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Reliable Computationally Efficient Behavioral Modeling of Microwave Passives Using Deep Learning Surrogates in Confined Domains

机译:在受限域中使用深度学习代理对微波无源器件进行可靠的计算高效行为建模

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摘要

The importance of surrogate modeling techniques has been steadily growing over the recent years in high-frequency electronics, including microwave engineering. Fast metamodels are employed to speed up design processes, especially those conducted at the level of full-wave electromagnetic (EM) simulations. The surrogates enable massive system evaluations at nearly EM accuracy and negligible costs, which is invaluable in parameter tuning, multiobjective optimization, or uncertainty quantification. Nevertheless, modeling of electrical characteristics of microwave components is impeded by nonlinearity of their electrical characteristics, the need for covering broad parameter ranges, as well as dimensionality issues. Recently, a two-stage modeling approach has been proposed, which addresses some of these issues by constraining the surrogate model domain to only include high-quality designs, thereby reducing the cardinality of the dataset required to establish an accurate metamodel. In this article, a novel technique is proposed, which combines the two-stage modeling concept with multihead deep regression network (MHDRN) surrogates customized to handle responses of microwave passives over wide ranges of operating frequencies and geometry parameters. Using three microstrip circuits, a superior performance of the proposed modeling framework is demonstrated with respect to multiple state-of-the-art benchmark methods. In particular, the relative rms error is shown to reach the level of less than 3#x0025; for the datasets consisting of just a few hundred samples.
机译:近年来,代理建模技术在高频电子学(包括微波工程)中的重要性一直在稳步增长。快速元模型用于加快设计过程,尤其是在全波电磁 (EM) 仿真级别进行的设计过程。替代物能够以接近 EM 的精度和可忽略不计的成本进行大规模系统评估,这在参数调整、多目标优化或不确定性量化方面非常宝贵。然而,微波元件的电气特性建模受到其电气特性的非线性、覆盖广泛参数范围以及维度问题的阻碍。最近,提出了一种两阶段建模方法,该方法通过将代理模型域约束为仅包含高质量的设计来解决其中一些问题,从而减少了建立准确元模型所需的数据集的基数。本文提出了一种新技术,该技术将两阶段建模概念与定制的多头深度回归网络(MHDRN)替代物相结合,以处理微波无源器件在宽工作频率和几何参数范围内的响应。使用三个微带线电路,证明了所提出的建模框架相对于多种最先进的基准方法的卓越性能。特别是,对于仅由几百个样本组成的数据集,相对均方根误差达到不到 3% 的水平。

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