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Numeral eddy current sensor modelling based on genetic neural network
作者姓名:俞阿龙
作者单位:Department of Electronic and Electrical Engineering, Huaiyin Teachers College, Huaian 223001, China
基金项目:Project supported by the Natural Science Foundation of the Higher Education Institutions of Jiangsu Province, China and by the Foundation of Huaiyin Teachers College Professor, China (Grant Nos 07KJD510027 and 06HSJS020).
摘    要:This paper presents a method used to the numeral eddy current sensor modelling based on the genetic neural network to settle its nonlinear problem. The principle and algorithms of genetic neural network are introduced. In this method, the nonlinear model parameters of the numeral eddy current sensor are optimized by genetic neural network (GNN) according to measurement data. So the method remains both the global searching ability of genetic algorithm and the good local searching ability of neural network. The nonlinear model has the advantages of strong robustness, on-line modelling and high precision. The maximum nonlinearity error can be reduced to 0.037% by using GNN. However, the maximum nonlinearity error is 0.075% using the least square method.

关 键 词:模型化  数字边界电流敏感器  功能连接神经网络  遗传神经网络
收稿时间:2007-07-15
修稿时间:2007-08-22

Numeral eddy current sensor modelling based on genetic neural network
Yu A-Long.Numeral eddy current sensor modelling based on genetic neural network[J].Chinese Physics B,2008,17(3):878-882.
Authors:Yu A-Long
Institution:Department of Electronic and Electrical Engineering, Huaiyin Teachers College, Huaian 223001, China
Abstract:This paper presents a method used to the numeral eddy current sensor modelling based on the genetic neural network to settle its nonlinear problem. The principle and algorithms of genetic neural network are introduced. In this method, the nonlinear model parameters of the numeral eddy current sensor are optimized by genetic neural network (GNN) according to measurement data. So the method remains both the global searching ability of genetic algorithm and the good local searching ability of neural network. The nonlinear model has the advantages of strong robustness, on-line modelling and high precision. The maximum nonlinearity error can be reduced to 0.037{\%} by using GNN. However, the maximum nonlinearity error is 0.075$^{ }${\%} using the least square method.
Keywords:modelling  numeral eddy current sensor  functional link neural network  genetic neural network
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