A Statistical Learning Based Modeling Approach and Its Application in Leakage Library Characterization

Min Zhang, R. Häußler, M. Olbrich, H. Kinzelbach, E. Barke
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Abstract

In statistical analysis, modeling circuit performance for non-linear problems demands large computational effort. In semi-custom design, statistical leakage library characterization is a highly complex yet fundamental task. The log-linear model provides an unacceptable poor accuracy in modeling a large number of standard cells. To improve model quality, simply increasing model order is not practicable because it leads to an exponential increase in run time. Instead of assuming one model type for the entire library beforehand, we developed an approach generating a model for each cell individually. The key contribution is the use of a cross term matrix and an active sampling scheme, which significantly reduces model size and model generation time. The effectiveness of our approach is clearly shown by experiments on industrial standard cell libraries. As we regard the circuit block as a black box, our approach is suitable for modeling various circuit performances.
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基于统计学习的建模方法及其在泄漏库描述中的应用
在统计分析中,非线性问题的电路性能建模需要大量的计算量。在半定制设计中,统计泄漏库表征是一项非常复杂而又基础的任务。对数线性模型在模拟大量标准细胞时精度低得令人无法接受。为了提高模型质量,简单地增加模型顺序是不可行的,因为这会导致运行时间呈指数增长。我们没有预先为整个库假设一种模型类型,而是开发了一种为每个单元单独生成模型的方法。关键的贡献是使用交叉项矩阵和主动采样方案,这大大减少了模型大小和模型生成时间。在工业标准细胞库上的实验清楚地表明了我们方法的有效性。由于我们将电路块视为一个黑盒,因此我们的方法适用于各种电路性能的建模。
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