Application of Machine Learning-Assisted Global Optimization for Improvement in Design and Performance of Open Resonant Cavity Antenna

IF 3.5 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC
Koushik Dutta;Mobayode O. Akinsolu;Puneet Kumar Mishra;Bo Liu;Debatosh Guha
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引用次数: 0

Abstract

Open resonant cavity antenna (ORCA) and its recent advances promise attractive features and possible applications, although the designs reported so far are solely based on the classical electromagnetic (EM) theory and general perception of EM circuits. This work explores machine learning (ML)-assisted antenna design techniques aiming to improve and optimize its major radiation parameters over the maximum achievable operating bandwidth. A state-of-the-art method, e.g., parallel surrogate model-assisted hybrid differential evolution for antenna synthesis (PSADEA) has been exercised upon a reference ORCA geometry revealing a fascinating outcome. This modifies the shape of the cavity which was not predicted by EM-based analysis as well as promising significant improvement in its radiation properties. The PSADEA-generated design has been experimentally verified indicating 3dB-11dB improvement in sidelobe level along with high broadside gain maintained above 17 dBi over the 18.5% impedance bandwidth of the ORCA. The new design has been theoretically interpreted by the theory of geometrical optics (GO). This investigation demonstrates the potential and possibilities of employing artificial intelligence (AI)-based techniques in antenna design where multiple parameters need to be adjusted simultaneously for the best possible performances.
应用机器学习辅助全局优化改进开放式谐振腔天线的设计和性能
开放式谐振腔天线(ORCA)及其最新进展具有诱人的特性和可能的应用前景,尽管迄今为止所报道的设计仅基于经典电磁(EM)理论和对电磁电路的一般认知。这项研究探索了机器学习(ML)辅助天线设计技术,旨在改进和优化其在最大可实现工作带宽上的主要辐射参数。一种最先进的方法,如用于天线合成的并行代理模型辅助混合微分演化(PSADEA),已在参考 ORCA 几何图形上得到应用,并揭示了令人着迷的结果。它修改了电磁分析无法预测的腔体形状,并有望显著改善其辐射特性。PSADEA 生成的设计已经过实验验证,表明在 ORCA 18.5% 的阻抗带宽内,侧叶水平提高了 3dB-11dB,宽边增益保持在 17 dBi 以上。新设计已用几何光学(GO)理论进行了理论解释。这项研究表明,在需要同时调整多个参数以获得最佳性能的天线设计中,采用基于人工智能(AI)的技术具有潜力和可能性。
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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来源期刊
CiteScore
6.50
自引率
12.50%
发文量
90
审稿时长
8 weeks
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