频率响应生成建模技术的评价

F. Garbuglia, D. Spina, D. Deschrijver, T. Dhaene
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引用次数: 0

摘要

在微波设计过程中,获得器件频率响应的统计变异性对几个变异性源的洞察力是有实际意义的。不幸的是,频率响应采集可能特别耗时或昂贵。这使得不确定性量化在处理复杂网络时不可行。基于机器学习的生成建模技术可以通过从设备响应的少数实例中学习潜在的随机过程,并通过执行廉价的采样策略生成新的随机过程,从而减少计算负荷。这样,就可以从与原始分布相似的概率分布中获得任意数量的频率响应。使用高斯过程潜在变量模型(GP-LVM)和变分自编码器(VAE)作为建模算法将在生成框架中进行评估。该框架包括一个向量拟合(VF)预处理步骤,通过将s矩阵转换成合适的理性模型来保证s矩阵的稳定性和互易性。在两个线性多端口网络实例的s参数响应上对GP-LVM和VAE进行了测试。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evaluation of Generative Modeling Techniques for Frequency Responses
During microwave design, it is of practical interest to obtain insight in the statistical variability of a device’s frequency response with respect to several sources of variation. Unfortunately, the frequency response acquisition can be particularly time-consuming or expensive. This makes uncertainty quantification unfeasible when dealing with complex networks. Generative modeling techniques that are based on machine learning can reduce the computation load by learning the underlying stochastic process from few instances of the device response and generating new ones by executing an inexpensive sampling strategy. This way, an arbitrary number of frequency responses can be obtained that are drawn from a probability distribution that resembles the original one. The use of Gaussian Process Latent Variable Models (GP-LVM) and Variational Autoencoders (VAE) as modeling algorithms will be evaluated in a generative framework. The framework includes a Vector Fitting (VF) pre-processing step which guarantees stability and reciprocity of S-matrices by converting them into a suitable rational model. Both GP-LVM and VAE are tested on the S-parameter responses of two linear multi-port network examples.
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