二次延迟模型参数化统计时序分析的自适应随机配置方法

Yi Wang, Xuan Zeng, J. Tao, Hengliang Zhu, Xu Luo, Changhao Yan, W. Cai
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引用次数: 7

摘要

本文提出了一种基于块的统计静态时序分析(SSTA)的自适应随机配置方法。提出了一种基于齐次混沌展开的基于二次多项式建模的门和互连延迟的自适应SSTA算法。为了在时序分析中逼近全随机空间中的关键原子算子MAX,该方法考虑不同的输入条件,自适应地从一组随机搭配方法中选择最优算法。与现有的随机配置方法(包括降维技术和稀疏网格技术)相比,在相同的计算时间阶下,该方法的精度提高了10倍。与矩匹配方法相比,该算法在精度上也有很大提高。与在ISCAS85基准电路上进行的1万次蒙特卡罗模拟结果相比,该方法的均值和方差误差小于1%,速度提高近100倍。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Adaptive Stochastic Collocation Method (ASCM) for Parameterized Statistical Timing Analysis with Quadratic Delay Model
In this paper, we propose an adaptive stochastic collocation method for block-based statistical static timing analysis (SSTA). A novel adaptive method is proposed to perform SSTA with delays of gates and interconnects modeled by quadratic polynomials based on homogeneous chaos expansion. In order to approximate the key atomic operator MAX in the full random space during timing analysis, the proposed method adaptively chooses the optimal algorithm from a set of stochastic collocation methods by considering different input conditions. Compared with the existing stochastic collocation methods, including the one using dimension reduction technique and the one using sparse grid technique, the proposed method has 10times improvements in the accuracy while using the same order of computation time. The proposed algorithm also show great improvement in accuracy compared with a moment matching method. Compared with the 10,000 Monte Carlo simulations on ISCAS85 benchmark circuits, the results of the proposed method show less than 1% error in the mean and variance, and nearly 100times speeds up.
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