首页> 外文会议>Quality Electronic Design (ISQED), 2010 >Accurate statistical soft error rate (SSER) analysis using a quasi-Monte Carlo framework with quality cell models
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Accurate statistical soft error rate (SSER) analysis using a quasi-Monte Carlo framework with quality cell models

机译:使用具有高质量单元模型的准蒙特卡洛框架进行准确的统计软错误率(SSER)分析

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For CMOS designs in sub 90 nm technologies, statistical methods are necessary to accurately estimate circuit SER considering process variations. However, due to the lack of quality statistical models, current statistical SER (SSER) frameworks have not yet achieved satisfactory accuracy. In this work, we present accurate table-based cell models, based on which a Monte Carlo SSER analysis framework is built. We further propose a heuristic to customize the use of quasirandom sequences, which successfully speeds up the convergence of simulation error and hence shortens the runtime. Experimental results show that this framework is capable of more precisely estimating circuit SSERs with reasonable speed.
机译:对于低于90 nm技术的CMOS设计,需要统计方法来考虑过程变化来准确估计电路SER。但是,由于缺乏质量统计模型,当前的统计SER(SSER)框架尚未达到令人满意的准确性。在这项工作中,我们提出了基于表的准确单元格模型,并在此模型的基础上建立了蒙特卡洛SSER分析框架。我们进一步提出一种启发式方法来定制拟随机序列的使用,从而成功地加快了仿真误差的收敛速度,从而缩短了运行时间。实验结果表明,该框架能够以合理的速度更精确地估计电路SSER。

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