Statistical timing analysis using bounds and selective enumeration

TAU '02 Pub Date : 2003-09-04 DOI:10.1145/589411.589417
A. Agarwal, D. Blaauw, V. Zolotov, S. Vrudhula
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引用次数: 58

Abstract

The growing impact of within-die process variation has created the need for statistical timing analysis, where gate delays are modeled as random variables. Statistical timing analysis has traditionally suffered from exponential run time complexity with circuit size, due to the dependencies created by reconverging paths in the circuit. In this paper, we propose a new approach to statistical timing analysis which uses statistical bounds and selective enumeration to refine these bounds. First, we provide a formal definition of the statistical delay of a circuit and derive a statistical timing analysis method from this definition. Since this method for finding the exact statistical delay has exponential run time complexity with circuit size, we also propose a new method for computing statistical bounds which has linear run time complexity. We prove the correctness of the proposed bounds. Since we provide both a lower and upper bound on the true statistical delay, we can determine the quality of the bounds. If the computed bounds are not sufficiently close to each other, we propose the use of a heuristic to iteratively improve the bounds using selective enumeration of the sample space with additional run time. The proposed methods were implemented and tested on benchmark circuits. The results demonstrate that the proposed bounds have only a small error, which could be further reduced using selective enumeration with modest additional run time.
使用边界和选择性枚举的统计时间分析
模具内工艺变化的影响越来越大,因此需要进行统计时序分析,其中浇口延迟被建模为随机变量。由于电路中再收敛路径产生的依赖性,统计时序分析传统上受到电路大小的指数级运行时间复杂度的影响。在本文中,我们提出了一种新的统计时序分析方法,该方法使用统计边界和选择性枚举来细化这些边界。首先,给出了电路统计时延的形式化定义,并由此导出了一种统计时序分析方法。由于这种计算精确统计延迟的方法的运行时间复杂度随电路大小呈指数增长,我们还提出了一种计算具有线性运行时间复杂度的统计边界的新方法。我们证明了所提边界的正确性。由于我们提供了真实统计延迟的下界和上界,我们可以确定边界的质量。如果计算的边界彼此不够接近,我们建议使用启发式方法,通过使用额外运行时间的样本空间的选择性枚举来迭代地改进边界。所提出的方法在基准电路上进行了实现和测试。结果表明,所提出的边界只有很小的误差,使用选择性枚举可以在适当的额外运行时间内进一步减小误差。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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