一种利用特定应用统计信息的精确建模方法及其在SRAM产量估算中的应用

Hidetoshi Matsuoka, Hiroshi Ikeda, H. Higuchi, Yoshinori Tomita
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引用次数: 1

摘要

本文提出了一种利用特定应用物理信息构建模型的新方法,并介绍了其在SRAM成品率计算中的应用。从过去的模拟结果中自动提取物理信息作为统计分布。实验结果表明,该方法比非建模方法速度提高了700倍,比传统建模方法速度提高了10倍以上。它只需要5.3个样本就可以建立一个有21个系数的五阶全交叉项多项式,并且不存在过拟合和奇异矩阵问题。这种建模方法可以作为使用特定于应用程序的物理信息创建模型的通用方法。
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An accurate modeling method utilizing application-specific statistical information and its application to SRAM yield estimation
In this paper, we propose a new model construction method utilizing application specific physical information and present its application to SRAM yield calculation. The physical information is extracted as statistical distributions from past simulation results automatically. Experimental results show our method achieves 700x speed up over non modeling method and more than 10x speed up over the conventional modeling method. It requires only 5.3 samples to model a fifth order full cross term polynomial with 21 coefficients and is free from over-fitting and singular matrix problem. This modeling method can be a general approach to create models with application specific physical information.
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