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Hybrid Importance Splitting Importance Sampling Methodology for Fast Yield Analysis of Memory Designs

机译:用于存储器设计快速成品率分析的混合重要性分解重要抽样方法

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Rare fail event estimation methodologies suffer from inefficiency when dealing with high dimensional design space problems. Importance splitting overcomes this complexity by recursively computing the rare fail probability as a product of larger conditional probabilities in the 1-D performance metric space. Its efficiency, however, drops as the events become rarer. In this work, we propose a novel hybrid Importance Sampling Importance Splitting methodology for purposes of rare fail event estimation of high-dimensional memory designs. In this context, we propose and evaluate two methods for unbiasing the estimate, a geometric ratio-based and an Importance Sampling-based methodology. We demonstrate 3–5X reduction in runtime for both theoretical and 16nm SRAM design applications compared to traditional Importance Splitting approaches.
机译:罕见的故障事件估计方法在处理高维设计空间问题时效率低下。重要性拆分通过递归计算罕见失败概率作为一维性能度量空间中较大条件概率的乘积,从而克服了这种复杂性。但是,随着事件变得越来越少,其效率会下降。在这项工作中,我们提出了一种新颖的混合重要性抽样重要性拆分方法,以用于对高维内存设计进行罕见的失败事件估计。在这种情况下,我们提出并评估了两种不偏倚估计的方法,一种是基于几何比率的方法,另一种是基于重要性抽样的方法。与传统的重要性拆分方法相比,我们证明了理论和16nm SRAM设计应用的运行时间均可减少3-5倍。

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