Machine learning for complex EMI prediction, optimization and localization

Hang Jin, Le Zhang, Hanzhi Ma, Sichen Yang, Xiao-Li Yang, E. Li
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引用次数: 12

Abstract

The electromagnetic interference (EMI) problem of extra-high speed electronic devices and systems is becoming more complex with an increase of operating frequency. The conventional analysis and design methods could not cope with the current EMI problems. Advanced analysis and design methods are desired. Deep neural network (DNN) and Bayesian optimization algorithm (BOA) based on machine learning are utilized in prediction of EMI radiation, optimization of design parameters and localization of EMI sources. The feasibility of DNN and BOA is investigated and validated. The steps of using DNN and BOA are proposed in the paper.
用于复杂电磁干扰预测、优化和定位的机器学习
超高速电子设备和系统的电磁干扰问题随着工作频率的增加而变得越来越复杂。传统的电磁干扰分析和设计方法已不能适应当前的电磁干扰问题。需要先进的分析和设计方法。将深度神经网络(DNN)和基于机器学习的贝叶斯优化算法(BOA)应用于电磁干扰辐射预测、设计参数优化和电磁干扰源定位。研究并验证了DNN和BOA的可行性。提出了深度神经网络和BOA的应用步骤。
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