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首页> 外文期刊>IEEE Transactions on Computer-Aided Design of Integrated Circuits and Systems >Statistical Static Timing Analysis Considering Process Variation Model Uncertainty
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Statistical Static Timing Analysis Considering Process Variation Model Uncertainty

机译:考虑过程变异模型不确定性的统计静态时序分析

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摘要

Increasing variability in modern manufacturing processes makes it important to predict the yields of chip designs at early design stage. In recent years, a number of statistical static timing analysis (SSTA) and statistical circuit optimization techniques have emerged to quickly estimate the design yield and perform robust optimization. These statistical methods often rely on the availability of statistical process variation models whose accuracy, however, is severely hampered by the limitations in test structure design, test time, and various sources of inaccuracy inevitably incurred in process characterization. To consider model characterization inaccuracy, we present an efficient importance sampling based optimization framework that can translate the uncertainty in process models to the uncertainty in circuit performance, thus offering the desired statistical best/worst case circuit analysis capability accounting for the unavoidable complexity in process characterization. Furthermore, our new technique provides valuable guidance to process characterization. Examples are included to demonstrate the application of our general analysis framework under the context of SSTA.
机译:现代制造工艺中越来越多的可变性使得在早期设计阶段预测芯片设计的成品率变得很重要。近年来,出现了许多统计静态时序分析(SSTA)和统计电路优化技术,以快速估计设计成品率并执行稳健的优化。这些统计方法通常依赖于统计过程变化模型的可用性,但是其准确性受到测试结构设计,测试时间以及过程表征中不可避免地引起的各种不准确性的局限性的严重限制。为了考虑模型表征的不准确性,我们提出了一个基于重要性采样的高效优化框架,该框架可以将过程模型中的不确定性转化为电路性能中的不确定性,从而提供所需的统计上最佳/最坏情况下的电路分析能力,从而解决了过程表征中不可避免的复杂性。此外,我们的新技术为过程表征提供了宝贵的指导。包含示例以说明我们的一般分析框架在SSTA上下文中的应用。

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