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Modeling Approach for Distributed RF MEMS Phase Shifter based on IA-BP Neural Network

机译:基于IA-BP神经网络的分布式RF MEMS移相器建模方法

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An Efficient modeling technique based on immune algorithm and BP neural network is presented for the design of RF MEMS phase shifter. Three sensitive parameters are selected according to complicated three-dimensional structure design of an RF MEMS phase shifter and used as inputs of neural network. In the model, immune algorithm is first used for global search and then BP algorithm for local search. Experiments show that the proposed approach in this paper is a high efficiency modeling for the RF characteristics analysis for up/down-state of RF MEMS phase shifter. Comparison between improved BP neural network predictions and HFSS simulations show that the root mean square errors, mean absolute errors and maximize absolute errors are less than 1.77dB(534o), 2.24dB(5.93o) and 2.60dB(6.19o) respectively. Also, improved BP neural network reduces the training time at least 30 minutes.
机译:针对射频微机电移相器的设计,提出了一种基于免疫算法和BP神经网络的高效建模技术。根据RF MEMS移相器的复杂三维结构设计选择了三个敏感参数,并将其用作神经网络的输入。在该模型中,首先使用免疫算法进行全局搜索,然后使用BP算法进行局部搜索。实验表明,本文提出的方法是一种用于RF MEMS移相器上/下状态的RF特性分析的高效建模。改进的BP神经网络预测和HFSS仿真之间的比较表明,均方根误差,平均绝对误差和最大绝对误差分别小于1.77dB(534o),2.24dB(5.93o)和2.60dB(6.19o)。同样,改进的BP神经网络可将训练时间至少减少30分钟。

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