Machine learning based MoM (ML-MoM) for parasitic capacitance extractions

H. Yao, Y. Qin, L. J. Jiang
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引用次数: 9

Abstract

This paper is a rethinking of the conventional method of moments (MoM) using the modern machine learning (ML) technology. By repositioning the MoM matrix and unknowns in an artificial neural network (ANN), the conventional linear algebra MoM solving is changed into a machine learning training process. The trained result is the solution. As an application, the parasitic capacitance extraction broadly needed by VLSI modeling is solved through the proposed new machine learning based method of moments (ML-MoM). The multiple linear regression (MLR) is employed to train the model. The computations are done on Amazon Web Service (AWS). Benchmarks demonstrated the interesting feasibility and efficiency of the proposed approach. According to our knowledge, this is the first MoM truly powered by machine learning methods. It opens enormous software and hardware resources for MoM and related algorithms that can be applied to signal integrity and power integrity simulations.
基于机器学习的寄生电容提取MoM (ML-MoM)
本文利用现代机器学习技术对传统矩量方法进行了反思。通过对人工神经网络中MoM矩阵和未知数的重新定位,将传统的线性代数MoM求解转变为机器学习训练过程。经过训练的结果就是解决方案。作为应用,本文提出的基于机器学习的矩量法(ML-MoM)解决了VLSI建模广泛需要的寄生电容提取问题。采用多元线性回归(MLR)对模型进行训练。计算是在亚马逊网络服务(AWS)上完成的。基准测试证明了所提出方法的可行性和效率。据我们所知,这是第一个真正由机器学习方法驱动的MoM。它为MoM和相关算法打开了巨大的软件和硬件资源,可以应用于信号完整性和功率完整性仿真。
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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