无线和移动可重构天线射频MEMS开关的神经网络优化算法

P. Chawla, R. Khanna
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引用次数: 11

摘要

针对可重构天线射频开关的上波束宽度、介电介质和锚臂长度的变化,提出了一种基于神经网络的前馈反向传播多层感知器算法。这些物理尺寸是多种多样的,设计结构正在优化,以实现低功耗和可接受的隔离和插入损耗水平。该算法在训练过程中从基于有限元法的仿真工具Ansoft-HFSS中获取新的数据样本。将人工神经网络(ANN)与电磁求解器的结果进行了比较。开发的程序允许通过替换重复的电磁模拟来执行设计的优化解决方案,同时与有限元建模相比仍然保持良好的精度。该方法需要较少的仿真时间,特别是对于设计问题,需要可靠和功能齐全的方法。计算的插入损耗和隔离结果与其他文献的实验结果吻合得很好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimization algorithm of neural network on RF MEMS switch for wireless and mobile reconfigurable antenna applications
A neural network based feed-forward back-propagation multi layered-perceptron algorithm is presented for the validation of changing the width of upper beam, dielectric and anchor arm length of RF switch designed specifically for reconfigurable antenna. These physical dimensions are varied and design structure is optimizing for low power consumption and to achieve acceptable level of isolation and insertion loss. The algorithm takes these new data samples during training from finite element method (FEM) based simulation tool Ansoft-HFSS. Results of the artificial neural network (ANN) are compared with those of the electromagnetic solver. The developed procedures allows the optimisation solutions of the design to be carried out by replacing repeated electromagnetic simulations whilst still retaining an excellent accuracy as compared with finite element modelling. This procedure requires less simulation time especially for the designing problem, where there is a need of reliable and fully functional methods. The calculated insertion loss and isolation results are in very good agreement with the experimental results reported elsewhere.
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