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An optimized small compact rectangular antenna with meta-material based on fast multi-objective optimization for 5G mobile communication

机译:基于5G移动通信的快速多目标优化,具有元材料优化的小型矩形天线

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摘要

The main purpose of this paper is to present a novel procedure for accelerating a multi-objective optimization method of designing a 5G antenna. The optimization method was chosen after comparing four learning optimization algorithms. The Kriging algorithm was found to be superior to the Artificial Neural Network (ANN), Support Vector Machine (SVM), and Rational algorithms. Our methodology is creatively correlated to exploit some cost functions of height, the Dielectric constant of the substrate, and meta-material design variables, with a view to reducing the return loss and increasing the gain in learning from the Kriging model builder techniques. This was fully achieved in the present study by comparing the results of analyzing and optimizing two effective fundamental characteristics of the antenna with EM simulation software and prototype antenna measurements.
机译:本文的主要目的是提出一种加速设计5G天线的多目标优化方法的新方法。 在比较四学习优化算法之后选择优化方法。 发现Kriging算法优于人工神经网络(ANN),支持向量机(SVM)和RATITIONAL算法。 我们的方法是创造性地相关的,以利用高度,基板的介电常数和元材料设计变量的一些成本函数,以降低回波损耗并增加克里格模型构建器技术的学习增益。 通过比较分析和优化天线的两种有效基本特征的结果,通过仿真软件和原型天线测量来完全实现这一点。

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