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Hybrid modeling of non-stationary process variations

机译:非静止过程变化的混合建模

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Accurate characterization of spatial variation is essential for statistical performance analysis and modeling, post-silicon tuning, and yield analysis. Existing approaches for spatial modeling either assume that: (i) non-stationarities arise due to a smoothly varying trend component or that (ii) the process is stationary within regions associated with a predefined grid. While such assumptions may hold when profiling certain classes of variations, a number of recent modeling studies suggest that non-stationarities arise from both shifts in the process mean as well as fluctuations in the variance of the process. In order to provide a compact model for non-stationary process variations, we introduce a new hybrid spatial modeling framework that models the spatially varying random field as a union of non-overlapping rectangular regions where the process is assumed to be locally-stationary within each region. To estimate the parameters in our hybrid spatial model, we develop a host of techniques to both estimate the change-points in the random field and to find an appropriate partitioning of the chip into disjoint regions where the field is locally-stationary. We verify our models and results on measurements collected from 65nm FPGAs.
机译:精确表征空间变化对于统计性能分析和建模,硅后调谐和产量分析至关重要。空间建模的现有方法假设:(i)由于平稳变化的趋势分量,或者(ii)该过程在与预定义网格相关联的区域内静止而产生的非实用性。虽然这种假设可以在分析某些类别的变化时,但是最近的许多建模研究表明,从过程中的两种班次以及过程方差的波动中出现了非实践。为了提供一种用于非静止过程变化的紧凑型模型,我们介绍了一种新的混合空间建模框架,其将空间变化的随机字段模拟了作为非重叠矩形区域的联合,其中该过程被假定在每个过程中是本地静止的过程地区。为了估算我们的混合空间模型中的参数,我们开发了一系列技术来估计随机字段中的变化点,并找到芯片的适当分区,以便在本地静止的区域静止。我们验证了我们的型号,并在65nm FPGA收集的测量结果。

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