
|
|
K_1 + n K_2 < K_3
|
783 |
|
|
\end{equation}
|
784 |
|
|
|
785 |
|
|
\noindent{}or equivalently that
|
786 |
|
|
|
787 |
|
|
\begin{equation}
|
788 |
|
|
\label{eq:lem:crat0:sfdv0:sprc0:01:03}
|
789 |
|
|
n < \frac{K_3 - K_1}{K_2} .
|
790 |
|
|
\end{equation}
|
791 |
|
|
|
792 |
|
|
Solving (\ref{eq:lem:crat0:sfdv0:sprc0:01:03}) for the largest
|
793 |
|
|
value of $n \in \vworkintset$ which still meets the criterion
|
794 |
|
|
yields (\ref{eq:lem:crat0:sfdv0:sprc0:01:01}). Note that
|
795 |
|
|
the derivation of (\ref{eq:lem:crat0:sfdv0:sprc0:01:01}) requires
|
796 |
|
|
that the restrictions on $K_1$ through $K_4$ documented in
|
797 |
|
|
Algorithm \ref{alg:crat0:sfdv0:01a} be met.
|
798 |
|
|
\end{vworklemmaproof}
|
799 |
|
|
\begin{vworklemmaparsection}{Remarks}
|
800 |
|
|
Note that if one chooses $K_1 > K_3 - K_2$ (in contradiction to the
|
801 |
|
|
restrictions in Algorithm \ref{alg:crat0:sfdv0:01a}), it is possible
|
802 |
|
|
to devise a counting scheme (and results analogous to this lemma) where
|
803 |
|
|
``\texttt{A()}'' is run a number of times before it is
|
804 |
|
|
\emph{not} run for the first time. The construction of an analogous
|
805 |
|
|
lemma is the topic of Exercise \ref{exe:crat0:sexe0:01}.
|
806 |
|
|
\end{vworklemmaparsection}
|
807 |
|
|
|
808 |
|
|
\begin{vworklemmastatement}
|
809 |
|
|
\label{lem:crat0:sfdv0:sprc0:02}
|
810 |
|
|
Let $N_I$ be the number of times the Algorithm
|
811 |
|
|
\ref{alg:crat0:sfdv0:01a} base subroutine
|
812 |
|
|
is called, let $N_O$ be the number of times the
|
813 |
|
|
``\texttt{A()}'' subroutine is called, let
|
814 |
|
|
$f_I$ be the frequency of invocation of the
|
815 |
|
|
Algorithm \ref{alg:crat0:sfdv0:01a} base subroutine, and let
|
816 |
|
|
$f_O$ be the frequency of invocation of
|
817 |
|
|
``\texttt{A()}''. Provided the constraints
|
818 |
|
|
on $K_1$ through $K_4$ documented in
|
819 |
|
|
Algorithm \ref{alg:crat0:sfdv0:01a} are met,
|
820 |
|
|
|
821 |
|
|
\begin{equation}
|
822 |
|
|
\label{eq:lem:crat0:sfdv0:sprc0:02:01}
|
823 |
|
|
\lim_{N_I\rightarrow\infty}\frac{N_O}{N_I}
|
824 |
|
|
=
|
825 |
|
|
\frac{f_O}{f_I}
|
826 |
|
|
=
|
827 |
|
|
\frac{K_2}{K_4} .
|
828 |
|
|
\end{equation}
|
829 |
|
|
\end{vworklemmastatement}
|
830 |
|
|
\begin{vworklemmaproof}
|
831 |
|
|
(\ref{eq:lem:crat0:sfdv0:sprc0:02:01}) indicates that once
|
832 |
|
|
the initial delay (determined by $K_1$ and $K_3$) has finished,
|
833 |
|
|
$N_O/N_I$ will converge on a steady-state value of
|
834 |
|
|
$K_2/K_4$.
|
835 |
|
|
|
836 |
|
|
Assume that $K_1=0$ and $K_3=K_4$. The
|
837 |
|
|
conditional subtraction then calculates
|
838 |
|
|
$state \bmod K_4$. After the $n$th
|
839 |
|
|
invocation of the base subroutine, the value
|
840 |
|
|
of \texttt{state} will be
|
841 |
|
|
|
842 |
|
|
\begin{equation}
|
843 |
|
|
\label{eq:lem:crat0:sfdv0:sprc0:02:02}
|
844 |
|
|
state_n|_{K_1=0, K_3=K_4} = n K_2 \bmod K_4 .
|
845 |
|
|
\end{equation}
|
846 |
|
|
|
847 |
|
|
Assume that for two distinct values of
|
848 |
|
|
$n \in \vworkintsetnonneg$, $n_1$ and $n_2$,
|
849 |
|
|
the value of the \texttt{state} variable is the same:
|
850 |
|
|
|
851 |
|
|
\begin{equation}
|
852 |
|
|
\label{eq:lem:crat0:sfdv0:sprc0:02:03}
|
853 |
|
|
n_1 K_2 \bmod K_4 = n_2 K_2 \bmod K_4.
|
854 |
|
|
\end{equation}
|
855 |
|
|
|
856 |
|
|
Then
|
857 |
|
|
|
858 |
|
|
\begin{equation}
|
859 |
|
|
\label{eq:lem:crat0:sfdv0:sprc0:02:04}
|
860 |
|
|
(n_2 - n_1) K_2 = i K_4, \; \exists i \in \vworkintsetpos .
|
861 |
|
|
\end{equation}
|
862 |
|
|
|
863 |
|
|
However, we have no knowledge of whether $K_2$ and $K_4$ are
|
864 |
|
|
coprime (they are not required to be). We may rewrite
|
865 |
|
|
(\ref{eq:lem:crat0:sfdv0:sprc0:02:04}) equivalently as
|
866 |
|
|
|
867 |
|
|
\begin{equation}
|
868 |
|
|
\label{eq:lem:crat0:sfdv0:sprc0:02:05}
|
869 |
|
|
(n_2 - n_1) \frac{K_2}{\gcd(K_2, K_4)} = i \frac{K_4}{\gcd(K_2, K_4)},
|
870 |
|
|
\; \exists i \in \vworkintsetpos
|
871 |
|
|
\end{equation}
|
872 |
|
|
|
873 |
|
|
where of course by definition
|
874 |
|
|
|
875 |
|
|
\begin{equation}
|
876 |
|
|
\label{eq:lem:crat0:sfdv0:sprc0:02:06}
|
877 |
|
|
\gcd \left( { \frac{K_2}{\gcd(K_2, K_4)}, \frac{K_4}{\gcd(K_2, K_4)} } \right) = 1.
|
878 |
|
|
\end{equation}
|
879 |
|
|
|
880 |
|
|
In order to satisfy (\ref{eq:lem:crat0:sfdv0:sprc0:02:05}),
|
881 |
|
|
$n_2 - n_1$ must contain all of the prime factors of
|
882 |
|
|
$K_4/\gcd(K_2,K_4)$ in at least the same multiplicities,
|
883 |
|
|
and it follows that the set of values
|
884 |
|
|
of $n_2-n_1$ that satisfies
|
885 |
|
|
(\ref{eq:lem:crat0:sfdv0:sprc0:02:03}) is
|
886 |
|
|
precisely the set of multiples of $K_4/\gcd(K_2,K_4)$:
|
887 |
|
|
|
888 |
|
|
\begin{equation}
|
889 |
|
|
\label{eq:lem:crat0:sfdv0:sprc0:02:07}
|
890 |
|
|
n_2 - n_1 = j \frac{K_4}{\gcd(K_2, K_4)}, \; \exists j \in \vworkintsetpos .
|
891 |
|
|
\end{equation}
|
892 |
|
|
|
893 |
|
|
Examining (\ref{eq:lem:crat0:sfdv0:sprc0:02:02}), it can
|
894 |
|
|
also be seen that
|
895 |
|
|
|
896 |
|
|
\begin{equation}
|
897 |
|
|
\label{eq:lem:crat0:sfdv0:sprc0:02:08}
|
898 |
|
|
\gcd(K_2, K_4) \vworkdivides (n K_2 \bmod K_4),
|
899 |
|
|
\end{equation}
|
900 |
|
|
|
901 |
|
|
and so
|
902 |
|
|
|
903 |
|
|
\begin{eqnarray}
|
904 |
|
|
\label{eq:lem:crat0:sfdv0:sprc0:02:09}
|
905 |
|
|
& n K_2 \bmod K_4 \in & \\
|
906 |
|
|
\nonumber
|
907 |
|
|
& \{ 0, \gcd(K_2, K_4), 2 \gcd(K_2, K_4), \ldots , K_4 - \gcd(K_2, K_4) \} , &
|
908 |
|
|
\end{eqnarray}
|
909 |
|
|
|
910 |
|
|
a set which contains exactly $K_4/\gcd(K_2, K_4)$ elements.
|
911 |
|
|
|
912 |
|
|
Thus we've established by the pigeonhole principle
|
913 |
|
|
that the sequence of the
|
914 |
|
|
values of the variable \texttt{state}
|
915 |
|
|
specified by (\ref{eq:lem:crat0:sfdv0:sprc0:02:02})
|
916 |
|
|
repeats perfectly with periodicity $K_4/\gcd(K_2, K_4)$,
|
917 |
|
|
and we've established that in one period, every element of the set
|
918 |
|
|
specified in (\ref{eq:lem:crat0:sfdv0:sprc0:02:09}) appears exactly
|
919 |
|
|
once. (However, we have not specified the order in which the
|
920 |
|
|
elements appear, but this is not important for this lemma. In general
|
921 |
|
|
the elements appear out of the order shown in
|
922 |
|
|
Eq. \ref{eq:lem:crat0:sfdv0:sprc0:02:09}.)
|
923 |
|
|
|
924 |
|
|
To establish the frequency with which the test against
|
925 |
|
|
$K_4$ is met, note that if $state_n + K_2 \geq K_4$, then
|
926 |
|
|
|
927 |
|
|
\begin{eqnarray}
|
928 |
|
|
\label{eq:lem:crat0:sfdv0:sprc0:02:10}
|
929 |
|
|
& \displaystyle{state_n \in \left\{ \frac{K_4-K_2}{\gcd(K_2,K_4)} \gcd(K_2, K_4), \right.} & \\
|
930 |
|
|
\nonumber & \displaystyle{\left. \left(\frac{K_4-K_2}{\gcd(K_2,K_4)} + 1 \right) \gcd(K_2, K_4), \ldots ,
|
931 |
|
|
K_4 - \gcd(K_2, K_4)\right\} ,} &
|
932 |
|
|
\end{eqnarray}
|
933 |
|
|
|
934 |
|
|
which has a cardinality $K_2/K_4$ that of the set in
|
935 |
|
|
(\ref{eq:lem:crat0:sfdv0:sprc0:02:09}). Since the
|
936 |
|
|
\texttt{state} variable cycles through the set in
|
937 |
|
|
(\ref{eq:lem:crat0:sfdv0:sprc0:02:09}) with perfect periodicity and since
|
938 |
|
|
$K_2/K_4$ of the set elements lead to the \texttt{if()} statement
|
939 |
|
|
test being
|
940 |
|
|
met, (\ref{eq:lem:crat0:sfdv0:sprc0:02:01}) is also met as
|
941 |
|
|
$N_I\rightarrow\infty$.
|
942 |
|
|
|
943 |
|
|
Note that if $K_1 \neq 0$, it simply changes the startup
|
944 |
|
|
behavior of the rational counting. So long as $K_2 < K_4$,
|
945 |
|
|
Algorithm \ref{alg:crat0:sfdv0:01a} will reach a steady state where
|
946 |
|
|
(\ref{eq:lem:crat0:sfdv0:sprc0:02:01}) holds.
|
947 |
|
|
Note that if $K_3 \neq K_4$, it simply ``shifts'' the sets
|
948 |
|
|
specified in (\ref{eq:lem:crat0:sfdv0:sprc0:02:09})
|
949 |
|
|
and (\ref{eq:lem:crat0:sfdv0:sprc0:02:10}), but
|
950 |
|
|
(\ref{eq:lem:crat0:sfdv0:sprc0:02:01}) still holds.
|
951 |
|
|
The lemma has thus been proved
|
952 |
|
|
for every case. (We have neglected to give
|
953 |
|
|
the formal proof as required by the definition of a limit that
|
954 |
|
|
for any arbitrarily small error $\epsilon$, a
|
955 |
|
|
finite $N_I$ can be found so that
|
956 |
|
|
the error is at or below $\epsilon$; however the skeptical reader
|
957 |
|
|
is encouraged to complete Exercise \ref{exe:crat0:sexe0:02}.)
|
958 |
|
|
\end{vworklemmaproof}
|
959 |
|
|
\begin{vworklemmaparsection}{Remarks}
|
960 |
|
|
It is possible to view the long-term accuracy of
|
961 |
|
|
Algorithm \ref{alg:crat0:sfdv0:01a} in terms of a limit, as is done in
|
962 |
|
|
(\ref{eq:lem:crat0:sfdv0:sprc0:02:01}). However, it is also
|
963 |
|
|
possible to observe that $K_1$ and $K_3$ set a delay until
|
964 |
|
|
the counting algorithm reaches steady state.
|
965 |
|
|
With $K_3=K_4$, the attainment of
|
966 |
|
|
steady state is characterized by the \texttt{state} variable
|
967 |
|
|
being assigned for the first time to one of the values in
|
968 |
|
|
(\ref{eq:lem:crat0:sfdv0:sprc0:02:09}). Once in steady state,
|
969 |
|
|
the algorithm cycles with perfect periodic behavior through all of the
|
970 |
|
|
$K_4/\gcd(K_2,K_4)$ elements in
|
971 |
|
|
(\ref{eq:lem:crat0:sfdv0:sprc0:02:09}), but not necessarily in
|
972 |
|
|
the order shown in the equation.
|
973 |
|
|
During this period of length $K_4/\gcd(K_2,K_4)$,
|
974 |
|
|
exactly $K_2/\gcd(K_2,K_4)$ invocations of the base
|
975 |
|
|
subroutine result in
|
976 |
|
|
subroutine ``\texttt{A()}'' being run, and exactly
|
977 |
|
|
$(K_4-K_2)/\gcd(K_2,K_4)$ do not. Thus, after reaching steady-state the
|
978 |
|
|
algorithm has \emph{perfect} accuracy if one considers periods of
|
979 |
|
|
length $K_4/\gcd(K_2,K_4)$.
|
980 |
|
|
\end{vworklemmaparsection}
|
981 |
|
|
%\vworklemmafooter{}
|
982 |
|
|
|
983 |
|
|
\begin{vworklemmastatement}
|
984 |
|
|
\label{lem:crat0:sfdv0:sprc0:04}
|
985 |
|
|
If $K_3=K_4$, $K_1=0$, and
|
986 |
|
|
$\gcd(K_2, K_4)=1$\footnote{\label{footnote:lem:crat0:sfdv0:sprc0:04:01}If
|
987 |
|
|
$\gcd(K_2, K_4) > 1$, then by Theorem
|
988 |
|
|
\cprizeroxrefhyphen\ref{thm:cpri0:ppn0:00a} the largest
|
989 |
|
|
value that $n K_2 \bmod K_4$ can attain is
|
990 |
|
|
$K_4-\gcd(K_2, K_4)$ and the interval in
|
991 |
|
|
(\ref{eq:lem:crat0:sfdv0:sprc0:04:01}) is correspondingly
|
992 |
|
|
smaller. (\ref{eq:lem:crat0:sfdv0:sprc0:04:01}) is
|
993 |
|
|
technically correct but not as conservative as possible.
|
994 |
|
|
This is a minor point and we do not dwell on it.}, the error between
|
995 |
|
|
the approximation to $N_O$ implemented by
|
996 |
|
|
Algorithm \ref{alg:crat0:sfdv0:01a} and the ``ideal'' mapping is always
|
997 |
|
|
in the set
|
998 |
|
|
|
999 |
|
|
\begin{equation}
|
1000 |
|
|
\label{eq:lem:crat0:sfdv0:sprc0:04:01}
|
1001 |
|
|
\left[ - \frac{K_4 - 1}{K_4} , 0 \right] ,
|
1002 |
|
|
\end{equation}
|
1003 |
|
|
|
1004 |
|
|
and no algorithm can be constructed to
|
1005 |
|
|
confine the error to a smaller interval.
|
1006 |
|
|
\end{vworklemmastatement}
|
1007 |
|
|
\begin{vworklemmaproof}
|
1008 |
|
|
With $K_1=0$ and $K_3 = K_4$, it can be verified analytically that
|
1009 |
|
|
the total number of times the function ``\texttt{A()}'' has been
|
1010 |
|
|
invoked up to and including the $n$th invocation of the base subroutine
|
1011 |
|
|
is
|
1012 |
|
|
|
1013 |
|
|
\begin{equation}
|
1014 |
|
|
\label{eq:lem:crat0:sfdv0:sprc0:04:02}
|
1015 |
|
|
N_O = \left\lfloor \frac{n K_2}{K_4} \right\rfloor .
|
1016 |
|
|
\end{equation}
|
1017 |
|
|
|
1018 |
|
|
On the other hand, the ``ideal'' number of invocations, which
|
1019 |
|
|
we denote $\overline{N_O}$, is given by
|
1020 |
|
|
|
1021 |
|
|
\begin{equation}
|
1022 |
|
|
\label{eq:lem:crat0:sfdv0:sprc0:04:03}
|
1023 |
|
|
\overline{N_O} = \frac{n K_2}{K_4} .
|
1024 |
|
|
\end{equation}
|
1025 |
|
|
|
1026 |
|
|
Quantization of the rational number in (\ref{eq:lem:crat0:sfdv0:sprc0:04:02})
|
1027 |
|
|
can introduce an error of up to $-(K_4-1)/K_4$, therefore
|
1028 |
|
|
|
1029 |
|
|
\begin{equation}
|
1030 |
|
|
\label{eq:lem:crat0:sfdv0:sprc0:04:04}
|
1031 |
|
|
N_O - \overline{N_O} =
|
1032 |
|
|
\left\lfloor \frac{n K_2}{K_4} \right\rfloor - \frac{n K_2}{K_4}
|
1033 |
|
|
\in \left[ - \frac{K_4 - 1}{K_4} , 0 \right] .
|
1034 |
|
|
\end{equation}
|
1035 |
|
|
|
1036 |
|
|
This proves the error bound for Algorithm \ref{alg:crat0:sfdv0:01a}.
|
1037 |
|
|
The proof that there can be no better algorithm is the topic
|
1038 |
|
|
of Exercise \ref{exe:crat0:sexe0:06}.
|
1039 |
|
|
\end{vworklemmaproof}
|
1040 |
|
|
\begin{vworklemmaparsection}{Remarks}
|
1041 |
|
|
Algorithm \ref{alg:crat0:sfdv0:01a} is \emph{optimal} in the
|
1042 |
|
|
sense that no algorithm can achieve a tighter error
|
1043 |
|
|
bound than (\ref{eq:lem:crat0:sfdv0:sprc0:04:01}). As
|
1044 |
|
|
demonstrated in Exercises \ref{exe:crat0:sexe0:04}
|
1045 |
|
|
and \ref{exe:crat0:sexe0:05}, $K_1 \neq 0$ can be chosen
|
1046 |
|
|
to shift the interval in (\ref{eq:lem:crat0:sfdv0:sprc0:04:01}), but
|
1047 |
|
|
the span of the interval cannot be reduced.
|
1048 |
|
|
\end{vworklemmaparsection}
|
1049 |
|
|
\vworklemmafooter{}
|
1050 |
|
|
|
1051 |
|
|
Lemmas \ref{lem:crat0:sfdv0:sprc0:02}
|
1052 |
|
|
and \ref{lem:crat0:sfdv0:sprc0:04} have demonstrated that the ratio of
|
1053 |
|
|
counts $N_O/N_I$ will asymptotically
|
1054 |
|
|
approach $K_2/K_4$
|
1055 |
|
|
(i.e. the long-term accuracy of Algorithm \ref{alg:crat0:sfdv0:01a}
|
1056 |
|
|
is \emph{perfect}).
|
1057 |
|
|
However,
|
1058 |
|
|
for many applications it is also desirable to have a lack of
|
1059 |
|
|
``bursty'' behavior. We demonstrate the lack of bursty
|
1060 |
|
|
behavior in the following lemma.
|
1061 |
|
|
|
1062 |
|
|
\begin{vworklemmastatement}
|
1063 |
|
|
\label{lem:crat0:sfdv0:sprc0:03}
|
1064 |
|
|
For Algorithm \ref{alg:crat0:sfdv0:01a}, once steady
|
1065 |
|
|
state has been achieved, the number of consecutive
|
1066 |
|
|
base subroutine invocations during which subroutine
|
1067 |
|
|
``\texttt{A()}'' is executed is always in the set
|
1068 |
|
|
|
1069 |
|
|
\begin{equation}
|
1070 |
|
|
\label{eq:lem:crat0:sfdv0:sprc0:03:01}
|
1071 |
|
|
\left\{
|
1072 |
|
|
\left\lfloor \frac{K_2}{K_4 - K_2} \right\rfloor ,
|
1073 |
|
|
\left\lceil \frac{K_2}{K_4 - K_2} \right\rceil
|
1074 |
|
|
\right\} \cap \vworkintsetpos,
|
1075 |
|
|
\end{equation}
|
1076 |
|
|
|
1077 |
|
|
which contains one integer if $K_2/K_4 \leq 1/2$ or $(K_4-K_2) \vworkdivides K_2$,
|
1078 |
|
|
or two integers otherwise.
|
1079 |
|
|
|
1080 |
|
|
Once steady state has been achieved, the number of
|
1081 |
|
|
consecutive base function invocations during which
|
1082 |
|
|
subroutine ``\texttt{A()}'' is not executed is
|
1083 |
|
|
always in the set
|
1084 |
|
|
|
1085 |
|
|
\begin{equation}
|
1086 |
|
|
\label{eq:lem:crat0:sfdv0:sprc0:03:02}
|
1087 |
|
|
\left\{
|
1088 |
|
|
\left\lfloor \frac{K_4-K_2}{K_2} \right\rfloor ,
|
1089 |
|
|
\left\lceil \frac{K_4-K_2}{K_2} \right\rceil
|
1090 |
|
|
\right\} \cap \vworkintsetpos,
|
1091 |
|
|
\end{equation}
|
1092 |
|
|
|
1093 |
|
|
which contains one integer if $K_2/K_4 \geq 1/2$ or $K_2 \vworkdivides K_4$,
|
1094 |
|
|
or two integers otherwise.
|
1095 |
|
|
\end{vworklemmastatement}
|
1096 |
|
|
\begin{vworklemmaproof}
|
1097 |
|
|
As before in Lemma \ref{lem:crat0:sfdv0:sprc0:02}
|
1098 |
|
|
for convenience and without
|
1099 |
|
|
loss of generality, assume $K_3=K_4$ and
|
1100 |
|
|
$K_1=0$. Then after a transient period
|
1101 |
|
|
determined by $K_1$ and $K_3$, the \texttt{state}
|
1102 |
|
|
variable will be assigned one of the values in
|
1103 |
|
|
(\ref{eq:lem:crat0:sfdv0:sprc0:02:09}) and cycle through
|
1104 |
|
|
those values in an unestablished order but with perfect
|
1105 |
|
|
periodicity. To accomplish this proof, we must establish
|
1106 |
|
|
something about the order in which the \texttt{state} variable attains
|
1107 |
|
|
the values in the set in (\ref{eq:lem:crat0:sfdv0:sprc0:02:09}).
|
1108 |
|
|
|
1109 |
|
|
We can partition the set in (\ref{eq:lem:crat0:sfdv0:sprc0:02:09})
|
1110 |
|
|
into two sets; the set of values of \texttt{state} for which if the
|
1111 |
|
|
base subroutine is invoked with \texttt{state} in this set, subroutine
|
1112 |
|
|
``\texttt{A()}'' will not be invoked (we call this set $\phi_1$),
|
1113 |
|
|
and the set of values of \texttt{state} for which if the
|
1114 |
|
|
base subroutine is invoked with \texttt{state} in this set, subroutine
|
1115 |
|
|
``\texttt{A()}'' will be invoked (we call this set $\phi_2$).
|
1116 |
|
|
$\phi_1$ and $\phi_2$ are identified below.
|
1117 |
|
|
|
1118 |
|
|
\begin{eqnarray}
|
1119 |
|
|
\label{eq:lem:crat0:sfdv0:sprc0:03:03}
|
1120 |
|
|
& \phi_1 = & \\
|
1121 |
|
|
\nonumber &
|
1122 |
|
|
\displaystyle{\left\{
|
1123 |
|
|
0, \gcd(K_2, K_4), 2 \gcd(K_2, K_4), \ldots ,
|
1124 |
|
|
\left(\frac{K_4-K_2}{\gcd(K_2,K_4)} - 1 \right) \gcd(K_2, K_4)
|
1125 |
|
|
\right\}} &
|
1126 |
|
|
\end{eqnarray}
|
1127 |
|
|
|
1128 |
|
|
\begin{eqnarray}
|
1129 |
|
|
\label{eq:lem:crat0:sfdv0:sprc0:03:04}
|
1130 |
|
|
& \displaystyle{
|
1131 |
|
|
\phi_2 = \left\{\left(\frac{K_4-K_2}{\gcd(K_2,K_4)}\right) \gcd(K_2, K_4),\right.} & \\
|
1132 |
|
|
\nonumber & \displaystyle{\left.
|
1133 |
|
|
\left(\frac{K_4-K_2}{\gcd(K_2,K_4)} + 1 \right) \gcd(K_2, K_4) ,
|
1134 |
|
|
\ldots ,
|
1135 |
|
|
K_4 - \gcd(K_2, K_4)
|
1136 |
|
|
\right\}} &
|
1137 |
|
|
\end{eqnarray}
|
1138 |
|
|
|
1139 |
|
|
We can also make the following four additional useful observations
|
1140 |
|
|
about $\phi_1$ and $\phi_2$. Note that
|
1141 |
|
|
(\ref{eq:lem:crat0:sfdv0:sprc0:03:07}) and
|
1142 |
|
|
(\ref{eq:lem:crat0:sfdv0:sprc0:03:08}) become equality
|
1143 |
|
|
if $\gcd(K_2, K_4) = 1$.
|
1144 |
|
|
|
1145 |
|
|
\begin{equation}
|
1146 |
|
|
\label{eq:lem:crat0:sfdv0:sprc0:03:05}
|
1147 |
|
|
n(\phi_1) = \frac{K_4 - K_2}{\gcd(K_2, K_4)}
|
1148 |
|
|
\end{equation}
|
1149 |
|
|
|
1150 |
|
|
\begin{equation}
|
1151 |
|
|
\label{eq:lem:crat0:sfdv0:sprc0:03:06}
|
1152 |
|
|
n(\phi_2) = \frac{K_2}{\gcd(K_2, K_4)}
|
1153 |
|
|
\end{equation}
|
1154 |
|
|
|
1155 |
|
|
\begin{equation}
|
1156 |
|
|
\label{eq:lem:crat0:sfdv0:sprc0:03:07}
|
1157 |
|
|
\phi_1 \subseteq \{ 0, 1, \ldots , K_4 - K_2 - 1 \}
|
1158 |
|
|
\end{equation}
|
1159 |
|
|
|
1160 |
|
|
\begin{equation}
|
1161 |
|
|
\label{eq:lem:crat0:sfdv0:sprc0:03:08}
|
1162 |
|
|
\phi_2 \subseteq \{K_4 - K_2, \ldots , K_4 - 1 \}
|
1163 |
|
|
\end{equation}
|
1164 |
|
|
|
1165 |
|
|
We first prove (\ref{eq:lem:crat0:sfdv0:sprc0:03:01}).
|
1166 |
|
|
If $state_n \in \phi_2$ at the time the base function
|
1167 |
|
|
is invoked, then
|
1168 |
|
|
``\texttt{A()}'' will be invoked. We also know that
|
1169 |
|
|
since $state_n \in \phi_2$, $state_n + K_2 \geq K_4$, so
|
1170 |
|
|
|
1171 |
|
|
\begin{equation}
|
1172 |
|
|
\label{eq:lem:crat0:sfdv0:sprc0:03:09}
|
1173 |
|
|
state_{n+1} \;\; =|_{state_n \in \phi_2} \;\; state_n - (K_4 - K_2) .
|
1174 |
|
|
\end{equation}
|
1175 |
|
|
|
1176 |
|
|
Thus so long as $state_n \in \phi_2$, $state_{n+1} < state_n$
|
1177 |
|
|
as specified above in (\ref{eq:lem:crat0:sfdv0:sprc0:03:09}).
|
1178 |
|
|
With each invocation of the base subroutine, \texttt{state} will
|
1179 |
|
|
``walk downward'' through $\phi_2$. It can
|
1180 |
|
|
also be observed that when \texttt{state} drops below the smallest
|
1181 |
|
|
element of $\phi_2$, the next value of \texttt{state} will
|
1182 |
|
|
be in $\phi_1$.
|
1183 |
|
|
|
1184 |
|
|
Note also that although the downward walk specified in
|
1185 |
|
|
(\ref{eq:lem:crat0:sfdv0:sprc0:03:09}) walks downward in absolute steps
|
1186 |
|
|
of $K_4-K_2$, this corresponds to $(K_4-K_2) / \gcd(K_2, K_4)$
|
1187 |
|
|
\emph{elements} of $\phi_2$, since the elements of $\phi_2$ are
|
1188 |
|
|
separated by $\gcd(K_2, K_4)$.
|
1189 |
|
|
|
1190 |
|
|
Given the ``downward walk'' specified in (\ref{eq:lem:crat0:sfdv0:sprc0:03:09}),
|
1191 |
|
|
the only question to be answered is how many consecutive values of
|
1192 |
|
|
\texttt{state}, separated by $K_4-K_2$ (or $(K_4-K_2)/\gcd(K_2, K_4)$ elements),
|
1193 |
|
|
can ``fit'' into
|
1194 |
|
|
$\phi_2$. Considering that $n(\phi_2) = K_2/\gcd(K_2, K_4)$
|
1195 |
|
|
(Eq. \ref{eq:lem:crat0:sfdv0:sprc0:03:06}) and that the
|
1196 |
|
|
downward step represents $(K_4-K_2)/\gcd(K_2, K_4)$ set elements,
|
1197 |
|
|
(\ref{eq:lem:crat0:sfdv0:sprc0:03:01}) comes immediately by
|
1198 |
|
|
a graphical argument.
|
1199 |
|
|
|
1200 |
|
|
We now prove (\ref{eq:lem:crat0:sfdv0:sprc0:03:02}).
|
1201 |
|
|
This can be proved using exactly the same arguments
|
1202 |
|
|
as for (\ref{eq:lem:crat0:sfdv0:sprc0:03:01}), but
|
1203 |
|
|
considering the upward walk through $\phi_1$ rather
|
1204 |
|
|
than the downward walk through $\phi_2$.
|
1205 |
|
|
|
1206 |
|
|
As with Lemma \ref{lem:crat0:sfdv0:sprc0:02},
|
1207 |
|
|
note that the choices of $K_1$ and $K_3$ do not
|
1208 |
|
|
materially affect the proof above. $K_1$ and
|
1209 |
|
|
$K_3$ only set a delay until the rational counting
|
1210 |
|
|
algorithm reaches steady state. $K_3$ only shifts
|
1211 |
|
|
the sets $\phi_1$ and $\phi_2$.
|
1212 |
|
|
\end{vworklemmaproof}
|
1213 |
|
|
\begin{vworklemmaparsection}{Remark \#1}
|
1214 |
|
|
This lemma proves an \emph{extremely} important property for the
|
1215 |
|
|
usability of Algorithm \ref{alg:crat0:sfdv0:01a}. It says that once
|
1216 |
|
|
steady state has been reached, the variability in the number of consecutive
|
1217 |
|
|
times ``\texttt{A()}'' is run or not run is at most one count.
|
1218 |
|
|
\end{vworklemmaparsection}
|
1219 |
|
|
\begin{vworklemmaparsection}{Remark \#2}
|
1220 |
|
|
It is probably also possible to construct a rational counting algorithm
|
1221 |
|
|
so that the number of consecutive times ``\texttt{A()}'' is run is constant,
|
1222 |
|
|
but the algorithm achieves long-term accuracy by varying only the number
|
1223 |
|
|
of consecutive times ``\texttt{A()}'' is not run (or vice-versa), but this
|
1224 |
|
|
is not done here.
|
1225 |
|
|
\end{vworklemmaparsection}
|
1226 |
|
|
\begin{vworklemmaparsection}{Remark \#3}
|
1227 |
|
|
There is no requirement that $K_2$ and $K_4$ be coprime. In fact, as
|
1228 |
|
|
demonstrated later, it may be advantageous to choose a large $K_2$ and
|
1229 |
|
|
$K_4$ to approximate a simple ratio so that very fine adjustments can be
|
1230 |
|
|
made. For example, if the ideal ratio is 1/2, it may be desirable
|
1231 |
|
|
in some applications to
|
1232 |
|
|
choose $K_2$=1,000 and $K_4$=2,000 so that fine adjustments can be made
|
1233 |
|
|
by slightly perturbing $K_2$ or $K_4$. One might adjust 1,000/2,000 downward
|
1234 |
|
|
to 999/2,000 or upward to 1,001/2,000 by modifying $K_2$
|
1235 |
|
|
(both very fine adjustments).
|
1236 |
|
|
\end{vworklemmaparsection}
|
1237 |
|
|
\begin{vworklemmaparsection}{Remark \#4}
|
1238 |
|
|
The most common choice of $K_1$ in practice is 0. If $K_1=0$ is chosen,
|
1239 |
|
|
it can be shown that the number of initial invocations of the
|
1240 |
|
|
base subroutine is in the set identified in
|
1241 |
|
|
(\ref{eq:lem:crat0:sfdv0:sprc0:03:01}).
|
1242 |
|
|
(See Exercise \ref{exe:crat0:sexe0:07}.)
|
1243 |
|
|
\end{vworklemmaparsection}
|
1244 |
|
|
\vworklemmafooter{}
|
1245 |
|
|
|
1246 |
|
|
For microcontroller work, it is considered
|
1247 |
|
|
a desirable property that software components be resilient
|
1248 |
|
|
to state upset
|
1249 |
|
|
(see Section \chgrzeroxrefhyphen\ref{chgr0:sdda0:srob0}).
|
1250 |
|
|
It can be observed that Algorithm \ref{alg:crat0:sfdv0:01a} will
|
1251 |
|
|
exhibit very anomalous behavior if \texttt{state} is upset to a very negative
|
1252 |
|
|
value. One possible correction to this shortcoming is illustrated
|
1253 |
|
|
in Figure \ref{fig:crat0:sfdv0:sprc0:01}. Other possible
|
1254 |
|
|
corrections are the topic of Exercise \ref{exe:crat0:sexe0:08}.
|
1255 |
|
|
|
1256 |
|
|
\begin{figure}
|
1257 |
|
|
\begin{verbatim}
|
1258 |
|
|
/* The constants K1 through K4, which parameterize the */
|
1259 |
|
|
/* counting behavior, are assumed assigned elsewhere in */
|
1260 |
|
|
/* the code. The solution is analyzed in terms of the */
|
1261 |
|
|
/* parameters K1 through K4. */
|
1262 |
|
|
/* */
|
1263 |
|
|
/* We also place the following restrictions on K1 through */
|
1264 |
|
|
/* K4: */
|
1265 |
|
|
/* K1 : K1 <= K3 - K2. */
|
1266 |
|
|
/* K2 : K4 > K2 > 0. */
|
1267 |
|
|
/* K3 : No restrictions. */
|
1268 |
|
|
/* K4 : K4 > K2 > 0. */
|
1269 |
|
|
|
1270 |
|
|
void base_rate_func(void)
|
1271 |
|
|
{
|
1272 |
|
|
static int state = K1;
|
1273 |
|
|
|
1274 |
|
|
state += K2;
|
1275 |
|
|
|
1276 |
|
|
if ((state < K1) || (state >= K3))
|
1277 |
|
|
{
|
1278 |
|
|
state -= K4;
|
1279 |
|
|
A();
|
1280 |
|
|
}
|
1281 |
|
|
}
|
1282 |
|
|
\end{verbatim}
|
1283 |
|
|
\caption{Algorithm \ref{alg:crat0:sfdv0:01a} With State Upset Shortcoming
|
1284 |
|
|
Corrected}
|
1285 |
|
|
\label{fig:crat0:sfdv0:sprc0:01}
|
1286 |
|
|
\end{figure}
|
1287 |
|
|
|
1288 |
|
|
\begin{vworkexamplestatement}
|
1289 |
|
|
\label{ex:crat0:sfdv0:sprc0:01}
|
1290 |
|
|
Determine the behavior of Algorithm \ref{alg:crat0:sfdv0:01a} with
|
1291 |
|
|
$K_1=0$, $K_2=30$, and $K_3=K_4=50$.
|
1292 |
|
|
\end{vworkexamplestatement}
|
1293 |
|
|
\begin{vworkexampleparsection}{Solution}
|
1294 |
|
|
We first predict the behavior, and then trace the algorithm to
|
1295 |
|
|
verify whether the predictions are accurate.
|
1296 |
|
|
|
1297 |
|
|
We make the following predictions:
|
1298 |
|
|
|
1299 |
|
|
\begin{itemize}
|
1300 |
|
|
\item The steady state sequence of invocations of ``\texttt{A()}'' will
|
1301 |
|
|
be periodic with period
|
1302 |
|
|
$K_4/\gcd(K_2, K_4) = 50/10 = 5$, as described
|
1303 |
|
|
in Lemma \ref{lem:crat0:sfdv0:sprc0:02}.
|
1304 |
|
|
\item The number of initial invocations of the
|
1305 |
|
|
base subroutine in which ``\texttt{A()}''
|
1306 |
|
|
is not run will be
|
1307 |
|
|
$\lceil (K_4 - K_2) / K_2 \rceil = \lceil 2/3 \rceil = 1$,
|
1308 |
|
|
as described in Remark \#4 of
|
1309 |
|
|
Lemma \ref{lem:crat0:sfdv0:sprc0:03} and in the solution to
|
1310 |
|
|
Exercise \ref{exe:crat0:sexe0:07}.
|
1311 |
|
|
\item In steady state, the number of consecutive invocations of the
|
1312 |
|
|
base subroutine during which ``\texttt{A()}''
|
1313 |
|
|
is not executed will always be 1, as
|
1314 |
|
|
described in Equation \ref{eq:lem:crat0:sfdv0:sprc0:03:02} of
|
1315 |
|
|
Lemma \ref{lem:crat0:sfdv0:sprc0:03}.
|
1316 |
|
|
(Applying Eq. \ref{eq:lem:crat0:sfdv0:sprc0:03:02}
|
1317 |
|
|
yields \
|
1318 |
|
|
$\{ \lfloor 20/30 \rfloor , \lceil 20/30 \rceil \} \cap \vworkintsetpos %
|
1319 |
|
|
= \{ 0,1 \} \cap \{1, 2, \ldots \} = \{ 1 \}$.)
|
1320 |
|
|
\item In steady state, the number of consecutive invocations of the
|
1321 |
|
|
base subroutine during which ``\texttt{A()}''
|
1322 |
|
|
is executed will always be 1 or 2, as
|
1323 |
|
|
described in Equation \ref{eq:lem:crat0:sfdv0:sprc0:03:01} of
|
1324 |
|
|
Lemma \ref{lem:crat0:sfdv0:sprc0:03}.
|
1325 |
|
|
(Applying Eq. \ref{eq:lem:crat0:sfdv0:sprc0:03:01}
|
1326 |
|
|
yields \
|
1327 |
|
|
$\{ \lfloor 30/20 \rfloor , \lceil 30/20 \rceil \} \cap \vworkintsetpos %
|
1328 |
|
|
= \{ 1,2 \} \cap \{1, 2, \ldots \} = \{ 1,2 \}$.)
|
1329 |
|
|
\item The rational counting algorithm will have
|
1330 |
|
|
perfect long-term accuracy.
|
1331 |
|
|
\end{itemize}
|
1332 |
|
|
|
1333 |
|
|
We can verify the predictions above by tracing the behavior of
|
1334 |
|
|
Algorithm \ref{alg:crat0:sfdv0:01a}. We adopt the convention
|
1335 |
|
|
that $A_n = 1$ if subroutine ``\texttt{A()}'' is invoked during
|
1336 |
|
|
the $n$th invocation of the base subroutine.
|
1337 |
|
|
Table \ref{tbl:crat0:sfdv0:sprc0:01}
|
1338 |
|
|
contains the results of tracing Algorithm \ref{alg:crat0:sfdv0:01a}
|
1339 |
|
|
with $K_1=0$, $K_2=30$, and $K_3=K_4=50$.
|
1340 |
|
|
|
1341 |
|
|
\begin{table}
|
1342 |
|
|
\caption{Trace Of Algorithm \ref{alg:crat0:sfdv0:01a} With
|
1343 |
|
|
$K_1=0$, $K_2=30$, And $K_3=K_4=50$ (Example \ref{ex:crat0:sfdv0:sprc0:01})}
|
1344 |
|
|
\label{tbl:crat0:sfdv0:sprc0:01}
|
1345 |
|
|
\begin{center}
|
1346 |
|
|
\begin{tabular}{|c|c|c|}
|
1347 |
|
|
\hline
|
1348 |
|
|
Index ($n$) & $state_n$ & $A_n$ \\
|
1349 |
|
|
\hline
|
1350 |
|
|
\hline
|
1351 |
|
|
0 & 0 & N/A \\
|
1352 |
|
|
\hline
|
1353 |
|
|
1 & 30 & 0 \\
|
1354 |
|
|
\hline
|
1355 |
|
|
2 & 10 & 1 \\
|
1356 |
|
|
\hline
|
1357 |
|
|
3 & 40 & 0 \\
|
1358 |
|
|
\hline
|
1359 |
|
|
4 & 20 & 1 \\
|
1360 |
|
|
\hline
|
1361 |
|
|
5 & 0 & 1 \\
|
1362 |
|
|
\hline
|
1363 |
|
|
6 & 30 & 0 \\
|
1364 |
|
|
\hline
|
1365 |
|
|
7 & 10 & 1 \\
|
1366 |
|
|
\hline
|
1367 |
|
|
8 & 40 & 0 \\
|
1368 |
|
|
\hline
|
1369 |
|
|
9 & 20 & 1 \\
|
1370 |
|
|
\hline
|
1371 |
|
|
10 & 0 & 1 \\
|
1372 |
|
|
\hline
|
1373 |
|
|
\end{tabular}
|
1374 |
|
|
\end{center}
|
1375 |
|
|
\end{table}
|
1376 |
|
|
|
1377 |
|
|
It can be verfied from the table that all of the
|
1378 |
|
|
predicted properties are exhibited by the
|
1379 |
|
|
algorithm.
|
1380 |
|
|
\end{vworkexampleparsection}
|
1381 |
|
|
\vworkexamplefooter{}
|
1382 |
|
|
|
1383 |
|
|
A second characteristic of Algorithm \ref{alg:crat0:sfdv0:01a}
|
1384 |
|
|
that should be analyzed carefully is the behavior
|
1385 |
|
|
of the algorithm if parameters $K_2$ and $K_4$ are adjusted
|
1386 |
|
|
``on the fly''. ``On-the-fly'' adjustment
|
1387 |
|
|
raises the following concerns. We assume for convenience
|
1388 |
|
|
that $K_1=0$ and $K_3=K_4$.
|
1389 |
|
|
|
1390 |
|
|
\begin{enumerate}
|
1391 |
|
|
\item \label{enum:crat0:sfdv0:sprc0:01:01}
|
1392 |
|
|
\textbf{Critical section protocol:} if the
|
1393 |
|
|
rational counting algorithm is implemented in a process which
|
1394 |
|
|
is asynchronous to the process which desires to change
|
1395 |
|
|
$K_2$ and $K_4$, what precautions must be taken?
|
1396 |
|
|
\item \label{enum:crat0:sfdv0:sprc0:01:02}
|
1397 |
|
|
\textbf{Anomalous behavior:} will the rational
|
1398 |
|
|
counting algorithm behave in a \emph{very} unexpected way
|
1399 |
|
|
if $K_2$ and $K_4$ are changed on the fly?
|
1400 |
|
|
\item \label{enum:crat0:sfdv0:sprc0:01:03}
|
1401 |
|
|
\textbf{Preservation of accuracy:} even if the behavior
|
1402 |
|
|
exhibited is not \emph{extremely} anomalous, how should
|
1403 |
|
|
$K_2$ and $K_4$ be modified on the fly so as to preserve the
|
1404 |
|
|
maximum accuracy?
|
1405 |
|
|
\end{enumerate}
|
1406 |
|
|
|
1407 |
|
|
\textbf{(Concern \#\ref{enum:crat0:sfdv0:sprc0:01:02}):} It can be observed
|
1408 |
|
|
with Algorithm \ref{alg:crat0:sfdv0:01a} that neither increasing
|
1409 |
|
|
nor decreasing $K_2$ nor $K_4$ on the fly
|
1410 |
|
|
will lead to \emph{highly} anomalous
|
1411 |
|
|
behavior. Each invocation of the algorithm will map
|
1412 |
|
|
\texttt{state} back into the set identified in
|
1413 |
|
|
(\ref{eq:lem:crat0:sfdv0:sprc0:02:09}). Thus on-the-fly changes
|
1414 |
|
|
to $K_2$ and $K_4$ will establish the rational counting algorithm
|
1415 |
|
|
immediately into steady-state behavior, and the result will not be
|
1416 |
|
|
\emph{highly} anomalous if such on-the-fly changes are not
|
1417 |
|
|
made very often.
|
1418 |
|
|
|
1419 |
|
|
\textbf{(Concern \#\ref{enum:crat0:sfdv0:sprc0:01:03}):} It can be deduced
|
1420 |
|
|
from
|
1421 |
|
|
(\ref{eq:lem:crat0:sfdv0:sprc0:04:02}),
|
1422 |
|
|
(\ref{eq:lem:crat0:sfdv0:sprc0:04:03}), and
|
1423 |
|
|
(\ref{eq:lem:crat0:sfdv0:sprc0:04:04}) that the value of the
|
1424 |
|
|
\texttt{state} variable in Algorithm \ref{alg:crat0:sfdv0:01a}
|
1425 |
|
|
satisfies the relationship
|
1426 |
|
|
|
1427 |
|
|
\begin{equation}
|
1428 |
|
|
\label{eq:crat0:sfdv0:sprc0:01}
|
1429 |
|
|
\overline{N_O} - N_O = \frac{state}{K_4} ;
|
1430 |
|
|
\end{equation}
|
1431 |
|
|
|
1432 |
|
|
\noindent{}in other words, the \texttt{state} variable
|
1433 |
|
|
contains the remainder of an effective division by $K_4$
|
1434 |
|
|
and thus maintains the fractional part of $\overline{N_O}$.
|
1435 |
|
|
Altering $K_4$ on the fly to a new value
|
1436 |
|
|
(say, $\overline{K_4}$) may be problematic, because
|
1437 |
|
|
to preserve the current fractional part
|
1438 |
|
|
of $\overline{N_O}$, one must adjust it for
|
1439 |
|
|
the new denominator $\overline{K_4}$. This requires
|
1440 |
|
|
solving the equation
|
1441 |
|
|
|
1442 |
|
|
\begin{equation}
|
1443 |
|
|
\label{eq:crat0:sfdv0:sprc0:02}
|
1444 |
|
|
\frac{state}{K_4} = \frac{n}{\;\;\overline{K_4}\;\;}
|
1445 |
|
|
\end{equation}
|
1446 |
|
|
|
1447 |
|
|
\noindent{}for $n$ which must be an integer to avoid
|
1448 |
|
|
loss of information. In general,
|
1449 |
|
|
this would require that $K_4 \vworkdivides \overline{K_4}$,
|
1450 |
|
|
a constraint which would be rarely met. Thus, for high-precision
|
1451 |
|
|
applications where a new rational counting rate should become effective
|
1452 |
|
|
seamlessly, the best strategy would seem to be to modify $K_2$ only.
|
1453 |
|
|
It can be verified that modifying $K_2$ on the fly accomplishes
|
1454 |
|
|
a perfect rate transition.
|
1455 |
|
|
|
1456 |
|
|
\textbf{(Concern \#\ref{enum:crat0:sfdv0:sprc0:01:01}):} In microcontroller work,
|
1457 |
|
|
ordinal data types often represent machine-native data types. In such cases,
|
1458 |
|
|
it may be possible for one process to set $K_2$ or $K_4$
|
1459 |
|
|
for another process that is asynchronous with respect to it by relying
|
1460 |
|
|
on the atomicity of machine instructions (i.e. without formal mutual
|
1461 |
|
|
exclusion protocol). However, in other cases where the ordinal data types
|
1462 |
|
|
of $K_2$ or $K_4$ are larger than can be accomodated by
|
1463 |
|
|
a single machine instruction or where $K_2$ and $K_4$ must be modified
|
1464 |
|
|
together atomically, mutual exclusion protocol should be used to
|
1465 |
|
|
prevent anomalous behavior due to race conditions (see
|
1466 |
|
|
Exercise \ref{exe:crat0:sexe0:14}).
|
1467 |
|
|
|
1468 |
|
|
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
|
1469 |
|
|
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
|
1470 |
|
|
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
|
1471 |
|
|
\subsection[Properties Of Algorithm \ref{alg:crat0:sfdv0:01b}]
|
1472 |
|
|
{Properties Of Rational Counting Algorithm \ref{alg:crat0:sfdv0:01b}}
|
1473 |
|
|
%Section tag: PRC1
|
1474 |
|
|
\label{crat0:sfdv0:sprc1}
|
1475 |
|
|
|
1476 |
|
|
Algorithm \ref{alg:crat0:sfdv0:01a}
|
1477 |
|
|
has the disadvantage that it requires $K_2/K_4 < 1$ (i.e. it can only
|
1478 |
|
|
decrease frequency, but never increase frequency). This deficiency
|
1479 |
|
|
can be corrected by using
|
1480 |
|
|
Algorithm \ref{alg:crat0:sfdv0:01b}.
|
1481 |
|
|
|
1482 |
|
|
Note that Algorithm \ref{alg:crat0:sfdv0:01b} will properly deal with $K_2$ and
|
1483 |
|
|
$K_4$ chosen such that $0 < K_2/K_4 < \infty$.
|
1484 |
|
|
|
1485 |
|
|
The most common reason that one may want a counting algorithm
|
1486 |
|
|
that will correctly handle
|
1487 |
|
|
$K_2/K_4 \geq 1$ is to conveniently handle $K_2/K_4 \approx 1$.
|
1488 |
|
|
In practice, $K_2/K_4$ may represent a quantity that is
|
1489 |
|
|
normally very close to
|
1490 |
|
|
1 but may also be slightly less than or slightly greater than 1.
|
1491 |
|
|
For example, one may use $K_2/K_4 \approx 1$ to correct for a
|
1492 |
|
|
crystal or a resonator which deviates slightly from its nominal
|
1493 |
|
|
frequency. We illustrate this with the following example.
|
1494 |
|
|
|
1495 |
|
|
\begin{vworkexamplestatement}
|
1496 |
|
|
\label{ex:crat0:sfdv0:sprc1:01}
|
1497 |
|
|
A microcontroller software load keeps time via an interrupt
|
1498 |
|
|
service routine that runs every 1ms, but this frequency may be
|
1499 |
|
|
off by as much as 1 part in 10,000 due to variations in
|
1500 |
|
|
crystal or resonator manufacture. The interrupt service routine
|
1501 |
|
|
updates a counter which represents the number of milliseconds elapsed since
|
1502 |
|
|
the software load was reset. Devise a rational counting strategy
|
1503 |
|
|
based on Algorithm \ref{alg:crat0:sfdv0:01b}
|
1504 |
|
|
which will allow the time accuracy to be trimmed to within
|
1505 |
|
|
one second per year or less by adjusting only $K_4$, and implement the counting strategy
|
1506 |
|
|
in software.
|
1507 |
|
|
\end{vworkexamplestatement}
|
1508 |
|
|
\begin{vworkexampleparsection}{Solution}
|
1509 |
|
|
$K_2/K_4$ will be nominally very close to 1 ($K_2 \approx K_4$).
|
1510 |
|
|
If we assume that each year has 365.2422\footnote{The period of the earth's
|
1511 |
|
|
rotation about the sun is not an integral number of days, which is why the
|
1512 |
|
|
rules for leap years exist. Ironically, the assignment of leap years is itself
|
1513 |
|
|
a problem very similar to the rational counting problems discussed in this chapter.} days
|
1514 |
|
|
($\approx$ 31,556,926 seconds), then choosing
|
1515 |
|
|
$K_2 \approx K_4 = 31,556,926$ will yield satisfactory results.
|
1516 |
|
|
If we may need to compensate for up to 1 part in 10,000 of crystal or resonator
|
1517 |
|
|
inaccuracy, we may need to adjust $K_2$ as low as 0.9999 $\times$ 31,556,926 $\approx$
|
1518 |
|
|
31,553,770 (to compensate for a fast
|
1519 |
|
|
crystal or resonator) or as
|
1520 |
|
|
high as 1.0001 $\times$ 31,556,926
|
1521 |
|
|
$\approx$ 31,560,082
|
1522 |
|
|
(to compensate for a slow crystal or resonator). Choosing
|
1523 |
|
|
$K_4 = 31,556,926$ yields the convenient relationship that each
|
1524 |
|
|
count in $K_2$ corresponds to one second per year.
|
1525 |
|
|
|
1526 |
|
|
\begin{figure}
|
1527 |
|
|
\begin{verbatim}
|
1528 |
|
|
/* The constants K1 through K4, which parameterize the */
|
1529 |
|
|
/* counting behavior, are assumed assigned elsewhere in */
|
1530 |
|
|
/* the code. */
|
1531 |
|
|
/* */
|
1532 |
|
|
/* The variable time_count below is the number of milli- */
|
1533 |
|
|
/* seconds since the software was reset. */
|
1534 |
|
|
int time_count = 0;
|
1535 |
|
|
|
1536 |
|
|
/* It is assumed that the base rate subroutine below is */
|
1537 |
|
|
/* called every millisecond (or, at least what should be */
|
1538 |
|
|
/* every millisecond of the crystal or resonator were */
|
1539 |
|
|
/* perfect). */
|
1540 |
|
|
|
1541 |
|
|
void base_rate_sub(void)
|
1542 |
|
|
{
|
1543 |
|
|
static int state = K1;
|
1544 |
|
|
|
1545 |
|
|
state += K2;
|
1546 |
|
|
|
1547 |
|
|
while (state >= K3)
|
1548 |
|
|
{
|
1549 |
|
|
state -= K4;
|
1550 |
|
|
time_count++;
|
1551 |
|
|
}
|
1552 |
|
|
}
|
1553 |
|
|
\end{verbatim}
|
1554 |
|
|
\caption{Algorithm \ref{alg:crat0:sfdv0:01b} Applied To Timekeeping
|
1555 |
|
|
(Example \ref{ex:crat0:sfdv0:sprc1:01})}
|
1556 |
|
|
\label{fig:ex:crat0:sfdv0:sprc1:01:01}
|
1557 |
|
|
\end{figure}
|
1558 |
|
|
|
1559 |
|
|
Figure \ref{fig:ex:crat0:sfdv0:sprc1:01:01} provides an illustration
|
1560 |
|
|
of Algorithm \ref{alg:crat0:sfdv0:01b} applied in this scenario.
|
1561 |
|
|
We assume that $K_4$ contains the constant value 31,556,926
|
1562 |
|
|
and that $K_2$ is modified about this value either downwards or upwards
|
1563 |
|
|
to trim the timekeeping. Note that Algorithm \ref{alg:crat0:sfdv0:01b} will correctly
|
1564 |
|
|
handle $K_2 \geq K_4$.
|
1565 |
|
|
|
1566 |
|
|
Also note in the implementation illustrated in Figure
|
1567 |
|
|
\ref{fig:ex:crat0:sfdv0:sprc1:01:01} that large integers (27 bits or more)
|
1568 |
|
|
are required. (See also Exercise \ref{exe:crat0:sexe0:09}).
|
1569 |
|
|
\end{vworkexampleparsection}
|
1570 |
|
|
\vworkexamplefooter{}
|
1571 |
|
|
|
1572 |
|
|
It may not be obvious whether Algorithm \ref{alg:crat0:sfdv0:01b} has the
|
1573 |
|
|
same or similar desirable properties as Algorithm \ref{alg:crat0:sfdv0:01a}
|
1574 |
|
|
presented
|
1575 |
|
|
in Lemmas
|
1576 |
|
|
\ref{lem:crat0:sfdv0:sprc0:01},
|
1577 |
|
|
\ref{lem:crat0:sfdv0:sprc0:02},
|
1578 |
|
|
\ref{lem:crat0:sfdv0:sprc0:04},
|
1579 |
|
|
and
|
1580 |
|
|
\ref{lem:crat0:sfdv0:sprc0:03}.
|
1581 |
|
|
Algorithm \ref{alg:crat0:sfdv0:01b} does have these desirable
|
1582 |
|
|
properties, and these properties are presented as
|
1583 |
|
|
Lemmas \ref{lem:crat0:sfdv0:sprc1:01},
|
1584 |
|
|
\ref{lem:crat0:sfdv0:sprc1:02},
|
1585 |
|
|
\ref{lem:crat0:sfdv0:sprc1:03}, and
|
1586 |
|
|
\ref{lem:crat0:sfdv0:sprc1:04}.
|
1587 |
|
|
The proofs of these lemmas are identical or very similar to the proofs
|
1588 |
|
|
of Lemmas
|
1589 |
|
|
\ref{lem:crat0:sfdv0:sprc0:01},
|
1590 |
|
|
\ref{lem:crat0:sfdv0:sprc0:02},
|
1591 |
|
|
\ref{lem:crat0:sfdv0:sprc0:04},
|
1592 |
|
|
and
|
1593 |
|
|
\ref{lem:crat0:sfdv0:sprc0:03};
|
1594 |
|
|
and so these proofs when not identical are presented as exercises.
|
1595 |
|
|
Note that Algorithm \ref{alg:crat0:sfdv0:01b} behaves identically to
|
1596 |
|
|
Algorithm \ref{alg:crat0:sfdv0:01a} when $K_2 < K_4$, and the
|
1597 |
|
|
case of $K_2=K_4$ is trivial, so in general only
|
1598 |
|
|
the behavior when $K_2 > K_4$ remains to be proved.
|
1599 |
|
|
|
1600 |
|
|
\begin{vworklemmastatement}
|
1601 |
|
|
\label{lem:crat0:sfdv0:sprc1:01}
|
1602 |
|
|
$N_{STARTUP}$, the number of invocations of the base subroutine
|
1603 |
|
|
in Algorithm \ref{alg:crat0:sfdv0:01b} before ``\texttt{A()}'' is called
|
1604 |
|
|
for the first time, is given by
|
1605 |
|
|
|
1606 |
|
|
\begin{equation}
|
1607 |
|
|
\label{eq:lem:crat0:sfdv0:sprc1:01:01}
|
1608 |
|
|
N_{STARTUP} =
|
1609 |
|
|
\left\lceil
|
1610 |
|
|
{
|
1611 |
|
|
\frac{-K_1 - K_2 + K_3}{K_2}
|
1612 |
|
|
}
|
1613 |
|
|
\right\rceil .
|
1614 |
|
|
\end{equation}
|
1615 |
|
|
\end{vworklemmastatement}
|
1616 |
|
|
\begin{vworklemmaproof}
|
1617 |
|
|
The proof is identical to the proof of Lemma
|
1618 |
|
|
\ref{lem:crat0:sfdv0:sprc0:01}.
|
1619 |
|
|
\end{vworklemmaproof}
|
1620 |
|
|
|
1621 |
|
|
|
1622 |
|
|
\begin{vworklemmastatement}
|
1623 |
|
|
\label{lem:crat0:sfdv0:sprc1:02}
|
1624 |
|
|
Let $N_I$ be the number of times the Algorithm \ref{alg:crat0:sfdv0:01b}
|
1625 |
|
|
base subroutine
|
1626 |
|
|
is called, let $N_O$ be the number of times the
|
1627 |
|
|
``\texttt{A()}'' subroutine is called, let
|
1628 |
|
|
$f_I$ be the frequency of invocation of the
|
1629 |
|
|
Algorithm \ref{alg:crat0:sfdv0:01a} base subroutine, and let
|
1630 |
|
|
$f_O$ be the frequency of invocation of
|
1631 |
|
|
``\texttt{A()}''.
|
1632 |
|
|
|
1633 |
|
|
\begin{equation}
|
1634 |
|
|
\label{eq:lem:crat0:sfdv0:sprc1:02:01}
|
1635 |
|
|
\lim_{N_I\rightarrow\infty}\frac{N_O}{N_I}
|
1636 |
|
|
=
|
1637 |
|
|
\frac{f_O}{f_I}
|
1638 |
|
|
=
|
1639 |
|
|
\frac{K_2}{K_4} .
|
1640 |
|
|
\end{equation}
|
1641 |
|
|
\end{vworklemmastatement}
|
1642 |
|
|
\begin{vworklemmaproof}
|
1643 |
|
|
See Exercise \ref{exe:crat0:sexe0:10}.
|
1644 |
|
|
\end{vworklemmaproof}
|
1645 |
|
|
|
1646 |
|
|
\begin{vworklemmastatement}
|
1647 |
|
|
\label{lem:crat0:sfdv0:sprc1:03}
|
1648 |
|
|
If $K_3=K_4$, $K_1=0$, and $\gcd(K_2, K_4)=1$\footnote{See also
|
1649 |
|
|
footnote \ref{footnote:lem:crat0:sfdv0:sprc0:04:01} in this chapter.}, the error between
|
1650 |
|
|
the approximation to $N_O$ implemented by Algorithm \ref{alg:crat0:sfdv0:01b}
|
1651 |
|
|
and the ``ideal'' mapping is always
|
1652 |
|
|
in the set
|
1653 |
|
|
|
1654 |
|
|
\begin{equation}
|
1655 |
|
|
\label{eq:lem:crat0:sfdv0:sprc1:03:01}
|
1656 |
|
|
\left[ - \frac{K_4 - 1}{K_4} , 0 \right] ,
|
1657 |
|
|
\end{equation}
|
1658 |
|
|
|
1659 |
|
|
and no algorithm can be constructed to
|
1660 |
|
|
confine the error to a smaller interval.
|
1661 |
|
|
\end{vworklemmastatement}
|
1662 |
|
|
\begin{vworklemmaproof}
|
1663 |
|
|
The proof is identical to the proof of Lemma \ref{lem:crat0:sfdv0:sprc0:04}.
|
1664 |
|
|
\end{vworklemmaproof}
|
1665 |
|
|
|
1666 |
|
|
\begin{vworklemmastatement}
|
1667 |
|
|
\label{lem:crat0:sfdv0:sprc1:04}
|
1668 |
|
|
For Algorithm \ref{alg:crat0:sfdv0:01b}
|
1669 |
|
|
with
|
1670 |
|
|
$K_2 \geq K_4$, once steady
|
1671 |
|
|
state has been achieved (see Exercise
|
1672 |
|
|
\ref{exe:crat0:sexe0:13}), each invocation of the
|
1673 |
|
|
base subroutine will result in
|
1674 |
|
|
a number of invocations of
|
1675 |
|
|
``\texttt{A()}'' which is in the set
|
1676 |
|
|
|
1677 |
|
|
\begin{equation}
|
1678 |
|
|
\label{eq:lem:crat0:sfdv0:sprc1:04:01}
|
1679 |
|
|
\left\{
|
1680 |
|
|
\left\lfloor \frac{K_2}{K_4} \right\rfloor ,
|
1681 |
|
|
\left\lceil \frac{K_2}{K_4} \right\rceil
|
1682 |
|
|
\right\},
|
1683 |
|
|
\end{equation}
|
1684 |
|
|
|
1685 |
|
|
which contains one integer if $K_4 \vworkdivides K_2$,
|
1686 |
|
|
or two integers otherwise. With $K_2 < K_4$,
|
1687 |
|
|
the behavior will be as specified in Lemma
|
1688 |
|
|
\ref{lem:crat0:sfdv0:sprc0:03}.
|
1689 |
|
|
\end{vworklemmastatement}
|
1690 |
|
|
\begin{vworklemmaproof}
|
1691 |
|
|
See Exercise \ref{exe:crat0:sexe0:12}.
|
1692 |
|
|
\end{vworklemmaproof}
|
1693 |
|
|
\begin{vworklemmaparsection}{Remark}
|
1694 |
|
|
Note that Lemma \ref{lem:crat0:sfdv0:sprc0:03}
|
1695 |
|
|
and this lemma specify different aspects of behavior,
|
1696 |
|
|
which is why (\ref{eq:lem:crat0:sfdv0:sprc0:03:01})
|
1697 |
|
|
and (\ref{eq:lem:crat0:sfdv0:sprc0:03:02}) take
|
1698 |
|
|
different forms than
|
1699 |
|
|
(\ref{eq:lem:crat0:sfdv0:sprc1:04:01}).
|
1700 |
|
|
Lemma \ref{lem:crat0:sfdv0:sprc0:03} specifies the number of consecutive
|
1701 |
|
|
invocations of the base subroutine for which ``\texttt{A()}''
|
1702 |
|
|
will be run, but with $K_2 \geq K_4$ it does not make sense to
|
1703 |
|
|
specify behavior in this way since ``\texttt{A()}'' will be run
|
1704 |
|
|
on \emph{every} invocation of the base subroutine. This lemma specifies
|
1705 |
|
|
the number of times ``\texttt{A()}'' will be run on a \emph{single}
|
1706 |
|
|
invocation of the base subroutine (which is not meaningful if
|
1707 |
|
|
$K_2 < K_4$ since the result will always be 0 or 1).
|
1708 |
|
|
\end{vworklemmaparsection}
|
1709 |
|
|
%\vworklemmafooter{}
|
1710 |
|
|
|
1711 |
|
|
|
1712 |
|
|
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
|
1713 |
|
|
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
|
1714 |
|
|
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
|
1715 |
|
|
\subsection[Properties Of Algorithm \ref{alg:crat0:sfdv0:01c}]
|
1716 |
|
|
{Properties Of Rational Counting Algorithm \ref{alg:crat0:sfdv0:01c}}
|
1717 |
|
|
%Section tag: PRX0
|
1718 |
|
|
\label{crat0:sfdv0:sprx0}
|
1719 |
|
|
|
1720 |
|
|
Algorithm \ref{alg:crat0:sfdv0:01c}\footnote{Algorithm \ref{alg:crat0:sfdv0:01c}
|
1721 |
|
|
was contributed in March, 2003
|
1722 |
|
|
by Chuck B. Falconer \cite{bibref:i:chuckbfalconer}
|
1723 |
|
|
via the
|
1724 |
|
|
\texttt{comp.arch.embedded} \cite{bibref:n:comparchembedded}
|
1725 |
|
|
newsgroup.}
|
1726 |
|
|
is a variant of Algorithm \ref{alg:crat0:sfdv0:01a}
|
1727 |
|
|
which has one fewer
|
1728 |
|
|
degrees of freedom than Algorithms \ref{alg:crat0:sfdv0:01a}
|
1729 |
|
|
and \ref{alg:crat0:sfdv0:01b} and can be implemented
|
1730 |
|
|
more efficiently under most instruction sets. Algorithm \ref{alg:crat0:sfdv0:01c}
|
1731 |
|
|
is superior to Algorithms \ref{alg:crat0:sfdv0:01a}
|
1732 |
|
|
and \ref{alg:crat0:sfdv0:01b}
|
1733 |
|
|
from a computational efficiency
|
1734 |
|
|
point of view, but is less intuitive.
|
1735 |
|
|
|
1736 |
|
|
The superiority in computational efficiency of Algorithm \ref{alg:crat0:sfdv0:01c}
|
1737 |
|
|
comes from the possibility of using an implicit test against zero
|
1738 |
|
|
(rather than an explicit
|
1739 |
|
|
test against $K_3$, as is found in Algorithms \ref{alg:crat0:sfdv0:01a}
|
1740 |
|
|
and \ref{alg:crat0:sfdv0:01b}).
|
1741 |
|
|
Many machine instruction sets automatically set flags to indicate a negative
|
1742 |
|
|
result when the
|
1743 |
|
|
subtraction of $K_2$ is performed, thus often allowing a conditional branch
|
1744 |
|
|
without an additional instruction. Whether an instruction will be saved in
|
1745 |
|
|
the code of Figure \ref{fig:crat0:sfdv0:01c} depends on the sophistication
|
1746 |
|
|
of the `C' compiler, but of course if the algorithm were coded in
|
1747 |
|
|
assembly-language an instruction could be saved on most processors.
|
1748 |
|
|
|
1749 |
|
|
The properties of rational counting Algorithm \ref{alg:crat0:sfdv0:01c} are nearly
|
1750 |
|
|
identical to those of Algorithm \ref{alg:crat0:sfdv0:01a},
|
1751 |
|
|
and we prove the important properties
|
1752 |
|
|
now.
|
1753 |
|
|
|
1754 |
|
|
\begin{vworklemmastatement}
|
1755 |
|
|
\label{lem:crat0:sfdv0:sprx0:01}
|
1756 |
|
|
$N_{STARTUP}$, the number of invocations of the base subroutine
|
1757 |
|
|
in Algorithm \ref{alg:crat0:sfdv0:01c} before ``\texttt{A()}'' is called
|
1758 |
|
|
for the first time, is given by
|
1759 |
|
|
|
1760 |
|
|
\begin{equation}
|
1761 |
|
|
\label{eq:lem:crat0:sfdv0:sprx0:01:01}
|
1762 |
|
|
N_{STARTUP} =
|
1763 |
|
|
\left\lfloor
|
1764 |
|
|
{
|
1765 |
|
|
\frac{K_1}{K_2}
|
1766 |
|
|
}
|
1767 |
|
|
\right\rfloor .
|
1768 |
|
|
\end{equation}
|
1769 |
|
|
\end{vworklemmastatement}
|
1770 |
|
|
\begin{vworklemmaproof}
|
1771 |
|
|
The value of \texttt{state} when tested against
|
1772 |
|
|
zero in the \texttt{if()} statement during the $n$th invocation
|
1773 |
|
|
of the base subroutine is $K_1 - n K_2$. In order for the test
|
1774 |
|
|
not to be met on the $n$th invocation
|
1775 |
|
|
of the base subroutine, we require that
|
1776 |
|
|
|
1777 |
|
|
\begin{equation}
|
1778 |
|
|
\label{eq:lem:crat0:sfdv0:sprx0:01:02}
|
1779 |
|
|
K_1 - n K_2 \geq 0
|
1780 |
|
|
\end{equation}
|
1781 |
|
|
|
1782 |
|
|
\noindent{}or equivalently that
|
1783 |
|
|
|
1784 |
|
|
\begin{equation}
|
1785 |
|
|
\label{eq:lem:crat0:sfdv0:sprx0:01:03}
|
1786 |
|
|
n \leq \frac{K_1}{K_2} .
|
1787 |
|
|
\end{equation}
|
1788 |
|
|
|
1789 |
|
|
Solving (\ref{eq:lem:crat0:sfdv0:sprx0:01:03}) for the
|
1790 |
|
|
largest value of $n \in \vworkintset$ which still meets the criterion
|
1791 |
|
|
yields (\ref{eq:lem:crat0:sfdv0:sprx0:01:01}). Note that
|
1792 |
|
|
the derivation of (\ref{eq:lem:crat0:sfdv0:sprx0:01:01}) requires
|
1793 |
|
|
that the restrictions on $K_1$, $K_2$, and $K_3$ documented in
|
1794 |
|
|
Figure \ref{fig:crat0:sfdv0:01c} be met.
|
1795 |
|
|
\end{vworklemmaproof}
|
1796 |
|
|
|
1797 |
|
|
\begin{vworklemmastatement}
|
1798 |
|
|
\label{lem:crat0:sfdv0:sprx0:02}
|
1799 |
|
|
Let $N_I$ be the number of times the Algorithm \ref{alg:crat0:sfdv0:01c}
|
1800 |
|
|
base subroutine
|
1801 |
|
|
is called, let $N_O$ be the number of times the
|
1802 |
|
|
``\texttt{A()}'' subroutine is called, let
|
1803 |
|
|
$f_I$ be the frequency of invocation of the
|
1804 |
|
|
Algorithm \ref{alg:crat0:sfdv0:01a}
|
1805 |
|
|
base subroutine, and let
|
1806 |
|
|
$f_O$ be the frequency of invocation of
|
1807 |
|
|
``\texttt{A()}''. Provided the constraints
|
1808 |
|
|
on $K_1$, $K_2$, and $K_3$ documented in
|
1809 |
|
|
Figure \ref{fig:crat0:sfdv0:01c} are met,
|
1810 |
|
|
|
1811 |
|
|
\begin{equation}
|
1812 |
|
|
\label{eq:lem:crat0:sfdv0:sprx0:02:01}
|
1813 |
|
|
\lim_{N_I\rightarrow\infty}\frac{N_O}{N_I}
|
1814 |
|
|
=
|
1815 |
|
|
\frac{f_O}{f_I}
|
1816 |
|
|
=
|
1817 |
|
|
\frac{K_2}{K_4} .
|
1818 |
|
|
\end{equation}
|
1819 |
|
|
\end{vworklemmastatement}
|
1820 |
|
|
\begin{vworklemmaproof}
|
1821 |
|
|
(\ref{eq:lem:crat0:sfdv0:sprx0:02:01}) indicates that once
|
1822 |
|
|
an initial delay (determined by $K_1$) has finished,
|
1823 |
|
|
$N_O/N_I$ will converge on a steady-state value of
|
1824 |
|
|
$K_2/K_4$.
|
1825 |
|
|
|
1826 |
|
|
The most straightforward way to analyze Algorithm \ref{alg:crat0:sfdv0:01c}
|
1827 |
|
|
is to show how an algorithm already
|
1828 |
|
|
understood (Algorithm \ref{alg:crat0:sfdv0:01a})
|
1829 |
|
|
can be transformed to
|
1830 |
|
|
Algorithm \ref{alg:crat0:sfdv0:01c}
|
1831 |
|
|
in a way where the analysis of Algorithm \ref{alg:crat0:sfdv0:01a}
|
1832 |
|
|
also applies to Algorithm \ref{alg:crat0:sfdv0:01c}.
|
1833 |
|
|
Figure \ref{fig:lem:crat0:sfdv0:sprx0:02:01} shows
|
1834 |
|
|
how such a transformation can be performed in
|
1835 |
|
|
four steps.
|
1836 |
|
|
|
1837 |
|
|
\begin{figure}
|
1838 |
|
|
(a) Algorithm \ref{alg:crat0:sfdv0:01a} unchanged.
|
1839 |
|
|
$state_{a,n} \in \{0, 1, \ldots, K_4 - 1 \}$.
|
1840 |
|
|
\begin{verbatim}
|
1841 |
|
|
state += K2;
|
1842 |
|
|
if (state >= K4)
|
1843 |
|
|
{
|
1844 |
|
|
state -= K4;
|
1845 |
|
|
A();
|
1846 |
|
|
}
|
1847 |
|
|
\end{verbatim}
|
1848 |
|
|
(b) ``\texttt{>=}'' changed to ``\texttt{>}''. $state_{b,n} \in \{1, 2, \ldots, K_4 \}$,
|
1849 |
|
|
$state_{b,n} = state_{a,n} + 1$.
|
1850 |
|
|
\begin{verbatim}
|
1851 |
|
|
state += K2;
|
1852 |
|
|
if (state > K4)
|
1853 |
|
|
{
|
1854 |
|
|
state -= K4;
|
1855 |
|
|
A();
|
1856 |
|
|
}
|
1857 |
|
|
\end{verbatim}
|
1858 |
|
|
(c) Test against $K_4$ changed to test against zero.
|
1859 |
|
|
$state_{c,n} \in \{-K_4 + 1, -K_4 + 2, \ldots, 0 \}$,
|
1860 |
|
|
$state_{c,n} = state_{b,n} - K_4$.
|
1861 |
|
|
\begin{verbatim}
|
1862 |
|
|
state += K2;
|
1863 |
|
|
if (state > 0)
|
1864 |
|
|
{
|
1865 |
|
|
state -= K4;
|
1866 |
|
|
A();
|
1867 |
|
|
}
|
1868 |
|
|
\end{verbatim}
|
1869 |
|
|
(d) Sign inversion.
|
1870 |
|
|
$state_{d,n} \in \{ 0, 1, \ldots, K_4 - 1 \}$,
|
1871 |
|
|
$state_{d,n} = - state_{c,n}$.
|
1872 |
|
|
\begin{verbatim}
|
1873 |
|
|
state -= K2;
|
1874 |
|
|
if (state < 0)
|
1875 |
|
|
{
|
1876 |
|
|
state += K4;
|
1877 |
|
|
A();
|
1878 |
|
|
}
|
1879 |
|
|
\end{verbatim}
|
1880 |
|
|
(e) `C' expression rearrangement.
|
1881 |
|
|
$state_{e,n} \in \{ 0, 1, \ldots, K_4 - 1 \}$,
|
1882 |
|
|
$state_{e,n} = state_{d,n}$.
|
1883 |
|
|
\begin{verbatim}
|
1884 |
|
|
if ((state -= K2) < 0)
|
1885 |
|
|
{
|
1886 |
|
|
state += K4;
|
1887 |
|
|
A();
|
1888 |
|
|
}
|
1889 |
|
|
\end{verbatim}
|
1890 |
|
|
\caption{4-Step Transformation Of Algorithm \ref{alg:crat0:sfdv0:01a}
|
1891 |
|
|
To Algorithm \ref{alg:crat0:sfdv0:01c}}
|
1892 |
|
|
\label{fig:lem:crat0:sfdv0:sprx0:02:01}
|
1893 |
|
|
\end{figure}
|
1894 |
|
|
|
1895 |
|
|
In Figure \ref{fig:lem:crat0:sfdv0:sprx0:02:01}, each of the
|
1896 |
|
|
four steps required to transform from Algorithm \ref{alg:crat0:sfdv0:01a} to
|
1897 |
|
|
Algorithm \ref{alg:crat0:sfdv0:01c} includes an equation to transform the
|
1898 |
|
|
\texttt{state} variable. Combining all of these
|
1899 |
|
|
transformations yields
|
1900 |
|
|
|
1901 |
|
|
\begin{eqnarray}
|
1902 |
|
|
\label{eq:lem:crat0:sfdv0:sprx0:02:02}
|
1903 |
|
|
state_{e,n} & = & K_4 - 1 - state_{a,n} \\
|
1904 |
|
|
\label{eq:lem:crat0:sfdv0:sprx0:02:03}
|
1905 |
|
|
state_{a,n} & = & K_4 - 1 - state_{e,n}
|
1906 |
|
|
\end{eqnarray}
|
1907 |
|
|
|
1908 |
|
|
We thus see that Figure \ref{fig:lem:crat0:sfdv0:sprx0:02:01}(a)
|
1909 |
|
|
(corresponding to Algorithm \ref{alg:crat0:sfdv0:01a}) and
|
1910 |
|
|
Figure \ref{fig:lem:crat0:sfdv0:sprx0:02:01}(e)
|
1911 |
|
|
(corresponding to Algorithm \ref{alg:crat0:sfdv0:01c}) have
|
1912 |
|
|
\texttt{state} semantics which involve the same range
|
1913 |
|
|
but a reversed order. (\ref{eq:lem:crat0:sfdv0:sprx0:02:01})
|
1914 |
|
|
follows directly from this observation and from
|
1915 |
|
|
Lemma \ref{lem:crat0:sfdv0:sprc0:02}.
|
1916 |
|
|
\end{vworklemmaproof}
|
1917 |
|
|
%\vworklemmafooter{}
|
1918 |
|
|
|
1919 |
|
|
\begin{vworklemmastatement}
|
1920 |
|
|
\label{lem:crat0:sfdv0:sprx0:03}
|
1921 |
|
|
If $K_1=0$ and $\gcd(K_2, K_4)=1$\footnote{See also
|
1922 |
|
|
footnote \ref{footnote:lem:crat0:sfdv0:sprc0:04:01} in this chapter.}, the error between
|
1923 |
|
|
the approximation to $N_O$ implemented by Algorithm \ref{alg:crat0:sfdv0:01c}
|
1924 |
|
|
and the ``ideal'' mapping is always
|
1925 |
|
|
in the set
|
1926 |
|
|
|
1927 |
|
|
\begin{equation}
|
1928 |
|
|
\label{eq:lem:crat0:sfdv0:sprx0:03:01}
|
1929 |
|
|
\left[ 0, \frac{K_4 - 1}{K_4} \right] ,
|
1930 |
|
|
\end{equation}
|
1931 |
|
|
|
1932 |
|
|
and no algorithm can be constructed to
|
1933 |
|
|
confine the error to a smaller interval.
|
1934 |
|
|
\end{vworklemmastatement}
|
1935 |
|
|
\begin{vworklemmaproof}
|
1936 |
|
|
Using the duality illustrated by
|
1937 |
|
|
(\ref{eq:lem:crat0:sfdv0:sprx0:02:02}) and
|
1938 |
|
|
(\ref{eq:lem:crat0:sfdv0:sprx0:02:03}),
|
1939 |
|
|
starting Algorithm \ref{alg:crat0:sfdv0:01c} with
|
1940 |
|
|
$state_0=0$ will yield a dual state vector
|
1941 |
|
|
with respect to starting Algorithm \ref{alg:crat0:sfdv0:01a} with
|
1942 |
|
|
$state_0=K_4-1$. Thus,
|
1943 |
|
|
|
1944 |
|
|
\begin{equation}
|
1945 |
|
|
\label{eq:lem:crat0:sfdv0:sprx0:03:02}
|
1946 |
|
|
N_O = \left\lfloor \frac{n K_2 + K_4 - 1}{K_4} \right\rfloor .
|
1947 |
|
|
\end{equation}
|
1948 |
|
|
|
1949 |
|
|
Using this altered value of $N_O$ in (\ref{eq:lem:crat0:sfdv0:sprc0:04:04})
|
1950 |
|
|
leads directly to (\ref{eq:lem:crat0:sfdv0:sprx0:03:01}).
|
1951 |
|
|
|
1952 |
|
|
The proof that there can be no better algorithm is identical
|
1953 |
|
|
to the same proof for Lemma \ref{lem:crat0:sfdv0:sprc0:04} (Exercise \ref{exe:crat0:sexe0:06}).
|
1954 |
|
|
\end{vworklemmaproof}
|
1955 |
|
|
%\vworklemmafooter{}
|
1956 |
|
|
|
1957 |
|
|
\begin{vworklemmastatement}
|
1958 |
|
|
\label{lem:crat0:sfdv0:sprx0:04}
|
1959 |
|
|
For Algorithm \ref{alg:crat0:sfdv0:01c}, once steady
|
1960 |
|
|
state has been achieved, the number of consecutive
|
1961 |
|
|
base subroutine invocations during which subroutine
|
1962 |
|
|
``\texttt{A()}'' is executed is always in the set
|
1963 |
|
|
|
1964 |
|
|
\begin{equation}
|
1965 |
|
|
\label{eq:lem:crat0:sfdv0:sprx0:04:01}
|
1966 |
|
|
\left\{
|
1967 |
|
|
\left\lfloor \frac{K_2}{K_4 - K_2} \right\rfloor ,
|
1968 |
|
|
\left\lceil \frac{K_2}{K_4 - K_2} \right\rceil
|
1969 |
|
|
\right\} \cap \vworkintsetpos,
|
1970 |
|
|
\end{equation}
|
1971 |
|
|
|
1972 |
|
|
which contains one integer if $K_2/K_4 \leq 1/2$ or $(K_4-K_2) \vworkdivides K_2$,
|
1973 |
|
|
or two integers otherwise.
|
1974 |
|
|
|
1975 |
|
|
Once steady state has been achieved, the number of
|
1976 |
|
|
consecutive base function invocations during which
|
1977 |
|
|
subroutine ``\texttt{A()}'' is not executed is
|
1978 |
|
|
always in the set
|
1979 |
|
|
|
1980 |
|
|
\begin{equation}
|
1981 |
|
|
\label{eq:lem:crat0:sfdv0:sprx0:04:02}
|
1982 |
|
|
\left\{
|
1983 |
|
|
\left\lfloor \frac{K_4-K_2}{K_2} \right\rfloor ,
|
1984 |
|
|
\left\lceil \frac{K_4-K_2}{K_2} \right\rceil
|
1985 |
|
|
\right\} \cap \vworkintsetpos,
|
1986 |
|
|
\end{equation}
|
1987 |
|
|
|
1988 |
|
|
which contains one integer if $K_2/K_4 \geq 1/2$ or $K_2 \vworkdivides K_4$,
|
1989 |
|
|
or two integers otherwise.
|
1990 |
|
|
\end{vworklemmastatement}
|
1991 |
|
|
\begin{vworklemmaproof}
|
1992 |
|
|
The proof comes directly from the duality between algorithm
|
1993 |
|
|
Algorithms \ref{alg:crat0:sfdv0:01a}
|
1994 |
|
|
and \ref{alg:crat0:sfdv0:01c} established in the
|
1995 |
|
|
proof of Lemma \ref{lem:crat0:sfdv0:sprx0:01}, so that the results
|
1996 |
|
|
from Lemma \ref{lem:crat0:sfdv0:sprc0:03} apply without modification.
|
1997 |
|
|
\end{vworklemmaproof}
|
1998 |
|
|
\vworklemmafooter{}
|
1999 |
|
|
|
2000 |
|
|
|
2001 |
|
|
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
|
2002 |
|
|
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
|
2003 |
|
|
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
|
2004 |
|
|
\subsection[Properties Of Algorithm \ref{alg:crat0:sfdv0:01d}]
|
2005 |
|
|
{Properties Of Rational Counting Algorithm \ref{alg:crat0:sfdv0:01d}}
|
2006 |
|
|
%Section tag: PRX1
|
2007 |
|
|
\label{crat0:sfdv0:sprx1}
|
2008 |
|
|
|
2009 |
|
|
Algorithm \ref{alg:crat0:sfdv0:01d}\footnote{Algorithm \ref{alg:crat0:sfdv0:01d}
|
2010 |
|
|
was contributed in March, 2003
|
2011 |
|
|
by John Larkin \cite{bibref:i:johnlarkin}
|
2012 |
|
|
via the
|
2013 |
|
|
\texttt{comp.arch.embedded} \cite{bibref:n:comparchembedded}
|
2014 |
|
|
newsgroup.}
|
2015 |
|
|
(Figure \ref{fig:crat0:sfdv0:01d}) is a further
|
2016 |
|
|
economization of Algorithms \ref{alg:crat0:sfdv0:01a}
|
2017 |
|
|
through \ref{alg:crat0:sfdv0:01c} that can be made by eliminating
|
2018 |
|
|
the addition or subtraction of $K_4$ and test against $K_3$
|
2019 |
|
|
and instead using the
|
2020 |
|
|
inherent machine integer size of $W$ bits to perform
|
2021 |
|
|
arithmetic modulo $2^W$. Thus, effectively, Algorithm \ref{alg:crat0:sfdv0:01d}
|
2022 |
|
|
is equivalent to Algorithm \ref{alg:crat0:sfdv0:01a} with
|
2023 |
|
|
$K_4 = K_3 = 2^W$.
|
2024 |
|
|
|
2025 |
|
|
Figure \ref{fig:crat0:sfdv0:01d} shows both
|
2026 |
|
|
assembly-language (Texas Instruments TMS-370C8) and
|
2027 |
|
|
`C' implementations of the algorithm. The assembly-language
|
2028 |
|
|
version uses the carry flag of the processor and thus
|
2029 |
|
|
is \emph{very} efficient. Because `C' does not have access
|
2030 |
|
|
to the processor flags, the 'C' version is less efficient.
|
2031 |
|
|
The ``less than'' comparison when
|
2032 |
|
|
using unsigned integers is equivalent to a rollover test.
|
2033 |
|
|
|
2034 |
|
|
It is easy to see from the figure that Algorithm \ref{alg:crat0:sfdv0:01d}
|
2035 |
|
|
is equivalent in all
|
2036 |
|
|
respects to Algorithm \ref{alg:crat0:sfdv0:01a} with
|
2037 |
|
|
$K_3 = K_4$ fixed at $2^W$. It is not necessary to enforce any constraints
|
2038 |
|
|
on $K_2$ because $K_2 < K_3 = K_4 = 2^W$ due to the inherent size of
|
2039 |
|
|
a machine integer. Note that unlike Algorithms \ref{alg:crat0:sfdv0:01a}
|
2040 |
|
|
through \ref{alg:crat0:sfdv0:01c} which allow $K_2$ and $K_4$ to be chosen independently
|
2041 |
|
|
and from the Farey series of appropriate order, Algorithm \ref{alg:crat0:sfdv0:01c}
|
2042 |
|
|
only allows
|
2043 |
|
|
$K_2/K_4$ of the form $K_2/2^W$.
|
2044 |
|
|
|
2045 |
|
|
The properties below follow immediately
|
2046 |
|
|
from the properties of Algorithm \ref{alg:crat0:sfdv0:01a}.
|
2047 |
|
|
|
2048 |
|
|
\begin{vworklemmastatement}
|
2049 |
|
|
\label{lem:crat0:sfdv0:sprx1:01}
|
2050 |
|
|
$N_{STARTUP}$, the number of invocations of the base subroutine
|
2051 |
|
|
in Algorithm \ref{alg:crat0:sfdv0:01d} before ``\texttt{A()}'' is called
|
2052 |
|
|
for the first time, is given by
|
2053 |
|
|
|
2054 |
|
|
\begin{equation}
|
2055 |
|
|
\label{eq:lem:crat0:sfdv0:sprx1:01:01}
|
2056 |
|
|
N_{STARTUP} =
|
2057 |
|
|
\left\lfloor
|
2058 |
|
|
{
|
2059 |
|
|
\frac{2^W - K_1 - 1}{K_2}
|
2060 |
|
|
}
|
2061 |
|
|
\right\rfloor .
|
2062 |
|
|
\end{equation}
|
2063 |
|
|
\end{vworklemmastatement}
|
2064 |
|
|
\begin{vworklemmaproof}
|
2065 |
|
|
The value of \texttt{state} after the $n$th invocation
|
2066 |
|
|
is $state_n = K_1 + n K_2$. In order for the test in the
|
2067 |
|
|
\texttt{if()} statement not to be met, we require that
|
2068 |
|
|
|
2069 |
|
|
\begin{equation}
|
2070 |
|
|
\label{eq:lem:crat0:sfdv0:sprx1:01:02}
|
2071 |
|
|
K_1 + n K_2 \leq 2^W - 1
|
2072 |
|
|
\end{equation}
|
2073 |
|
|
|
2074 |
|
|
\noindent{}or equivalently that
|
2075 |
|
|
|
2076 |
|
|
\begin{equation}
|
2077 |
|
|
\label{eq:lem:crat0:sfdv0:sprx1:01:03}
|
2078 |
|
|
n \leq \frac{2^W - K_1 - 1}{K_2} .
|
2079 |
|
|
\end{equation}
|
2080 |
|
|
|
2081 |
|
|
Solving (\ref{eq:lem:crat0:sfdv0:sprx1:01:03}) for the largest
|
2082 |
|
|
value of $n \in \vworkintset$ which still meets the criterion
|
2083 |
|
|
yields (\ref{eq:lem:crat0:sfdv0:sprx1:01:01}).
|
2084 |
|
|
\end{vworklemmaproof}
|
2085 |
|
|
|
2086 |
|
|
\begin{vworklemmastatement}
|
2087 |
|
|
\label{lem:crat0:sfdv0:sprx1:02}
|
2088 |
|
|
Let $N_I$ be the number of times the Algorithm \ref{alg:crat0:sfdv0:01d} base subroutine
|
2089 |
|
|
is called, let $N_O$ be the number of times the
|
2090 |
|
|
``\texttt{A()}'' subroutine is called, let
|
2091 |
|
|
$f_I$ be the frequency of invocation of the
|
2092 |
|
|
Algorithm \ref{alg:crat0:sfdv0:01d} base subroutine, and let
|
2093 |
|
|
$f_O$ be the frequency of invocation of
|
2094 |
|
|
``\texttt{A()}''. Then
|
2095 |
|
|
|
2096 |
|
|
\begin{equation}
|
2097 |
|
|
\label{eq:lem:crat0:sfdv0:sprx1:02:01}
|
2098 |
|
|
\lim_{N_I\rightarrow\infty}\frac{N_O}{N_I}
|
2099 |
|
|
=
|
2100 |
|
|
\frac{f_O}{f_I}
|
2101 |
|
|
=
|
2102 |
|
|
\frac{K_2}{2^W} ,
|
2103 |
|
|
\end{equation}
|
2104 |
|
|
|
2105 |
|
|
where $W$ is the number of bits in a machine unsigned integer.
|
2106 |
|
|
Note that $K_2 < 2^W$ since $K_2 \in \{ 0, 1, \ldots , 2^W-1 \}$.
|
2107 |
|
|
\end{vworklemmastatement}
|
2108 |
|
|
\begin{vworklemmaproof}
|
2109 |
|
|
The proof is identical to the proof of
|
2110 |
|
|
Lemma \ref{lem:crat0:sfdv0:sprc0:02} with $K_3=K_4=2^W$.
|
2111 |
|
|
Note that Algorithm \ref{alg:crat0:sfdv0:01a} calculates $n K_2 \bmod K_4$ by
|
2112 |
|
|
subtraction, whereas Algorithm \ref{alg:crat0:sfdv0:01d} calculates
|
2113 |
|
|
$n K_2 \bmod 2^W$ by the properties of a $W$-bit counter
|
2114 |
|
|
which is allowed to roll over.
|
2115 |
|
|
\end{vworklemmaproof}
|
2116 |
|
|
%\vworklemmafooter{}
|
2117 |
|
|
|
2118 |
|
|
|
2119 |
|
|
\begin{vworklemmastatement}
|
2120 |
|
|
\label{lem:crat0:sfdv0:sprx1:03}
|
2121 |
|
|
If $\gcd(K_2, 2^W)=1$\footnote{See also footnote \ref{footnote:lem:crat0:sfdv0:sprc0:04:01}
|
2122 |
|
|
in this chapter. Note also that in this context the condition $\gcd(K_2, 2^W)=1$
|
2123 |
|
|
is equivalent to the condition that $K_2$ be odd.}, the error between
|
2124 |
|
|
the approximation to $N_O$ implemented by Algorithm \ref{alg:crat0:sfdv0:01d}
|
2125 |
|
|
and the ``ideal'' mapping is always
|
2126 |
|
|
in the set
|
2127 |
|
|
|
2128 |
|
|
\begin{equation}
|
2129 |
|
|
\label{eq:lem:crat0:sfdv0:sprx1:03:01}
|
2130 |
|
|
\left[ - \frac{2^W - 1}{2^W} , 0 \right] ,
|
2131 |
|
|
\end{equation}
|
2132 |
|
|
|
2133 |
|
|
and no algorithm can be constructed to
|
2134 |
|
|
confine the error to a smaller interval.
|
2135 |
|
|
\end{vworklemmastatement}
|
2136 |
|
|
\begin{vworklemmaproof}
|
2137 |
|
|
The proof is identical to the proof of Lemma
|
2138 |
|
|
\ref{lem:crat0:sfdv0:sprc0:04} with $K_4 = 2^W$.
|
2139 |
|
|
\end{vworklemmaproof}
|
2140 |
|
|
%\vworklemmafooter{}
|
2141 |
|
|
|
2142 |
|
|
\begin{vworklemmastatement}
|
2143 |
|
|
\label{lem:crat0:sfdv0:sprx1:04}
|
2144 |
|
|
For Algorithm \ref{alg:crat0:sfdv0:01d}
|
2145 |
|
|
(Figure \ref{fig:crat0:sfdv0:01d}), once steady
|
2146 |
|
|
state has been achieved, the number of consecutive
|
2147 |
|
|
base subroutine invocations during which subroutine
|
2148 |
|
|
``\texttt{A()}'' is executed is always in the set
|
2149 |
|
|
|
2150 |
|
|
\begin{equation}
|
2151 |
|
|
\label{eq:lem:crat0:sfdv0:sprx1:04:01}
|
2152 |
|
|
\left\{
|
2153 |
|
|
\left\lfloor \frac{K_2}{2^W - K_2} \right\rfloor ,
|
2154 |
|
|
\left\lceil \frac{K_2}{2^W - K_2} \right\rceil
|
2155 |
|
|
\right\} \cap \vworkintsetpos,
|
2156 |
|
|
\end{equation}
|
2157 |
|
|
|
2158 |
|
|
which contains one integer if $K_2/2^W \leq 1/2$ or $(2^W-K_2) \vworkdivides K_2$,
|
2159 |
|
|
or two integers otherwise.
|
2160 |
|
|
|
2161 |
|
|
Once steady state has been achieved, the number of
|
2162 |
|
|
consecutive base function invocations during which
|
2163 |
|
|
subroutine ``\texttt{A()}'' is not executed is
|
2164 |
|
|
always in the set
|
2165 |
|
|
|
2166 |
|
|
\begin{equation}
|
2167 |
|
|
\label{eq:lem:crat0:sfdv0:sprx1:04:02}
|
2168 |
|
|
\left\{
|
2169 |
|
|
\left\lfloor \frac{2^W-K_2}{K_2} \right\rfloor ,
|
2170 |
|
|
\left\lceil \frac{2^W-K_2}{K_2} \right\rceil
|
2171 |
|
|
\right\} \cap \vworkintsetpos,
|
2172 |
|
|
\end{equation}
|
2173 |
|
|
|
2174 |
|
|
which contains one integer if $K_2/2^W \geq 1/2$ or $K_2 \vworkdivides 2^W$,
|
2175 |
|
|
or two integers otherwise.
|
2176 |
|
|
\end{vworklemmastatement}
|
2177 |
|
|
\begin{vworklemmaproof}
|
2178 |
|
|
The proof is identical to the proof of Lemma
|
2179 |
|
|
\ref{lem:crat0:sfdv0:sprc0:03} with $K_4 = 2^W$.
|
2180 |
|
|
\end{vworklemmaproof}
|
2181 |
|
|
\vworklemmafooter{}
|
2182 |
|
|
|
2183 |
|
|
|
2184 |
|
|
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
|
2185 |
|
|
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
|
2186 |
|
|
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
|
2187 |
|
|
\subsection[Properties Of Algorithm \ref{alg:crat0:sfdv0:02a}]
|
2188 |
|
|
{Properties Of Rational Counting Algorithm \ref{alg:crat0:sfdv0:02a}}
|
2189 |
|
|
%Section tag: PRC2
|
2190 |
|
|
\label{crat0:sfdv0:sprc2}
|
2191 |
|
|
|
2192 |
|
|
Another useful rational counting algorithm is Algorithm \ref{alg:crat0:sfdv0:02a}.
|
2193 |
|
|
At first glance, it may appear that Algorithm \ref{alg:crat0:sfdv0:02a}
|
2194 |
|
|
is qualitatively
|
2195 |
|
|
different than Algorithms \ref{alg:crat0:sfdv0:01a}
|
2196 |
|
|
and \ref{alg:crat0:sfdv0:01b}.
|
2197 |
|
|
However, as the following lemmas demonstrate, Algorithm \ref{alg:crat0:sfdv0:02a}
|
2198 |
|
|
can be easily rearranged to be in the form
|
2199 |
|
|
of Algorithm \ref{alg:crat0:sfdv0:01a}.
|
2200 |
|
|
|
2201 |
|
|
\begin{vworklemmastatement}
|
2202 |
|
|
\label{lem:crat0:sfdv0:sprc2:01}
|
2203 |
|
|
$N_{STARTUP}$, the number of invocations of the base subroutine
|
2204 |
|
|
in Algorithm \ref{alg:crat0:sfdv0:02a} before ``\texttt{A()}'' is called
|
2205 |
|
|
for the first time, is given by
|
2206 |
|
|
|
2207 |
|
|
\begin{equation}
|
2208 |
|
|
\label{eq:lem:crat0:sfdv0:sprc2:01:01}
|
2209 |
|
|
N_{STARTUP} =
|
2210 |
|
|
\left\lceil
|
2211 |
|
|
{
|
2212 |
|
|
\frac{K_3 - K_1}{K_2}
|
2213 |
|
|
}
|
2214 |
|
|
\right\rceil .
|
2215 |
|
|
\end{equation}
|
2216 |
|
|
\end{vworklemmastatement}
|
2217 |
|
|
\begin{vworklemmaproof}
|
2218 |
|
|
The value of \texttt{state} after the $n$th invocation
|
2219 |
|
|
is $K_1 + n K_2$. In order for the test in the
|
2220 |
|
|
\texttt{if()} statement to be met on the $n+1$'th invocation
|
2221 |
|
|
of the base subroutine, we require that
|
2222 |
|
|
|
2223 |
|
|
\begin{equation}
|
2224 |
|
|
\label{eq:lem:crat0:sfdv0:sprc2:01:02}
|
2225 |
|
|
K_1 + n K_2 \geq K_3
|
2226 |
|
|
\end{equation}
|
2227 |
|
|
|
2228 |
|
|
\noindent{}or equivalently that
|
2229 |
|
|
|
2230 |
|
|
\begin{equation}
|
2231 |
|
|
\label{eq:lem:crat0:sfdv0:sprc2:01:03}
|
2232 |
|
|
n \geq \frac{K_3 - K_1}{K_2} .
|
2233 |
|
|
\end{equation}
|
2234 |
|
|
|
2235 |
|
|
Solving (\ref{eq:lem:crat0:sfdv0:sprc2:01:03}) for the smallest
|
2236 |
|
|
value of $n \in \vworkintset$ which still meets the criterion
|
2237 |
|
|
yields (\ref{eq:lem:crat0:sfdv0:sprc2:01:01}). Note that
|
2238 |
|
|
the derivation of (\ref{eq:lem:crat0:sfdv0:sprc2:01:01}) requires
|
2239 |
|
|
that the restrictions on $K_1$ through $K_4$ documented in
|
2240 |
|
|
Figure \ref{fig:crat0:sfdv0:02a} be met.
|
2241 |
|
|
\end{vworklemmaproof}
|
2242 |
|
|
|
2243 |
|
|
\begin{vworklemmastatement}
|
2244 |
|
|
\label{lem:crat0:sfdv0:sprc2:02}
|
2245 |
|
|
Let $N_I$ be the number of times the Algorithm \ref{alg:crat0:sfdv0:02a} base subroutine
|
2246 |
|
|
is called, let $N_{OA}$ be the number of times the
|
2247 |
|
|
``\texttt{A()}'' subroutine is called, let
|
2248 |
|
|
$f_I$ be the frequency of invocation of the
|
2249 |
|
|
Algorithm \ref{alg:crat0:sfdv0:02a} base subroutine, and let
|
2250 |
|
|
$f_{OA}$ be the frequency of invocation of
|
2251 |
|
|
``\texttt{A()}''. Then, the proportion of times the
|
2252 |
|
|
``\texttt{A()}'' subroutine is called is given by
|
2253 |
|
|
|
2254 |
|
|
\begin{equation}
|
2255 |
|
|
\label{eq:lem:crat0:sfdv0:sprc2:02:01}
|
2256 |
|
|
\lim_{N_I\rightarrow\infty}\frac{N_{OA}}{N_I}
|
2257 |
|
|
=
|
2258 |
|
|
\frac{f_{OA}}{f_I}
|
2259 |
|
|
=
|
2260 |
|
|
\frac{K_2}{K_4 + K_2} ,
|
2261 |
|
|
\end{equation}
|
2262 |
|
|
|
2263 |
|
|
and the proportion of times the ``\texttt{B()}'' subroutine is called
|
2264 |
|
|
is given by
|
2265 |
|
|
|
2266 |
|
|
\begin{equation}
|
2267 |
|
|
\label{eq:lem:crat0:sfdv0:sprc2:02:02}
|
2268 |
|
|
\lim_{N_I\rightarrow\infty}\frac{N_{OB}}{N_I}
|
2269 |
|
|
=
|
2270 |
|
|
\frac{f_{OB}}{f_I}
|
2271 |
|
|
=
|
2272 |
|
|
1 - \frac{f_{OA}}{f_I}
|
2273 |
|
|
=
|
2274 |
|
|
\frac{K_4}{K_4 + K_2} .
|
2275 |
|
|
\end{equation}
|
2276 |
|
|
\end{vworklemmastatement}
|
2277 |
|
|
\begin{vworklemmaproof}
|
2278 |
|
|
As in Lemma \ref{} and without
|
2279 |
|
|
loss of generality, we assume for analytic
|
2280 |
|
|
convenience that $K_1=0$ and $K_3=K_4$. Note that
|
2281 |
|
|
$K_1$ and $K_3$ influence only the transient startup
|
2282 |
|
|
behavior of the algorithm.
|
2283 |
|
|
|
2284 |
|
|
It can be observed from the algorithm that once steady
|
2285 |
|
|
state is achieved, \texttt{state} will be confined to the set
|
2286 |
|
|
|
2287 |
|
|
\begin{equation}
|
2288 |
|
|
\label{eq:lem:crat0:sfdv0:sprc2:02:10}
|
2289 |
|
|
state \in \{ 0, 1, \ldots , K_4 + K_2 - 1 \} .
|
2290 |
|
|
\end{equation}
|
2291 |
|
|
|
2292 |
|
|
It is certainly possible to use results from
|
2293 |
|
|
number theory and analyze which values in the
|
2294 |
|
|
set (\ref{eq:lem:crat0:sfdv0:sprc2:02:10}) can be
|
2295 |
|
|
attained and the order in which they can be attained.
|
2296 |
|
|
However, an easier approach is to observe that
|
2297 |
|
|
Algorithm \ref{alg:crat0:sfdv0:02a}
|
2298 |
|
|
can be rearranged to take the form of
|
2299 |
|
|
rational counting Algorithm \ref{alg:crat0:sfdv0:01a}.
|
2300 |
|
|
This rearranged
|
2301 |
|
|
algorithm is presented as
|
2302 |
|
|
Figure \ref{fig:lem:crat0:sfdv0:sprc2:02:01}. Note that the
|
2303 |
|
|
algorithm is rearranged only for easier analysis.
|
2304 |
|
|
|
2305 |
|
|
\begin{figure}
|
2306 |
|
|
\begin{verbatim}
|
2307 |
|
|
void base_rate_sub(void)
|
2308 |
|
|
{
|
2309 |
|
|
static unsigned int state = K1;
|
2310 |
|
|
|
2311 |
|
|
state += K2;
|
2312 |
|
|
|
2313 |
|
|
if (state >= (K4 + K2))
|
2314 |
|
|
{
|
2315 |
|
|
state -= (K4 + K2);
|
2316 |
|
|
A();
|
2317 |
|
|
}
|
2318 |
|
|
else
|
2319 |
|
|
{
|
2320 |
|
|
B();
|
2321 |
|
|
}
|
2322 |
|
|
}
|
2323 |
|
|
\end{verbatim}
|
2324 |
|
|
\caption{Algorithm \ref{alg:crat0:sfdv0:02a} Modified To Resemble Algorithm \ref{alg:crat0:sfdv0:01a}
|
2325 |
|
|
(Proof Of Lemma \ref{lem:crat0:sfdv0:sprc2:02})}
|
2326 |
|
|
\label{fig:lem:crat0:sfdv0:sprc2:02:01}
|
2327 |
|
|
\end{figure}
|
2328 |
|
|
|
2329 |
|
|
In Figure \ref{fig:lem:crat0:sfdv0:sprc2:02:01}, the
|
2330 |
|
|
statement ``\texttt{state += K2}'' has been removed from the
|
2331 |
|
|
\texttt{else} clause and placed above the \texttt{if()} statement,
|
2332 |
|
|
and other constants have been adjusted accordingly.
|
2333 |
|
|
It can be observed that the figure
|
2334 |
|
|
is structurally identical to rational counting algorithm, except for the
|
2335 |
|
|
\texttt{else} clause (which does not affect the counting behavior) and
|
2336 |
|
|
the specific constants for testing and incrementation.
|
2337 |
|
|
|
2338 |
|
|
In Figure \ref{fig:lem:crat0:sfdv0:sprc2:02:01}, as contrasted with
|
2339 |
|
|
Algorithm \ref{alg:crat0:sfdv0:01a}, ``$K_4 + K_2$'' takes the
|
2340 |
|
|
place of $K_4$. $\gcd(K_2, K_4 + K_2) = \gcd(K_2, K_4)$
|
2341 |
|
|
(see Lemma \cprizeroxrefhyphen\ref{lem:cpri0:gcd0:01}), so the
|
2342 |
|
|
results from
|
2343 |
|
|
\end{vworklemmaproof}
|
2344 |
|
|
|
2345 |
|
|
\begin{vworklemmastatement}
|
2346 |
|
|
\label{lem:crat0:sfdv0:sprc2:03}
|
2347 |
|
|
If $K_3=K_4$, $K_1=0$, and $\gcd(K_2, K_4)=1$, the error between
|
2348 |
|
|
the approximation to $N_O$ implemented by Algorithm \ref{alg:crat0:sfdv0:01b}
|
2349 |
|
|
and the ``ideal'' mapping is always
|
2350 |
|
|
in the set
|
2351 |
|
|
|
2352 |
|
|
\begin{equation}
|
2353 |
|
|
\label{eq:lem:crat0:sfdv0:sprc2:03:01}
|
2354 |
|
|
\left[ - \frac{K_4 - 1}{K_4} , 0 \right] ,
|
2355 |
|
|
\end{equation}
|
2356 |
|
|
|
2357 |
|
|
and no algorithm can be constructed to
|
2358 |
|
|
confine the error to a smaller interval.
|
2359 |
|
|
\end{vworklemmastatement}
|
2360 |
|
|
\begin{vworklemmaproof}
|
2361 |
|
|
The proof is identical to Lemma \ref{lem:crat0:sfdv0:sprc0:04}.
|
2362 |
|
|
\end{vworklemmaproof}
|
2363 |
|
|
|
2364 |
|
|
|
2365 |
|
|
|
2366 |
|
|
|
2367 |
|
|
|
2368 |
|
|
|
2369 |
|
|
|
2370 |
|
|
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
|
2371 |
|
|
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
|
2372 |
|
|
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
|
2373 |
|
|
\section{Bresenham's Line Algorithm}
|
2374 |
|
|
%Section tag: BLA0
|
2375 |
|
|
\label{crat0:sbla0}
|
2376 |
|
|
|
2377 |
|
|
\index{Bresenham's line algorithm}\emph{Bresenham's line algorithm} is a
|
2378 |
|
|
very efficient algorithm for drawing lines on devices that have
|
2379 |
|
|
a rectangular array of pixels which can be individually illuminated.
|
2380 |
|
|
Bresenham's line algorithm is efficient for small microcontrollers
|
2381 |
|
|
because it relies only
|
2382 |
|
|
on integer addition, subtraction, shifting, and comparison.
|
2383 |
|
|
|
2384 |
|
|
Bresenham's line algorithm is presented for two reasons:
|
2385 |
|
|
|
2386 |
|
|
\begin{itemize}
|
2387 |
|
|
\item The algorithm is useful for drawing lines on LCD
|
2388 |
|
|
displays and other devices typically controlled by
|
2389 |
|
|
microcontrollers.
|
2390 |
|
|
\item The algorithm is an [extremely optimized] application
|
2391 |
|
|
of the rational
|
2392 |
|
|
counting algorithms presented in this chapter.
|
2393 |
|
|
\end{itemize}
|
2394 |
|
|
|
2395 |
|
|
\begin{figure}
|
2396 |
|
|
\begin{center}
|
2397 |
|
|
\begin{huge}
|
2398 |
|
|
Figure Space Reserved
|
2399 |
|
|
\end{huge}
|
2400 |
|
|
\end{center}
|
2401 |
|
|
\caption{Raster Grid For Development Of Bresenham's Line Algorithm}
|
2402 |
|
|
\label{fig:crat0:sbla0:01}
|
2403 |
|
|
\end{figure}
|
2404 |
|
|
|
2405 |
|
|
Assume that we wish to draw a line from $(0,0)$ to $(x_f, y_f)$ on
|
2406 |
|
|
a raster device (Figure \ref{fig:crat0:sbla0:01}). For simplicity of
|
2407 |
|
|
development, assume that $y_f \leq x_f$ (i.e. that the slope $m \leq 1$).
|
2408 |
|
|
|
2409 |
|
|
For each value of $x \in \vworkintset$, the ideal value of $y$ is given
|
2410 |
|
|
by
|
2411 |
|
|
|
2412 |
|
|
\begin{equation}
|
2413 |
|
|
\label{eq:crat0:sbla0:01}
|
2414 |
|
|
y = mx = \frac{y_f}{x_f} x = \frac{y_f x}{x_f} .
|
2415 |
|
|
\end{equation}
|
2416 |
|
|
|
2417 |
|
|
\noindent{}However, on a raster device, we must usually
|
2418 |
|
|
choose an inexact pixel to illuminate, since it is typically
|
2419 |
|
|
rare that $x_f \vworkdivides y_f x$. If
|
2420 |
|
|
$x_f \vworkdivides y_f x$, then the ideal value of $y$ is
|
2421 |
|
|
an integer, and we choose to illuminate
|
2422 |
|
|
$(x, (y_f x)/x_f)$. However, if $x_f \vworknotdivides y_f x$,
|
2423 |
|
|
then we must choose either a pixel with the same y-coordinate
|
2424 |
|
|
as the previous pixel (we call this choice `D') or the pixel
|
2425 |
|
|
with a y-coordinate one greater than the previous pixel (we
|
2426 |
|
|
call this choice `U').
|
2427 |
|
|
The fractional part of the quotient
|
2428 |
|
|
$(y_f x) / x_f$ indicates whether D or U is closer to the ideal line.
|
2429 |
|
|
If $y_f x \bmod x_f \geq x_f/2$, we choose U, otherwise we choose D
|
2430 |
|
|
(note that the decision to choose U in the equality case is arbitrary).
|
2431 |
|
|
|
2432 |
|
|
Using the rational approximation techniques presented in
|
2433 |
|
|
Section \ref{crat0:sfdv0}, it is straightforward to
|
2434 |
|
|
develop an algorithm, which is presented as the code
|
2435 |
|
|
in Figure \ref{fig:crat0:sbla0:02}.
|
2436 |
|
|
Note that this code will only work if $m = y_f/x_f \leq 1$.
|
2437 |
|
|
|
2438 |
|
|
\begin{figure}
|
2439 |
|
|
\begin{verbatim}
|
2440 |
|
|
/* Draws a line from (0,0) to (x_f,y_f) on a raster */
|
2441 |
|
|
/* device. */
|
2442 |
|
|
|
2443 |
|
|
void bresenham_line(int x_f, int y_f)
|
2444 |
|
|
{
|
2445 |
|
|
int d=0; /* The modulo counter. */
|
2446 |
|
|
int x=0, y=0;
|
2447 |
|
|
/* x- and y-coordinates currently being */
|
2448 |
|
|
/* evaluated. */
|
2449 |
|
|
int d_old; /* Remembers previous value of d. */
|
2450 |
|
|
|
2451 |
|
|
plotpoint(0,0); /* Plot initial point. */
|
2452 |
|
|
while (x <= x_f)
|
2453 |
|
|
{
|
2454 |
|
|
d_old = d;
|
2455 |
|
|
d += y_f;
|
2456 |
|
|
if (d >= x_f)
|
2457 |
|
|
d -= x_f;
|
2458 |
|
|
x++;
|
2459 |
|
|
if (
|
2460 |
|
|
(
|
2461 |
|
|
(d == 0) && (d_old < x_f/2)
|
2462 |
|
|
)
|
2463 |
|
|
||
|
2464 |
|
|
(
|
2465 |
|
|
(d >= x_f/2)
|
2466 |
|
|
&&
|
2467 |
|
|
((d_old < x_f/2) || (d_old >= d))
|
2468 |
|
|
)
|
2469 |
|
|
)
|
2470 |
|
|
y++;
|
2471 |
|
|
plotpoint(x,y);
|
2472 |
|
|
}
|
2473 |
|
|
}
|
2474 |
|
|
\end{verbatim}
|
2475 |
|
|
\caption{First Attempt At A Raster Device Line Algorithm
|
2476 |
|
|
Using Rational Counting Techniques}
|
2477 |
|
|
\label{fig:crat0:sbla0:02}
|
2478 |
|
|
\end{figure}
|
2479 |
|
|
|
2480 |
|
|
There are a few efficiency refinements that can be made to
|
2481 |
|
|
the code in Figure \ref{fig:crat0:sbla0:02}, but overall
|
2482 |
|
|
it is a very efficient algorithm. Note that
|
2483 |
|
|
nearly all compilers will handle the integer
|
2484 |
|
|
division by two using a shift
|
2485 |
|
|
operation rather than a division.
|
2486 |
|
|
|
2487 |
|
|
We can however substantially simplify and economize the code of
|
2488 |
|
|
Figure \ref{fig:crat0:sbla0:02} by using the technique
|
2489 |
|
|
presented in Figures \ref{fig:crat0:sfdv0:fab0:03} and
|
2490 |
|
|
\ref{fig:crat0:sfdv0:fab0:04}, and this improved code is
|
2491 |
|
|
presented as Figure \ref{fig:crat0:sbla0:03}.
|
2492 |
|
|
|
2493 |
|
|
\begin{figure}
|
2494 |
|
|
\begin{verbatim}
|
2495 |
|
|
/* Draws a line from (0,0) to (x_f,y_f) on a raster */
|
2496 |
|
|
/* device. */
|
2497 |
|
|
|
2498 |
|
|
void bresenham_line(int x_f, int y_f)
|
2499 |
|
|
{
|
2500 |
|
|
int d=y_f; /* Position of the ideal line minus */
|
2501 |
|
|
/* the position of the line we are */
|
2502 |
|
|
/* drawing, in units of 1/x_f. The */
|
2503 |
|
|
/* initialization value is y_f because */
|
2504 |
|
|
/* the algorithm is looking one pixel */
|
2505 |
|
|
/* ahead in the x direction, so we */
|
2506 |
|
|
/* begin at x=1. */
|
2507 |
|
|
int x=0, y=0;
|
2508 |
|
|
/* x- and y-coordinates currently being */
|
2509 |
|
|
/* evaluated. */
|
2510 |
|
|
plotpoint(0,0); /* Plot initial point. */
|
2511 |
|
|
while (x <= x_f)
|
2512 |
|
|
{
|
2513 |
|
|
x++; /* We move to the right regardless. */
|
2514 |
|
|
if (d >= x_f/2)
|
2515 |
|
|
{
|
2516 |
|
|
/* The "U" choice. We must jump up a pixel */
|
2517 |
|
|
/* to keep up with the ideal line. */
|
2518 |
|
|
d += (y_f - x_f);
|
2519 |
|
|
y++; /* Jump up a pixel. */
|
2520 |
|
|
}
|
2521 |
|
|
else /* d < x_f/2 */
|
2522 |
|
|
{
|
2523 |
|
|
/* The "D" choice. Distance is not large */
|
2524 |
|
|
/* enough to jump up a pixel. */
|
2525 |
|
|
d += y_f;
|
2526 |
|
|
}
|
2527 |
|
|
plotpoint(x,y);
|
2528 |
|
|
}
|
2529 |
|
|
}
|
2530 |
|
|
\end{verbatim}
|
2531 |
|
|
\caption{Second Attempt At A Raster Device Line Algorithm
|
2532 |
|
|
Using Rational Counting Techniques}
|
2533 |
|
|
\label{fig:crat0:sbla0:03}
|
2534 |
|
|
\end{figure}
|
2535 |
|
|
|
2536 |
|
|
In order to understand the code of Figure \ref{fig:crat0:sbla0:03},
|
2537 |
|
|
it is helpful to view the problem in an alternate way.
|
2538 |
|
|
For any $x \in \vworkintset$, let
|
2539 |
|
|
$d$ be the distance between the position of the ideal line
|
2540 |
|
|
(characterized by $y = y_f x / x_f$) and
|
2541 |
|
|
the actual pixel which will be illuminated. It is easy to
|
2542 |
|
|
observe that:
|
2543 |
|
|
|
2544 |
|
|
\begin{itemize}
|
2545 |
|
|
\item When drawing a raster line, if one proceeds from
|
2546 |
|
|
$(x, y)$ to $(x+1, y)$ (i.e. makes the ``D'' choice),
|
2547 |
|
|
$d$ will increase by $y_f/x_f$.
|
2548 |
|
|
\item When drawing a raster line, if one proceeds from
|
2549 |
|
|
$(x,y)$ to $(x+1, y+1)$ (i.e. makes the ``U'' choice),
|
2550 |
|
|
$d$ will increase by $(y_f - x_f)/x_f$. (The increase
|
2551 |
|
|
of $y_f/x_f$ comes about because the ideal line proceeds
|
2552 |
|
|
upward from $x$ to $x+1$, while the decrease of $x_f/x_f = 1$
|
2553 |
|
|
comes about because the line being drawn jumps upward by one
|
2554 |
|
|
unit, thus tending to ``catch'' the ideal line.)
|
2555 |
|
|
\end{itemize}
|
2556 |
|
|
|
2557 |
|
|
The code of Figure \ref{fig:crat0:sbla0:03} implements the
|
2558 |
|
|
two observations above in a straightforward way. $d$ is maintained
|
2559 |
|
|
in units of $1/x_f$, and when ``U'' is chosen over ``D'' whenever
|
2560 |
|
|
the gap between the ideal line and the current row of pixels
|
2561 |
|
|
being drawn becomes too large.
|
2562 |
|
|
|
2563 |
|
|
The code in Figure \ref{fig:crat0:sbla0:03} does however contain logical
|
2564 |
|
|
and performance problems which should be corrected:
|
2565 |
|
|
|
2566 |
|
|
\begin{itemize}
|
2567 |
|
|
\item The test of $d$ against $x_f/2$ will perform as intended.
|
2568 |
|
|
For example, if $d=2$ and $x_f=5$, the test
|
2569 |
|
|
``\texttt{d >= x\_f/2}'' in the code will evaluate true
|
2570 |
|
|
although the actual condition is false. To correct this
|
2571 |
|
|
defect, the units of $d$ should be changed from
|
2572 |
|
|
$1/x_f$ to $1/(2 x_f)$.
|
2573 |
|
|
\item The quantity $y_f - x_f$ is calculated repeatedly. This
|
2574 |
|
|
calculation should be moved out of the \emph{while()} loop.
|
2575 |
|
|
\item The test against $x_f$ may be more economical if changed to
|
2576 |
|
|
a test against 0 (but this requires a different initialization
|
2577 |
|
|
assignment for $d$).
|
2578 |
|
|
\end{itemize}
|
2579 |
|
|
|
2580 |
|
|
Figure \ref{fig:crat0:sbla0:04} corrects these defects
|
2581 |
|
|
from Figure \ref{fig:crat0:sbla0:03}.
|
2582 |
|
|
Figure \ref{fig:crat0:sbla0:04} is essentially the Bresenham
|
2583 |
|
|
line algorithm, except that it only draws starting from the
|
2584 |
|
|
origin and will only draw a line with a slope
|
2585 |
|
|
$m = y_f/x_f \leq 1$.
|
2586 |
|
|
|
2587 |
|
|
\begin{figure}
|
2588 |
|
|
\begin{verbatim}
|
2589 |
|
|
/* Draws a line from (0,0) to (x_f,y_f) on a raster */
|
2590 |
|
|
/* device. */
|
2591 |
|
|
|
2592 |
|
|
void bresenham_line(int x_f, int y_f)
|
2593 |
|
|
{
|
2594 |
|
|
int d = 2 * y_f - x_f;
|
2595 |
|
|
/* Position of the ideal line minus */
|
2596 |
|
|
/* the position of the line we are */
|
2597 |
|
|
/* drawing, in units of 1/(2 * x_f). */
|
2598 |
|
|
/* Initialization value of 2 * y_f is */
|
2599 |
|
|
/* because algorithm is looking one */
|
2600 |
|
|
/* pixel ahead. Value of -x_f is from */
|
2601 |
|
|
/* shifting the midpoint test (the */
|
2602 |
|
|
/* "if" statement below) downward to a */
|
2603 |
|
|
/* test against zero. */
|
2604 |
|
|
int dD = 2 * y_f;
|
2605 |
|
|
int dU = dD - x_f;
|
2606 |
|
|
/* Amounts to add to d if "D" and "U" */
|
2607 |
|
|
/* pixels are chosen, respectively. */
|
2608 |
|
|
/* Calculated here outside of loop. */
|
2609 |
|
|
int x=0, y=0;
|
2610 |
|
|
/* x- and y-coordinates currently being */
|
2611 |
|
|
/* evaluated. */
|
2612 |
|
|
plotpoint(0,0); /* Plot initial point. */
|
2613 |
|
|
while (x <= x_f)
|
2614 |
|
|
{
|
2615 |
|
|
x++; /* We move to the right regardless. */
|
2616 |
|
|
if (d >= 0)
|
2617 |
|
|
{
|
2618 |
|
|
/* The "U" choice. We must jump up a pixel */
|
2619 |
|
|
/* to keep up with the ideal line. */
|
2620 |
|
|
d += dU;
|
2621 |
|
|
y++; /* Jump up a pixel. */
|
2622 |
|
|
}
|
2623 |
|
|
else /* d < 0 */
|
2624 |
|
|
{
|
2625 |
|
|
/* The "D" choice. Distance is not large */
|
2626 |
|
|
/* enough to jump up a pixel. */
|
2627 |
|
|
d += dD;
|
2628 |
|
|
}
|
2629 |
|
|
plotpoint(x,y);
|
2630 |
|
|
}
|
2631 |
|
|
}
|
2632 |
|
|
\end{verbatim}
|
2633 |
|
|
\caption{Third Attempt At A Raster Device Line Algorithm
|
2634 |
|
|
Using Rational Counting Techniques}
|
2635 |
|
|
\label{fig:crat0:sbla0:04}
|
2636 |
|
|
\end{figure}
|
2637 |
|
|
|
2638 |
|
|
|
2639 |
|
|
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
|
2640 |
|
|
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
|
2641 |
|
|
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
|
2642 |
|
|
\section{Authors And Acknowledgements}
|
2643 |
|
|
%Section tag: ACK0
|
2644 |
|
|
This chapter was primarily written by
|
2645 |
|
|
\index{Ashley, David T.} David T. Ashley
|
2646 |
|
|
\cite{bibref:i:daveashley}.
|
2647 |
|
|
|
2648 |
|
|
We would like to gratefully acknowledge the assistance of
|
2649 |
|
|
\index{Falconer, Chuck B.} Chuck B. Falconer \cite{bibref:i:chuckbfalconer},
|
2650 |
|
|
\index{Hoffmann, Klaus} Klaus Hoffmann \cite{bibref:i:klaushoffmann},
|
2651 |
|
|
\index{Larkin, John} John Larkin \cite{bibref:i:johnlarkin},
|
2652 |
|
|
\index{Smith, Thad} Thad Smith \cite{bibref:i:thadsmith},
|
2653 |
|
|
and
|
2654 |
|
|
\index{Voipio, Tauno} Tauno Voipio \cite{bibref:i:taunovoipio}
|
2655 |
|
|
for insight into rational counting approaches, contributed via the
|
2656 |
|
|
\texttt{sci.math} \cite{bibref:n:scimathnewsgroup}
|
2657 |
|
|
and
|
2658 |
|
|
\texttt{comp.arch.embedded} \cite{bibref:n:comparchembedded}
|
2659 |
|
|
newsgroups.
|
2660 |
|
|
|
2661 |
|
|
|
2662 |
|
|
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
|
2663 |
|
|
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
|
2664 |
|
|
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
|
2665 |
|
|
\section{Exercises}
|
2666 |
|
|
%Section tag: EXE0
|
2667 |
|
|
|
2668 |
|
|
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
|
2669 |
|
|
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
|
2670 |
|
|
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
|
2671 |
|
|
\subsection[\protect\mbox{\protect$h/2^q$} and \protect\mbox{\protect$2^q/k$} Rational Linear Approximation]
|
2672 |
|
|
{\protect\mbox{\protect\boldmath$h/2^q$} and \protect\mbox{\protect\boldmath$2^q/k$} Rational Linear Approximation}
|
2673 |
|
|
|
2674 |
|
|
\begin{vworkexercisestatement}
|
2675 |
|
|
\label{exe:crat0:sexe0:a01}
|
2676 |
|
|
Derive equations analogous to (\ref{eq:crat0:shqq0:dph0:03})
|
2677 |
|
|
and (\ref{eq:crat0:shqq0:dph0:07}) if $r_A$ is chosen
|
2678 |
|
|
without rounding, i.e.
|
2679 |
|
|
$h=\lfloor r_I 2^q \rfloor$ and therefore
|
2680 |
|
|
$r_A=\lfloor r_I 2^q \rfloor/2^q$.
|
2681 |
|
|
\end{vworkexercisestatement}
|
2682 |
|
|
\vworkexercisefooter{}
|
2683 |
|
|
|
2684 |
|
|
\begin{vworkexercisestatement}
|
2685 |
|
|
\label{exe:crat0:sexe0:a02}
|
2686 |
|
|
Derive equations analogous to (\ref{eq:crat0:shqq0:dph0:03})
|
2687 |
|
|
and (\ref{eq:crat0:shqq0:dph0:07}) if
|
2688 |
|
|
$z$ is chosen for rounding with the midpoint case rounded
|
2689 |
|
|
down, i.e. $z=2^{q-1}-1$, and applied as in
|
2690 |
|
|
(\ref{eq:crat0:sint0:01}).
|
2691 |
|
|
\end{vworkexercisestatement}
|
2692 |
|
|
\vworkexercisefooter{}
|
2693 |
|
|
|
2694 |
|
|
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
|
2695 |
|
|
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
|
2696 |
|
|
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
|
2697 |
|
|
\subsection{Rational Counting}
|
2698 |
|
|
|
2699 |
|
|
|
2700 |
|
|
\begin{vworkexercisestatement}
|
2701 |
|
|
\label{exe:crat0:sexe0:01}
|
2702 |
|
|
For Algorithm \ref{alg:crat0:sfdv0:01a},
|
2703 |
|
|
assume that one chooses $K_1 > K_3 - K_2$ (in contradiction to the
|
2704 |
|
|
restrictions in Figure \ref{fig:crat0:sfdv0:01a}).
|
2705 |
|
|
Derive a result similar to Lemma \ref{lem:crat0:sfdv0:sprc0:01}
|
2706 |
|
|
for the number of base subroutine invocations in which
|
2707 |
|
|
``\texttt{A()}'' is run before it is
|
2708 |
|
|
\emph{not} run for the first time.
|
2709 |
|
|
\end{vworkexercisestatement}
|
2710 |
|
|
\vworkexercisefooter{}
|
2711 |
|
|
|
2712 |
|
|
\begin{vworkexercisestatement}
|
2713 |
|
|
\label{exe:crat0:sexe0:02}
|
2714 |
|
|
This will be the $\epsilon$ lemma proof.
|
2715 |
|
|
\end{vworkexercisestatement}
|
2716 |
|
|
\vworkexercisefooter{}
|
2717 |
|
|
|
2718 |
|
|
\begin{vworkexercisestatement}
|
2719 |
|
|
\label{exe:crat0:sexe0:03}
|
2720 |
|
|
Rederive appropriate results similar to
|
2721 |
|
|
Lemma \ref{lem:crat0:sfdv0:sprc0:04} in the case where
|
2722 |
|
|
$\gcd(K_2, K_4) > 1$.
|
2723 |
|
|
\end{vworkexercisestatement}
|
2724 |
|
|
\vworkexercisefooter{}
|
2725 |
|
|
|
2726 |
|
|
\begin{vworkexercisestatement}
|
2727 |
|
|
\label{exe:crat0:sexe0:04}
|
2728 |
|
|
Rederive appropriate results similar to
|
2729 |
|
|
Lemma \ref{lem:crat0:sfdv0:sprc0:04} in the case where
|
2730 |
|
|
$K_1 \neq 0$.
|
2731 |
|
|
\end{vworkexercisestatement}
|
2732 |
|
|
\vworkexercisefooter{}
|
2733 |
|
|
|
2734 |
|
|
\begin{vworkexercisestatement}
|
2735 |
|
|
\label{exe:crat0:sexe0:05}
|
2736 |
|
|
Rederive appropriate results similar to
|
2737 |
|
|
Lemma \ref{lem:crat0:sfdv0:sprc0:04} in the case where
|
2738 |
|
|
$\gcd(K_2, K_4) > 1$ and $K_1 \neq 0$.
|
2739 |
|
|
\end{vworkexercisestatement}
|
2740 |
|
|
\vworkexercisefooter{}
|
2741 |
|
|
|
2742 |
|
|
\begin{vworkexercisestatement}
|
2743 |
|
|
\label{exe:crat0:sexe0:06}
|
2744 |
|
|
For Lemma \ref{lem:crat0:sfdv0:sprc0:04},
|
2745 |
|
|
complete the missing proof:
|
2746 |
|
|
show that if $\gcd(K_2, K_4) = 1$, no algorithm can
|
2747 |
|
|
lead to a tighter bound than (\ref{eq:lem:crat0:sfdv0:sprc0:04:01}).
|
2748 |
|
|
\textbf{Hint:} start with the observation
|
2749 |
|
|
that with
|
2750 |
|
|
$\gcd(K_2, K_4) = 1$, $n K_2 \bmod K_4$ will attain every value in
|
2751 |
|
|
the set $\{ 0, \ldots , K_4-1 \}$.
|
2752 |
|
|
\end{vworkexercisestatement}
|
2753 |
|
|
\vworkexercisefooter{}
|
2754 |
|
|
|
2755 |
|
|
\begin{vworkexercisestatement}
|
2756 |
|
|
\label{exe:crat0:sexe0:07}
|
2757 |
|
|
For Lemma \ref{lem:crat0:sfdv0:sprc0:03},
|
2758 |
|
|
show that if $K_1=0$, the number of initial invocations
|
2759 |
|
|
of the base subroutine before ``\texttt{A()}'' is first
|
2760 |
|
|
called is in the set specified in
|
2761 |
|
|
(\ref{eq:lem:crat0:sfdv0:sprc0:03:01}).
|
2762 |
|
|
\end{vworkexercisestatement}
|
2763 |
|
|
\vworkexercisefooter{}
|
2764 |
|
|
|
2765 |
|
|
\begin{vworkexercisestatement}
|
2766 |
|
|
\label{exe:crat0:sexe0:08}
|
2767 |
|
|
Develop other techniques to correct the state upset vulnerability
|
2768 |
|
|
of Algorithm \ref{alg:crat0:sfdv0:01a} besides
|
2769 |
|
|
the technique illustrated in
|
2770 |
|
|
Figure \ref{fig:crat0:sfdv0:sprc0:01}.
|
2771 |
|
|
\end{vworkexercisestatement}
|
2772 |
|
|
\vworkexercisefooter{}
|
2773 |
|
|
|
2774 |
|
|
\begin{vworkexercisestatement}
|
2775 |
|
|
\label{exe:crat0:sexe0:09}
|
2776 |
|
|
Show for Example \ref{ex:crat0:sfdv0:sprc1:01} that integers of at least
|
2777 |
|
|
27 bits are required.
|
2778 |
|
|
\end{vworkexercisestatement}
|
2779 |
|
|
\vworkexercisefooter{}
|
2780 |
|
|
|
2781 |
|
|
\begin{vworkexercisestatement}
|
2782 |
|
|
\label{exe:crat0:sexe0:10}
|
2783 |
|
|
Prove Lemma \ref{lem:crat0:sfdv0:sprc1:02}.
|
2784 |
|
|
\end{vworkexercisestatement}
|
2785 |
|
|
\vworkexercisefooter{}
|
2786 |
|
|
|
2787 |
|
|
\begin{vworkexercisestatement}
|
2788 |
|
|
\label{exe:crat0:sexe0:12}
|
2789 |
|
|
Prove Lemma \ref{lem:crat0:sfdv0:sprc1:04}.
|
2790 |
|
|
\end{vworkexercisestatement}
|
2791 |
|
|
\vworkexercisefooter{}
|
2792 |
|
|
|
2793 |
|
|
\begin{vworkexercisestatement}
|
2794 |
|
|
\label{exe:crat0:sexe0:13}
|
2795 |
|
|
Define the term \emph{steady state} as used in
|
2796 |
|
|
Lemma \ref{lem:crat0:sfdv0:sprc1:04} in terms of
|
2797 |
|
|
set membership of the \texttt{state} variable.
|
2798 |
|
|
\end{vworkexercisestatement}
|
2799 |
|
|
\vworkexercisefooter{}
|
2800 |
|
|
|
2801 |
|
|
\begin{vworkexercisestatement}
|
2802 |
|
|
\label{exe:crat0:sexe0:14}
|
2803 |
|
|
For Algorithm \ref{alg:crat0:sfdv0:01a}, devise examples of anomalous behavior due to
|
2804 |
|
|
race conditions that may occur if $K_2$ and/or $K_4$ are set in a process
|
2805 |
|
|
which is asynchronous with respect to the process which implements the
|
2806 |
|
|
rational counting algorithm if mutual exclusion protocol is not
|
2807 |
|
|
implemented.
|
2808 |
|
|
\end{vworkexercisestatement}
|
2809 |
|
|
\vworkexercisefooter{}
|
2810 |
|
|
|
2811 |
|
|
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
|
2812 |
|
|
\vfill
|
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|
|
\noindent\begin{figure}[!b]
|
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|
|
\noindent\rule[-0.25in]{\textwidth}{1pt}
|
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|
|
\begin{tiny}
|
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|
|
\begin{verbatim}
|
2817 |
|
|
$RCSfile: c_rat0.tex,v $
|
2818 |
|
|
$Source: /home/dashley/cvsrep/e3ft_gpl01/e3ft_gpl01/dtaipubs/esrgubka/c_rat0/c_rat0.tex,v $
|
2819 |
|
|
$Revision: 1.28 $
|
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|
|
$Author: dtashley $
|
2821 |
|
|
$Date: 2004/02/22 19:27:48 $
|
2822 |
|
|
\end{verbatim}
|
2823 |
|
|
\end{tiny}
|
2824 |
|
|
\noindent\rule[0.25in]{\textwidth}{1pt}
|
2825 |
|
|
\end{figure}
|
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|
|
|
2827 |
|
|
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
|
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|
|
% $Log: c_rat0.tex,v $
|
2829 |
|
|
% Revision 1.28 2004/02/22 19:27:48 dtashley
|
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|
|
% Edits.
|
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|
|
%
|
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|
|
% Revision 1.27 2004/02/22 15:01:53 dtashley
|
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|
|
% Edits.
|
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|
|
%
|
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|
|
% Revision 1.26 2003/12/06 17:48:49 dtashley
|
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|
|
% Final edits before move back to SourceForge.
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|
|
%
|
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|
|
% Revision 1.25 2003/04/08 01:21:16 dtashley
|
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|
|
% Checkin after major ripup to mechanism for documenting algorithms.
|
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|
|
%
|
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|
|
% Revision 1.24 2003/04/07 09:38:23 dtashley
|
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|
|
% Safety checkin before major tearup with algorithms.
|
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|
|
%
|
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|
|
% Revision 1.23 2003/04/04 04:05:40 dtashley
|
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|
|
% Safety checkin before another major edit.
|
2846 |
|
|
%
|
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|
|
% Revision 1.22 2003/04/03 19:49:36 dtashley
|
2848 |
|
|
% Global corrections to typeface of "gcd" made as per Jan-Hinnerk Reichert's
|
2849 |
|
|
% recommendation.
|
2850 |
|
|
%
|
2851 |
|
|
% Revision 1.21 2003/04/03 19:33:13 dtashley
|
2852 |
|
|
% Substantial edits. Safety checkin. Preparing to make corrections to
|
2853 |
|
|
% gcd typeface pointed out my Jan-Hinnerk Reichert.
|
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|
|
%
|
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|
|
% Revision 1.20 2003/04/02 08:21:16 dtashley
|
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|
|
% Substantial edits, safety checkin.
|
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|
|
%
|
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|
|
% Revision 1.19 2003/03/30 05:37:20 dtashley
|
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|
|
% Evening safety checkin. Substantial edits.
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|
|
%
|
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|
|
% Revision 1.18 2003/03/28 07:24:16 dtashley
|
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|
|
% Safety checkin, substantial edits.
|
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|
|
%
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|
|
% Revision 1.17 2003/03/25 05:31:40 dtashley
|
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|
|
% Substantial edits, safety checkin.
|
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|
|
%
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|
|
% Revision 1.16 2003/03/21 06:34:54 dtashley
|
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|
% Major revisions. Safety checkin.
|
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|
|
%
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|
|
% Revision 1.15 2003/03/18 06:20:48 dtashley
|
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|
|
% Substantial edits, safety checkin.
|
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|
|
%
|
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|
|
% Revision 1.14 2003/03/13 06:28:36 dtashley
|
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|
|
% Substantial progress, edits.
|
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|
|
%
|
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|
|
% Revision 1.13 2003/03/08 04:11:19 dtashley
|
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|
|
% Friday evening safety checkin.
|
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|
|
%
|
2879 |
|
|
% Revision 1.12 2003/03/05 02:37:34 dtashley
|
2880 |
|
|
% Safety checkin before major edits.
|
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|
|
%
|
2882 |
|
|
% Revision 1.11 2003/03/03 23:50:44 dtashley
|
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|
|
% Substantial edits. Safety checkin.
|
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|
|
%
|
2885 |
|
|
% Revision 1.10 2002/04/27 00:21:04 dtashley
|
2886 |
|
|
% Substantial edits--preparing for review.
|
2887 |
|
|
%
|
2888 |
|
|
% Revision 1.9 2002/04/26 03:47:22 dtashley
|
2889 |
|
|
% Substantial edits.
|
2890 |
|
|
%
|
2891 |
|
|
% Revision 1.8 2002/04/23 02:58:53 dtashley
|
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|
|
% Edits.
|
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|
|
%
|
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|
|
% Revision 1.7 2002/04/22 07:27:32 dtashley
|
2895 |
|
|
% Preparing to work on desktop computer again.
|
2896 |
|
|
%
|
2897 |
|
|
% Revision 1.6 2002/04/22 04:47:30 dtashley
|
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|
|
% Preparing to work on laptop.
|
2899 |
|
|
%
|
2900 |
|
|
% Revision 1.5 2002/04/22 02:11:54 dtashley
|
2901 |
|
|
% Preparing to resume work on desktop.
|
2902 |
|
|
%
|
2903 |
|
|
% Revision 1.4 2002/04/22 00:14:56 dtashley
|
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|
|
% Edits before resuming work on desktop.
|
2905 |
|
|
%
|
2906 |
|
|
% Revision 1.3 2002/04/21 23:05:09 dtashley
|
2907 |
|
|
% Version control information straightened out.
|
2908 |
|
|
%
|
2909 |
|
|
%End of file C_RAT0.TEX
|