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基于BP神经网络改进的FIR滤波器研究
引用本文:陈杨生,颜钢锋.基于BP神经网络改进的FIR滤波器研究[J].青岛大学学报(自然科学版),2004,17(1):59-62.
作者姓名:陈杨生  颜钢锋
作者单位:浙江大学系统科学与工程学系,浙江,杭州,310027
摘    要:详细研究了BP神经网络算法,分析了FIR线性相位滤波器幅频响应与BP神经网络算法的关系,对滤波器设计方法进行了改进,给出了设计低通滤波器实例。它克服了传统方法的主要缺陷,不涉及逆矩阵的复杂计算。仿真结果表明,该算法在低通、高通和带通滤波器设计中各项性能接近理想状态。

关 键 词:BP神经网络  FIR滤波器  误差函数  幅频响应
文章编号:1006-1037(2004)01-0059-04
修稿时间:2003年10月27

Study on Improved FIR Filters Using BP Neural Networks
CHEN Yang-sheng,YAN Gang-feng.Study on Improved FIR Filters Using BP Neural Networks[J].Journal of Qingdao University(Natural Science Edition),2004,17(1):59-62.
Authors:CHEN Yang-sheng  YAN Gang-feng
Abstract:This paper studies BP neural networks algorithm, discusses the relations between the amplitude-frequency response of the FIR filters with linear phase and the algorithm of the BP neural networks,improves the methods of designing the filters and gives the examples of designing low-pass filters.It conquers the primary disadvantages of the conventional methods,and need not to deal with the complex computing of the contrary matrix . The simulation results show that the varieties of performance indexes approch those under ideal conditions by using this algorithm in the designs of the low-pass,high-pass and band-pass filters.
Keywords:FIR filters  error function  amplitude-frequency response  BP neural-networks  
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