Resonant Frequency Modelling of Microstrip Antennas by Consensus Network and Student’s-T Process

Xuefeng Ren, Yubo Tian, Qing Li, Hao Fu
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Abstract

When modelling and optimizing antennas by machine learning (ML) methods, it is the most time-consuming to obtain the training samples with labels from full-wave electromagnetic simulation software. To address the problem, this paper proposes an optimization method based on the consensus results of multiple independently trained Student’s-T Process (STP) with excellent generalization ability. First, the STP is introduced as a surrogate model to replace the traditional Gaussian Process (GP), and the hyperparameters of the STP model are optimized. Afterwards, a consistency algorithm is used to process the results of multiple independently trained STPs to improve the reliability of the results. Furthermore, an aggregation algorithm is adopted to reduce the error obtained in the consistency results if it is greater than the consistency flag. The effectiveness of the proposed model is demonstrated through experiments with rectangular microstrip antennas (RMSA) and circular microstrip antennas (CMSA). The experimental results show that the use of multiple independently trained STPs can accelerate the antenna design optimization process, and improve modelling accuracy while maintaining modelling efficiency, which has high generalization ability.
利用共识网络和 Student's-T 过程对微带天线进行谐振频率建模
在利用机器学习(ML)方法对天线进行建模和优化时,从全波电磁仿真软件中获取带标签的训练样本最为耗时。为解决这一问题,本文提出了一种基于多个独立训练的、具有出色泛化能力的学生 T 过程(STP)的共识结果的优化方法。首先,引入 STP 作为替代模型来取代传统的高斯过程(GP),并优化 STP 模型的超参数。然后,使用一致性算法处理多个独立训练的 STP 的结果,以提高结果的可靠性。此外,如果一致性结果中的误差大于一致性标志,则采用聚合算法来减少误差。通过对矩形微带天线(RMSA)和圆形微带天线(CMSA)的实验,证明了所提模型的有效性。实验结果表明,使用多个独立训练的 STP 可以加速天线设计优化过程,在保持建模效率的同时提高建模精度,具有很高的泛化能力。
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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