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首页> 外文期刊>IEEE Transactions on Computer-Aided Design of Integrated Circuits and Systems >Analytical estimation of signal transition activity from word-level statistics
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Analytical estimation of signal transition activity from word-level statistics

机译:从字级统计分析估计信号过渡活动

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摘要

Presented in this paper is a novel methodology to determine the average number of transitions in a signal from its word-level statistical description. The proposed methodology employs: (1) high-level signal statistics, (2) a statistical signal generation model, and (3) the signal encoding (or number representation) to estimate the transition activity for that signal. In particular, the signal statistics employed are mean (/spl mu/), variance (/spl sigma//sup 2/), and autocorrelation (/spl rho/). The signal generation models considered are autoregressive moving-average (ARMA) models. The signal encoding includes unsigned, one's complement, two's complement, and sign-magnitude representations. First, the foilowing exact relation between the transition activity (t/sub i/), bit-level probability (p/sub i/), and the bit-level autocorrelation (/spl rho//sub i/) for a single bit signal b/sub i/ is derived: t/sub i/=2p/sub i/(1-p/sub i/)(1-/spl rho//sub i/) (1). Next, two techniques are presented which employ the word-level signal statistics, the signal generation model, and the signal encoding to determine /spl rho//sub i/ (i=0, /spl middot//spl middot//spl middot/, B-1) in (1) for a B-bit signal. The word-level transition activity T is obtained as a summation over t/sub i/ (i=0,/spl middot//spl middot//spl middot/, B-1); where t/sub i/ is obtained from (1). Simulation results for 16-bit signals generated via ARMA models indicate that an error in T of less than 2% can be achieved. Employing AR(1) and MA(10) models for audio and video signals, the proposed method results in errors of less than 10%. Both analysis and simulations indicate the sign-magnitude representation to have lower transition activity than unsigned, ones' complement, or two's complement. Finally, the proposed method is employed in estimation of transition activity in digital signal processing (DSP) hardware. Signal statistics are propagated through various DSP operators such as adders, multipliers, multiplexers, and delays, and then the transition activity T is calculated. Simulation results with ARMA inputs show that errors less than 4% are achievable in the estimation of the total transition activity in the filters. Furthermore, the transpose form structure is shown to have fewer signal transitions as compared to the direct form structure for the same input.
机译:本文提出了一种新颖的方法,可以根据其字级统计描述确定信号中的平均跃迁数。所提出的方法采用:(1)高级信号统计,(2)统计信号生成模型,以及(3)信号编码(或数字表示),以估计该信号的跃迁活动。特别地,所采用的信号统计是平均值(/ spl mu /),方差(/ spl sigma // sup 2 /)和自相关(/ spl rho /)。所考虑的信号生成模型是自回归移动平均(ARMA)模型。信号编码包括无符号,一个补码,两个补码和符号幅度表示。首先,对于单个位,过渡活动(t / sub i /),位级概率(p / sub i /)和位级自相关(/ spl rho // sub i /)之间的精确关系导出信号b / sub i /:t / sub i / = 2p / sub i /(1-p / sub i /)(1- / spl rho // sub i /)(1)。接下来,提出两种技术,它们利用词级信号统计,信号生成模型和信号编码来确定/ spl rho // sub i /(i = 0,/ spl middot // spl middot // spl middot /,(1)中的B-1)表示B位信号。以t / sub i /(i = 0,/ spl middot // spl middot // spl middot /,B-1)的总和获得单词级转换活动T;其中t / sub i /是从(1)获得的。通过ARMA模型生成的16位信号的仿真结果表明,可以实现T误差小于2%。利用AR(1)和MA(10)模型来处理音频和视频信号,所提出的方法产生的误差小于10%。分析和仿真均表明,符号幅度表示的过渡活动性低于无符号,“ 1”的补码或“ 2”的补码。最后,将所提出的方法用于数字信号处理(DSP)硬件中的过渡活动估计。信号统计信息通过加法器,乘法器,多路复用器和延迟器之类的各种DSP运算符传播,然后计算转换活动T。 ARMA输入的仿真结果表明,在估计滤波器中的总过渡活动时,可以实现小于4%的误差。此外,与相同输入的直接形式结构相比,转置形式结构显示具有更少的信号转换。

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