Generic Modeling of Differential Striplines Using Machine Learning Based Regression Analysis

Srinath Penugonda, Shaohui Yong, Anna Gao, Kevin Cai, Bidyut Sen, J. Fan
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引用次数: 1

Abstract

In this paper, a generic model for a differential stripline is created using machine learning (ML) based regression analysis. A recursive approach of creating various inputs is adapted instead of traditional design of experiments (DoE) approach. This leads to reduction of number of simulations as well as control the data points required for performing simulations. The generic model is developed using 48 simulations. It is comparable to the linear regression model, which is obtained using 1152 simulations. Additionally, a tabular W-element model of a differential stripline is used to take into consideration the frequency-dependent dielectric loss. In order to demonstrate the expandability of this approach, the methodology was applied to two differential pairs of striplines in the frequency range of 10 MHz to 20 GHz.
基于回归分析的机器学习微分带状线的通用建模
在本文中,使用基于机器学习(ML)的回归分析创建了微分带状线的通用模型。采用递归方法创建各种输入,取代传统的实验设计(DoE)方法。这可以减少模拟次数,并控制执行模拟所需的数据点。通过48次模拟,建立了通用模型。它与线性回归模型相当,线性回归模型是通过1152次模拟得到的。此外,差分带状线的表格w元模型被用来考虑频率相关的介电损耗。为了证明该方法的可扩展性,将该方法应用于频率范围为10 MHz至20 GHz的两对差分带状线。
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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