标题: 考虑制程变异下应用Bootstrap信赖区间模拟空间相关性
BOOTSTRAP CONFIDENCE INTERVALS AS AN APPROACH to MODEL WITHIN-DIE SPATIAL CORRELATION UNDER PROCESS VARIATIONS
作者: 苏炳熏
Su, Bing-Hsing
李育民
Lee, Yu-Min
电机学院IC设计产业专班
关键字: 制程变异;Bootstrap信赖区间;空间相关性;统计时序分析;process variation;Bootstrap confidence interval;spatial correlation;statistical timing analysis
公开日期: 2008
摘要: 随着制程的技术进步及系统单晶片的到来,深次微米中的时序问题已越显重要。传统以 corner value 为基础的时序分析将会导致预测的时序被过分低估。统计型静态时序分析 ( Statistical Static Timing Analysis - SSTA) 就是利用统计的方式去描述这些制程偏差,把他们视为一些统计的随机变数,然后利用他们去预测时序并且得到更准确的结果。SSTA 使晶片设计者能得以将时间余裕(timing margin)及良率(yield)做最佳化以提升晶片效能和可靠度。不同于其它论文之模型探讨,本文考量实际制程变异及晶圆应用的可行性,提出一个实用且新颖的路径学习重复取样的方法论(path-based learning methodology with Balanced Bootstrap re-sampling ) 。此方法不须作任何timing model的假设,只须从现有宝贵的晶圆量测资料中,重覆作re-sampling learning的动作,即可得到准确path delay的空间相关性(spatial correlations)之推论。同时藉由建立信赖区间的方式,可得到path delay correlation 和 path distance两者之间的关系和趋势,由此推论path distance变化时,会有多少path delay的变化。此方法在晶圆厂有两个方面可应用:(1)在先进晶圆制程阶段,使用re-sampling 方法,可对有限的晶圆量测资料,快速建立近似的统计型时序模拟器。 (2)在成熟晶圆制作阶段,使用路径学习方法,观察测试晶片的量测资料,可取得统计型静态时序分析(SSTA)之建模(modeling)。
With the advances to nanometer technologies and SOC, the process variation plays a more important in the future. Traditional corner value timing analysis becomes less effective and grossly conservative. Statistical timing models and simulation methods are required to capture these variation effects. The methodology of statistical timing analysis that characterizes time variables as statistical random variables offers a better approach for more accurate timing predictions. SSTA enable designer to setup and hold Timing Margins to optimize and improve the performance and reliability. The thesis considers real process variations and fabrication implementation designs a practical test chips and presents the implementation of a novel path-based learning methodology with Balanced Bootstrap re-sampling that accounts for process variations and their spatial correlations. It doesn’t need timing model hypothesis and make the accurate timing spatial correlation inference from fabrication measurement data. By constructing the confidence interval of the spatial correlation, we can get correlations and predictions for path delay and path distances. By this, we can know how many path distance changes will cause how many path delay correlation changes. It can be applied for two purposes. First, the bootstrap re-sampling can be used to produce a fast and approximated simulator for statistical timing simulations in the advanced production phase. Secondly, this path-based learning can be used as a vehicle to derive statistical static timing analysis (SSTA) based on observed measured data from the test chips in mature production phase.
URI: http://140.113.39.130/cdrfb3/record/nctu/#GT009395559
http://hdl.handle.net/11536/80387
显示于类别:Thesis


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