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Bayesian Regularization Based ANN for the Design of Flexible Antenna for UWB Wireless Applications

机译:基于贝叶斯正则化的ANN用于UWB无线应用的柔性天线设计

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This paper presents a flexible pentagonal shape Ultra-Wide Band (UWB) antenna design using Artificial Neural Network (ANN) for WLAN, 5G, and WiMAX applications. The pentagonal patch is placed on top of flexible polyimide substrate and simulated using the well-known 3-D electromagnetic (EM) simulator HFSS, v.18.1. Due to large computing cluster required by the EM simulator to solve the design under consideration in addition to the time consumed, ANN is used to synthesize the design and reduce the cost and time consumed to analyze the aforementioned structure. Neural Network with 1 hidden layer of 10 neurons based on Bayesian Regularization algorithm is presented. An error of less 5% is produced during the learning, validation, and testing processes. Neural network is a good candidate to represent the pentagonal shape antenna used for UWB applications.
机译:本文针对无线局域网,5G和WiMAX应用提出了一种使用人工神经网络(ANN)的灵活的五边形超宽带(UWB)天线设计。将五角形贴片放置在柔性聚酰亚胺基板的顶部,并使用众所周知的3-D电磁(EM)仿真器HFSS(18.1版)进行仿真。由于EM模拟器需要大量的计算集群才能解决所考虑的设计问题,因此还需要花费大量时间,因此使用ANN来综合设计并减少分析上述结构所需的成本和时间。提出了一种基于贝叶斯正则化算法的具有10个神经元的1个隐藏层的神经网络。在学习,验证和测试过程中产生的误差小于5%。神经网络是代表用于UWB应用的五边形天线的理想选择。

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