Antenna Modeling by Nested Kriging with Automated Domain Thickness Determination

S. Koziel, A. Pietrenko‐Dabrowska, Q. Cheng
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Abstract

Fast surrogate models may alleviate the difficulties pertinent to high computational cost of electromagnetic (EM)-driven design procedures. Approximation surrogates are by far the most popular but their applicability to antenna modeling is severely limited by the curse of dimensionality. Domain confinement, as in the recently proposed nested kriging approach, offers a viable workaround this issue, in particular, enables the construction of reliable surrogates over wide ranges of antenna operating conditions and geometry parameters. Unfortunately, the original nested kriging method requires the user to set up the domain thickness (the ratio of its lateral to tangential size). The value of this parameter is critical for achieving a proper balance between the model predictive power and the cost of training data acquisition. This paper proposes a procedure for automated a priori determination of the domain thickness and highlights the computational benefits associated with the employment of the presented approach using a dual-band dipole antenna example.
基于嵌套Kriging的天线建模与域厚度自动确定
快速代理模型可以缓解电磁驱动设计过程中高计算成本带来的困难。近似值替代是目前最流行的方法,但其在天线建模中的适用性受到维数诅咒的严重限制。域约束,如最近提出的嵌套克里格方法,提供了一个可行的解决这个问题的方法,特别是,可以在广泛的天线工作条件和几何参数范围内构建可靠的代理。不幸的是,原始的嵌套克里格方法要求用户设置域厚度(其横向尺寸与切向尺寸的比例)。该参数的值对于实现模型预测能力和训练数据采集成本之间的适当平衡至关重要。本文提出了一种自动先验确定域厚度的方法,并以双频偶极子天线为例,强调了与采用该方法相关的计算效益。
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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