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Adjustment-based modeling for Statistical Static Timing Analysis with high dimension of variability

机译:基于调整的统计静态定时分析模拟,具有高尺寸的变异性

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This paper presents an adjustment-based modeling framework for Statistical Static Timing Analysis (SSTA) when the dimension of parameter variability is high. Instead of building a complex model between the circuit timing and parameter variability, we build a model which adjusts an approximate variation-aware timing into an accurate one. The intuition is that it is simpler to build a model which adjusts an approximate estimate into an accurate one. It is also more efficient to obtain an approximate circuit timing model. The combination of these two observations makes the use of an adjustment-based model a good choice for SSTA with high dimension of parameter variability. To build the adjustment model, we use a simulation-based approach, which is based on Gaussian Process. Combined with intelligent sampling, we show that an adjustment-based model can more effectively capture the nonlinearity of the circuit timing with respect to parameter variability compared to polynomial modeling. We also show that with only 200 samples of the circuit timing and 42 independent parameter variations, adjustment-based modeling obtains higher accuracy than direct SSTA using quadratic modeling.
机译:本文介绍了一种基于调整的静态静态定时分析(SSTA)的建模框架,当参数变异性的尺寸高时。我们不是在电路时序和参数变异性之间构建复杂模型,而是构建一个模型,该模型将近似变化的变化的定时调整为准确的模型。直觉是构建一个模型更简单,该模型调整为准确的估计。获得近似电路时序模型也更有效。这两个观察的组合使得使用基于调整的模型对于具有高尺寸的参数变异性的SSTA的良好选择。为了构建调整模型,我们使用基于仿真的方法,该方法是基于高斯过程。与智能采样相结合,我们表明,与多项式建模相比,基于调整的模型可以更有效地捕获电路时序的非线性。我们还表明,只有200个样本的电路时序和42个独立参数变体,基于调整的建模比使用二次建模的直接SSTA获得更高的精度。

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