A fast and provably bounded failure analysis of memory circuits in high dimensions

Wei Wu, Fang Gong, Gengsheng Chen, Lei He
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引用次数: 24

Abstract

Memory circuits have become important components in today's IC designs which demands extremely high integration density and reliability under process variations. The most challenging task is how to accurately estimate the extremely small failure probability of memory circuits where the circuit failure is a “rare event”. Classic importance sampling has been widely recognized to be inaccurate and unreliable in high dimensions. To address this issue, we propose a fast statistical analysis to estimate the probability of rare events in high dimensions and prove that the estimation is always bounded. This methodology has been successfully applied to the failure analysis of memory circuits with hundreds of variables, which was considered to be very intractable before. To the best of our knowledge, this is the first work that successfully solves high dimensional “rare event” problems without using expensive Monte Carlo and classic importance sampling methods. Experiments on a 54-dimensional SRAM cell circuit show that the proposed approach achieves 1150x speedup over Monte Carlo without compromising any accuracy. It also outperforms the classification based method (e.g., Statistical Blockade) by 204x and existing importance sampling method (e.g., Spherical Sampling) by 5x. On another 117-dimension circuit, the proposed approach yields 364x speedup over Monte Carlo while existing importance sampling methods completely fail to provide reasonable accuracy.
高维存储电路的快速、可证明的有界失效分析
存储电路已成为当今集成电路设计的重要组成部分,它要求极高的集成密度和工艺变化下的可靠性。其中最具挑战性的任务是如何准确估计存储器电路的极小故障概率,而电路故障是“罕见事件”。传统的重要性抽样在高维情况下是不准确和不可靠的。为了解决这个问题,我们提出了一种快速的统计分析方法来估计高维罕见事件的概率,并证明了估计总是有界的。该方法已成功地应用于数百变量存储电路的失效分析,这在以前被认为是非常棘手的问题。据我们所知,这是第一个不使用昂贵的蒙特卡罗和经典重要抽样方法成功解决高维“罕见事件”问题的工作。在54维SRAM单元电路上的实验表明,该方法在不影响任何精度的情况下,比蒙特卡罗方法实现了1150倍的加速。它也比基于分类的方法(如统计封锁)高出204倍,比现有的重要性抽样方法(如球面抽样)高出5倍。在另一个117维电路中,所提出的方法比蒙特卡罗方法的加速速度提高了3664倍,而现有的重要性采样方法完全无法提供合理的精度。
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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