基于机器学习的电磁兼容性计算分析

L. Jiang, H. Yao, H.H. Zhang, Y. Qin
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引用次数: 5

摘要

虽然机器学习正在成为现代技术发展的每个角落的苛刻要求,但我们正在尝试是否可以使计算电磁算法与机器学习方法兼容。在本文中,我们介绍了两个与此方向一致的努力:矩量求解方法(MoM)可以看作是一个训练训练过程。因此,人工神经网络(ANN)可以通过训练自然地解决MoM问题。Amazon Web Service (AWS)可以作为计算平台,利用现有的硬件和软件资源进行机器学习。另一个关于集成电路非线性输入的研究可以通过人工神经网络建模。从而为信号完整性和功率完整性分析提供了精度不断提高的行为模型。该方法可进一步杂化为不连续伽辽金时域(DGTD)方法,用于电能谱表征。提供了基准来证明所提出方法的可行性。
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Machine Learning Based Computational Electromagnetic Analysis for Electromagnetic Compatibility
While machine learning is becoming a demanding request in every corner of modern technology development, we are trying to see if we could make computational electromagnetic algorithms compatible to machine learning methods. In this paper, we introduce two efforts in line with this direction: solving method of moments (MoM) can be seen as a training training process. Consequently, the artificial neural network (ANN) could be used to solve MoM naturally through training. Amazon Web Service (AWS) can be used as the computations platform to utilize the existing hardware and software resources for machine learning. Another effort regarding to the nonlinear IO of ICs can be modeled through ANN. Hence, a behavior model with growing accuracy can be obtained for the signal integrity and power integrity analysis. It can be further hybridized into discontinuous Galerkin time domain (DGTD) method for CEM characterizations. Benchmarks are provided to demonstrate the feasibility of the proposed methods.
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