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Expedite Particle Swarm Optimization Algorithm (EPSO) for Optimization of MSA

机译:用于MSA优化的加速粒子群优化算法(EPSO)

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This paper presents a new designing method of Rectangular patch Microstrip Antenna using an Artificial searches Algorithm with some constraints. It requires two stages for designing. In first stage, bandwidth of MSA is modeled using bench Mark function. In second stage, output of first stage give to modified Artificial search Algorithm which is Particle Swarm Algorithm (PSO) as input and get output in the form of five parameter-dimensions width, frequency range, dielectric loss tangent, length over a ground plane with a substrate thickness and electrical thickness. In PSO Cognition, factor and Social learning Factor give very important effect on balancing the local search and global search in PSO. Basing the modification of cognition factor and social learning factor, this paper presents the strategy that at the starting process cognition-learning factor has more effect then social learning factor. Gradually social learning factor has more impact after learning cognition factor for find out global best. The aim is to find out under above circumstances these modifications in PSO can give better result for optimization of microstrip Antenna (MSA).
机译:本文提出了一种基于人工搜索算法的矩形贴片微带天线设计新方法。设计需要两个阶段。在第一阶段,使用基准标记功能对MSA的带宽进行建模。在第二阶段中,第一阶段的输出将经过修改的人工搜索算法(即粒子群算法(PSO))作为输入,并以五个参数维度的形式获得输出:宽度,频率范围,介电损耗角正切,地平面上的长度衬底厚度和电厚度。在PSO认知中,因子和社会学习因子对于平衡PSO中的本地搜索和全局搜索具有非常重要的作用。在认知因子和社会学习因子的修正的基础上,提出了在学习过程中认知学习因子比社会学习因子具有更大作用的策略。逐渐地,社会学习因素在学习认知因素之后具有更大的影响力,以寻求全球最佳水平。目的是发现在上述情况下,PSO中的这些修改可以为微带天线(MSA)的优化提供更好的结果。

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