Optimization of an Antipodal Vivaldi Antenna using Synthesis Neural Networks and a Novel Genetic Algorithms Approach

A. Elsherbini, A. Kamel, H. Elhennawy
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Abstract

Two global optimization techniques, applicable for the optimization of several antennas and microwave components, are presented. The two techniques are explained together with a sample application, which is the optimization of an antipodal Vivaldi antenna. The first technique was found useful in optimizing the design aspects whose physical behavior is known, whereas the second was better for optimizing the design aspects for which the response behavior is unknown, but an adequate performance metric can be defined. The two methods are compared; the limitations and advantages of each method arc presented together with some other optimization techniques.
基于综合神经网络和遗传算法的对映维瓦尔第天线优化
提出了两种适用于多天线和微波器件优化的全局优化技术。本文结合对映维瓦尔第天线的优化实例,对这两种技术进行了说明。发现第一种技术在优化物理行为已知的设计方面很有用,而第二种技术更适合优化响应行为未知的设计方面,但可以定义适当的性能度量。对两种方法进行了比较;介绍了每种方法的局限性和优点,并介绍了其他一些优化技术。
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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