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Blending PSO and ANN for Optimal Design of FSS Filters With Koch Island Patch Elements

机译:结合PSO和ANN进行带有Koch Island补丁元素的FSS滤波器的优化设计

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摘要

This work presents a new fast and accurate electromagnetic (EM) optimization technique blending the Particle Swarm Optimization (PSO) algorithm and a Multilayer Perceptrons (MLP) Artificial Neural Network (ANN). The proposed technique was applied for optimal design of Koch fractal Frequency Selective Surface (FSS) with desired stop-band filter specification. Initially, a full-wave parametric analysis was carried out for accurate EM-characterization of FSS filters. From obtained EM-dataset, a MLP network was trained with the first-order Resilient Backpropagation (RPROP) algorithm. The developed MLP model for FSS synthesis was used for efficient evaluation of cost function in PSO iterations. The advantages in the optimal design of FSS through the PSO-ANN technique were discussed in terms of convergence and computational cost. Two optimized FSS prototypes were built and measured. The accuracy of the proposed optimization technique was verified through the excellent agreement obtained by means of comparisons between theoretical and experimental results.
机译:这项工作提出了一种新的快速,准确的电磁(EM)优化技术,该技术融合了粒子群优化(PSO)算法和多层感知器(MLP)人工神经网络(ANN)。拟议的技术应用于具有所需阻带滤波器规格的Koch分形频率选择性表面(FSS)的优化设计。最初,为了对FSS滤波器进行准确的EM特性表征,进行了全波参数分析。根据获得的EM数据集,使用一阶弹性反向传播(RPROP)算法训练了MLP网络。已开发的用于FSS合成的MLP模型用于有效评估PSO迭代中的成本函数。从收敛性和计算成本两方面讨论了通过PSO-ANN技术进行FSS优化设计的优势。构建并测量了两个优化的FSS原型。通过理论和实验结果之间的比较获得了极好的一致性,从而验证了所提优化技术的准确性。

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