一种快速鲁棒操作模式不变框架用于红外跌落预测

Utsav Jana, Gaurav Jain, Vineeth Kaimal, Nachiket Soman, Ankita Agarwal, Deepak Agrawal
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引用次数: 0

摘要

红外降是一种影响电路时序和逻辑运算的物理现象。随着技术节点的缩小,这已经成为一个不可避免的威胁,这种影响在高时钟频率上很明显。过多的红外下降是导致路径延迟缺陷的原因。我们提出了一个框架,可以预测不同的工作模式,包括测试模式的设计IR下降。测试模式IR下降分析在设计周期的后期完成,并且耗费时间和资源。红外落差的评估依赖于多物理场效应,耗时且昂贵。工业EDA工具,如Redhawk, PrimeRail, Totem用于IR下降分析。这些工具通常执行详尽的电网分析,以确定关键的IR下降区域,并执行工程变更令(ECO)来修复这些潜在的违规实例。我们提出了一个轻量级的可扩展机器学习模型,该模型可以根据eco前设计的特征预测eco后IR的最终下降。由于预ECO设计非常早进入项目阶段,我们的ML模型避免了多次迭代来预测最终的ECO后IR下降,从而节省了时间。我们已经为中型工业设计A实现了我们的机器学习模型,其中包含0.945v的典型典型(TT)角的一百万个单元实例。对我们的工业设计进行的早期实验表明,最终IR下降预测模型的决定系数为0.828。该模型可以节省大量的时间和成本,同时预测ECO后的设计特征,并解决跨功能和测试模式的IR下降问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Fast Robust Operation Mode invariant Frame-work for IR drop Prediction
IR drop is a physical phenomena affecting timing and logical operation of the circuits. As technology nodes shrink this has become an unavoidable menace and this effect is pronounced at high clock frequencies. Excessive IR drop is responsible for path delay defects. We propose a frame-work which can predict IR drop for different operating modes of the design including test mode. Test pattern IR drop analysis is done late in the design cycle and is time and resource consuming. Evaluation of IR drop depends on multi physics effects and is time consuming and expensive. Industry EDA tools such as Redhawk, PrimeRail, Totem are used for IR drop analysis. These tools often perform exhaustive power grid analysis to identify critical IR drop regions and Engineering Change Order(ECO) is performed to fix these potential violating instances. We propose a light weight scalable machine learning model which can predict final post-ECO IR drop based on the features from pre-ECO design. Since the pre-ECO design is very early into the project phase our ML model avoids multiple iterations to predict final post- ECO IR drop thus saving time. We have implemented our machine learning model for medium scale industrial design A containing a million cell instances for typical typical (TT) corner at 0.945v. Early experiments on our industrial designs show coefficient of determination is 0.828 for the final IR drop prediction model. This model can save significant amount of time and cost while predicting the post- ECO design features and fixing the IR drop problem across functional and test mode.
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