Statistical Delay Computation Considering Spatial Correlations

ASPDAC(2003)

引用 85|浏览30
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摘要
Process variation has become a significant concern for static timing analysis. In this paper, we present a new method for path-based statistical timing analysis. We first propose a method for modeling inter- and intra-die device length variations. Based on this model, we then present an efficient method for computing the total path delay probability distribution using a combination of device length enumeration for inter-die variation and an analytical approach for intra-die variation. We also propose a simple and effective model of spatial correlation of intra-die device length variation. The analysis is then extended to include spatial correlation. We test the proposed methods on paths from an industrial high-performance microprocessor and present comparisons with traditional path analysis which does not distinguish between inter- and intra-die variations. The characteristics of the device length distributions were obtained from measured data of 8 test chips with a total of 17688 device length measurements. Spatial correlation data was also obtained from these measurements. We demonstrate the accuracy of the proposed approach by comparing our results with Monte-Carlo simulation.
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关键词
Monte Carlo methods,correlation methods,delay estimation,integrated circuit testing,microprocessor chips,timing,Monte-Carlo simulation,device length enumeration,inter-die device length variations,intra-die device length variations,microprocessor,path-based statistical timing analysis,process variation,spatial correlation,spatial correlations,static timing analysis,statistical delay computation,test chips,total path delay probability distribution,
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