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小波包消噪提高小波网络故障识别性能
引用本文:孙涛,黄天戍,阚黎明,李明,向继东.小波包消噪提高小波网络故障识别性能[J].哈尔滨工业大学学报,2005,37(4):561-564.
作者姓名:孙涛  黄天戍  阚黎明  李明  向继东
作者单位:1. 武汉大学,电子信息学院,湖北,武汉,430072
2. 山东电力设备厂,设计室,山东,济南,250022
摘    要:针对强噪声背景的高频振动信号,给出一种利用小波包消噪和频带分割技术,根据信号能量在小波包空间的分布特性,提取故障信号特征信息的方法.在小波包空间自适应软阈值去噪,消除白噪声;运用频带分割消除有色噪声,计算各子空间的能量,抽取低维特征矢量,作为小波网络的输入.该方法既提高了小波包神经网络的故障识别性能,又简化了决策网络结构,提高了收敛速度.

关 键 词:故障识别  软阈值  特征信息  小波包谱  小波神经网络
文章编号:0367-6234(2005)04-0561-04
修稿时间:2002年9月22日

Fault detection and isolation capability improvement of wavelet neural network basing on wavelet packet transform de-noising
SUN Tao,HUANG Tian-shu,KAN Li-ming,Li Ming,XIANG Ji-dong.Fault detection and isolation capability improvement of wavelet neural network basing on wavelet packet transform de-noising[J].Journal of Harbin Institute of Technology,2005,37(4):561-564.
Authors:SUN Tao  HUANG Tian-shu  KAN Li-ming  Li Ming  XIANG Ji-dong
Abstract:As for high frequency vibration signals submerged in strong noise, one method of fault feature extraction is put forward with Daub4 orthogonal Wavelet Package Transform (WPT) basing on both energy distribution analyzing and de-noising in wavelet packet subspaces. A perfect method is designed to eliminate white noise with adaptive soft-threshold wavelet packet shrinking, de-noise pink noise according to frequency bands split, analyze the signal energy distribution of wavelet packet subspaces, and extract the character low dimension eigenvectors of fault information as input data of the Wavelet Neural Network ( WNN) . As a result, this approach simplifies the WNN structure and speeds its convergence process so as to enhance the WNN capability of Fault Detection and Isolation ( FBI) .
Keywords:fault detection and isolation  soft-threshold  feature extraction  wavelet packet time-frequency spectrum  wavelet neural network
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