Process-Variation Statistical Modeling for VLSI Timing Analysis

Jui-Hsiang Liu, Jun-Kuei Zeng, Ai-Syuan Hong, Lumdo Chen, C. C. Chen
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引用次数: 10

Abstract

SSTA requires accurate statistical distribution models of non-Gaussian random variables of process parameters and timing variables. Traditional quadratic Gaussian model has been shown to have some serious limitations. In particular, it limits the range of skewness that can be modeled and it can not model the kurtosis. In this paper, we presented complex-coefficient quadratic Gaussian polynomial model and higher order Gaussian polynomial model to resolve these difficulties. Experimental results show how our methods and new algorithms expose some enhancements in both accuracy and versatility.
VLSI时序分析的过程变化统计建模
SSTA需要精确的过程参数和时序变量的非高斯随机变量的统计分布模型。传统的二次高斯模型具有严重的局限性。特别是,它限制了可以建模的偏度范围,不能对峰度进行建模。本文提出了复系数二次高斯多项式模型和高阶高斯多项式模型来解决这些问题。实验结果表明,我们的方法和新算法在准确性和通用性方面都有一定的提高。
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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