在存在过程变化的情况下准确估计矢量相关泄漏功率

Romana Fernandes, R. Vemuri
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引用次数: 8

摘要

随着运行时泄漏功耗(约占总功率的55%)的重要性日益增加,有必要准确地估计它不仅是输入向量的函数,而且是过程参数的函数。最大向量对应的泄漏功率是运行时泄漏的上界,是可靠性的度量。在这项工作中,我们解决了在阈值电压、临界尺寸和掺杂浓度等工艺参数变化的情况下,准确估计最大运行时泄漏功率的概率分布的问题。同时考虑了亚阈值电流和栅极泄漏电流。在随机过程变化的影响下,提出了一种启发式方法来确定引起最大泄漏功率的向量。然后,通过将各个标准单元在各自输入电平上的对数正态漏电流分布相加,该矢量用于估计电路总漏电流的对数正态分布。该方法能够准确估计ISCAS-85基准电路的泄漏平均值、标准差和概率密度函数(PDF)。与近穷举随机向量检验相比,该方法的均值和标准差的平均误差分别为1.32%和1.41%。
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Accurate estimation of vector dependent leakage power in the presence of process variations
With the increasing importance of run-time leakage power dissipation (around 55% of total power), it has become necessary to accurately estimate it not only as a function of input vectors but also as a function of process parameters. Leakage power corresponding to the maximum vector presents itself as a higher bound for run-time leakage and is a measure of reliability. In this work, we address the problem of accurately estimating the probabilistic distribution of the maximum runtime leakage power in the presence of variations in process parameters such as threshold voltage, critical dimensions and doping concentration. Both sub-threshold and gate leakage current are considered. A heuristic approach is proposed to determine the vector that causes the maximum leakage power under the influence of random process variations. This vector is then used to estimate the lognormal distribution of the total leakage current of the circuit by summing up the lognormal leakage current distributions of the individual standard cells at their respective input levels. The proposed method has been effective in accurately estimating the leakage mean, standard deviation and probability density function (PDF) of ISCAS-85 benchmark circuits. The average errors of our method compared with near exhaustive random vector testing for mean and standard deviation are 1.32% and 1.41% respectively.
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