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A Statistical Diagnosis Approach for Analyzing Design–Silicon Timing Mismatch

机译:一种统计诊断方法,用于分析设计-硅时序失配

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Explaining the mismatch between predicted timing behavior from modeling and simulation, and the observed timing behavior measured on silicon chips can be very challenging. Given a list of potential sources, the mismatch can be the aggregate result caused by some of them both individually and collectively, resulting in a very large search space. Furthermore, observed data are always corrupted by some unknown statistical random noises. In this paper, we examine how trying to explain the mismatch observed on silicon can be classified as an ill-posed problem, where ill posed means that the solution may not be unique or stable. Thus, a small change in the observed response can have a large change in the predicted solution. To solve ill-posed problems, a statistical learning theory uses a principle called regularization. This paper proposes using a statistical learning method called support vector (SV) analysis to statistically analyze all known sources of uncertainty with the objective to rank which sources contribute the most to the observed mismatch. Experimental results are presented under different error assumption models to compare two kinds of SV ranking approaches to four other ranking approaches, where some use the idea of regularization and others do not. This paper is concluded by showing a self cross-validation approach to validate the ranking results when there is no true ranking available, as the case with actual silicon.
机译:解释建模和仿真预测的时序行为与在硅芯片上测得的时序行为之间的不匹配可能非常具有挑战性。给定一个潜在来源列表,不匹配可能是其中一些单独或共同导致的合计结果,从而导致很大的搜索空间。此外,观察到的数据总是被一些未知的统计随机噪声所破坏。在本文中,我们检查了如何解释在硅上观察到的不匹配现象可以归类为不适定问题,其中不适定意味着解决方案可能不是唯一的或不稳定的。因此,观察到的响应中的小变化可能会导致预测解中的大变化。为了解决不适定的问题,统计学习理论使用称为正则化的原理。本文建议使用一种称为支持向量(SV)分析的统计学习方法,对所有已知不确定性源进行统计分析,以对哪些源对观察到的失配贡献最大的目标进行排名。在不同的误差假设模型下给出了实验结果,以将两种SV排序方法与其他四种排序方法进行比较,其中一些使用正则化思想,而另一些则不使用正则化思想。本文的结论是通过展示一种自交叉验证方法来验证排名结果,当没有真正的排名可用时(如实际硅)。

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