• CN:11-2187/TH
  • ISSN:0577-6686

›› 2010, Vol. 46 ›› Issue (15): 76-81.

• 论文 • 上一篇    下一篇

进化小波消噪方法及其在滚动轴承故障诊断中的应用

张弦;王宏力   

  1. 第二炮兵工程学院自动控制工程系
  • 发布日期:2010-08-05

Evolutionary Wavelet Denoising and Its Application to Ball Bearing Fault Diagnosis

ZHANG Xian;WANG Hongli   

  1. Department of Automatic Control Engineering, The Second Artillery Engineering College
  • Published:2010-08-05

摘要: 阈值是小波阈值消噪方法中决定消噪结果的关键因素,传统阈值估计方法存在抑制噪声污染与保留信号细节间的矛盾,难以实现对滚动轴承故障信号的有效消噪。为准确估计阈值以改善小波阈值消噪方法的消噪性能,提出一种基于小波变换的进化阈值消噪方法。该方法以小波变换作为含噪信号分解与重构工具,构造含噪信号在各小波分解尺度上硬阈值收缩均方误差的近似函数,利用粒子群优化进化搜索与其最小值对应的最优阈值,以近似实现均方误差最小意义下的最优消噪。模拟信号消噪分析与滚动轴承故障信号消噪实例表明,该方法可有效消除噪声对信号的干扰,并准确提取淹没在噪声背景中的故障特征,消噪性能在信噪比与均方误差意义下优于传统小波阈值消噪方法。

关键词: 故障诊断, 滚动轴承, 粒子群优化, 信号消噪, 阈值估计

Abstract: Threshold is the key factor in threshold-based wavelet denoising. Conventional threshold estimation methods fail to estimate the appropriate threshold for ball bearing fault signals denoising. To improve the denoising performance of threshold-based wavelet denoising with the conventional threshold estimation methods, an evolutionary wavelet denoising method is proposed. In the method, wavelet transform is used for the noise-contaminated signal decomposition and reconstruction, a function that approximates to the estimation error of hard thresholding is constructed and then the optimal threshold at each decomposition level is obtained by applying particle swarm optimization to the constructed function. Extensive numerical experiments on simulated signals and ball bearing fault signals are carried out to confirm the effectiveness of the method. The experimental results indicate that the method is highly effective in noise reduction and fault feature extraction. In comparison with the conventional threshold-based wavelet denoising methods, the method has better denoising performance in the sense of signal-to-noise ratio and mean square error.

Key words: Ball bearing, Fault diagnosis, Particle swarm optimization, Signal denoising, Threshold estimation

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