Capacitance Extraction and Power Grid Analysis Using Statistical and AI Methods

Wenjian Yu, Ming Yang, Yao Feng, Ganqu Cui, B. Gu
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引用次数: 1

Abstract

Capacitance extraction and power grid (PG) analysis for IC design involve large-scale numerical simulation problems. As the process technology becomes more complicated and design margin is shrinking, the capacitance field solver and power-grid matrix solver with high accuracy and capability for handing large and complex structure are highly demanded. In this invited paper, we present recent application of statistical and AI methods in these two fields. The Markov-chain model and relevant analysis are presented for developing an efficient technique for handling conformal dielectrics in the floating random walk based capacitance extraction. Then, two approaches reducing the computational cost of a domain decomposition based power-grid solver are presented. One employs supervised machine learning while the other is inspired by the A*-search algorithm.
利用统计和人工智能方法进行电容提取和电网分析
集成电路设计中的电容提取和电网分析涉及大规模数值模拟问题。随着工艺技术的复杂化和设计余量的不断缩小,对具有高精度和处理大型复杂结构能力的电容场求解器和电网矩阵求解器提出了很高的要求。在这篇特邀论文中,我们介绍了统计和人工智能方法在这两个领域的最新应用。为了在基于浮动随机游动的电容提取中有效地处理保形介质,提出了马尔可夫链模型和相关分析。然后,提出了两种降低基于域分解的电网求解器计算量的方法。一个采用监督式机器学习,而另一个则受到A*搜索算法的启发。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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