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小波神经网络故障诊断系统的设计与应用
引用本文:郑海波,陈心昭,李志远,朱忠奎,何世娣.小波神经网络故障诊断系统的设计与应用[J].农业机械学报,2002,33(1):73-76.
作者姓名:郑海波  陈心昭  李志远  朱忠奎  何世娣
作者单位:1. 合肥工业大学机械与汽车工程学院,合肥市,230009
2. 合肥工业大学,合肥市,230009
3. 合肥工业大学研究生部,合肥市,230009
基金项目:机械工业技术发展基金资助项目 (项目编号 :97JA0 10 4)
摘    要:采用能量分布特征提取方法和优化BP算法,提出了一种基于小波变换和BP神经网络的故障诊断系统。利用该系统对汽车变速箱三挡齿轮磨损程度进行估计,诊断结果与实际完全吻合,表明该小波神经网络故障诊断系统的有效性。由于小波分析特别适用于非平稳信号的处理,因此该小波神经网络诊断系统对复杂机械设备的故障诊断有着广阔的应用前景。

关 键 词:小波分析  神经网络  故障诊断  齿轮磨损  系统设计
修稿时间:2001年2月26日

Implementation and Application of a Neural Network Fault Diagnosis System Based on Wavelet Transform
Zheng Haibo,Chen Xinzhao,Li Zhiyuan,Zhu Zhongkui\ He Shidi.Implementation and Application of a Neural Network Fault Diagnosis System Based on Wavelet Transform[J].Transactions of the Chinese Society of Agricultural Machinery,2002,33(1):73-76.
Authors:Zheng Haibo  Chen Xinzhao  Li Zhiyuan  Zhu Zhongkui\ He Shidi
Institution:Hefei University of Technology
Abstract:Vibration signals of a machine are proved to be non stationary ones. They usually carry the dynamic information of a machine and are very useful for fault diagnosis. The wavelet analysis is especially suitable for a non stationary signal processing and the artificial neural network is a very good tool for signal identification. In this paper, a new efficient fault diagnosis system based on the wavelet transform and the artificial neural networks was presented, the theoretical background of wavelet transform was given, and a much better BP algorithm based on the traditional BP algorithm was introduced. Accordingly, a new wavelet neural networks fault diagnosis system was developed. The proposed fault diagnosis system was tested on a gear wear estimation of gearbox. The results showed that the developed system was effective.
Keywords:Wavelet transform  Neural networks  Fault diagnosis  Gear wear
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