QI Peng, FAN YuGang, WU JianDe. STUDY ON FAULT DIAGNOSIS METHOD BASED ON MORLET WAVELET-SVD AND VPMCD. [J]. 39(2):247-253(2017)
DOI:
QI Peng, FAN YuGang, WU JianDe. STUDY ON FAULT DIAGNOSIS METHOD BASED ON MORLET WAVELET-SVD AND VPMCD. [J]. 39(2):247-253(2017) DOI: 10.16579/j.issn.1001.9669.2017.02.002.
STUDY ON FAULT DIAGNOSIS METHOD BASED ON MORLET WAVELET-SVD AND VPMCD
如何在含有噪声的振动信号中提取特征参数,是轴承故障诊断的关键问题,为此提出一种基于Morlet小波-奇异值分解(Singular Value Decomposition,SVD)和变量预测模型模式识别(Variable Predictive Model Based Class Discriminate,VPMCD)的故障诊断方法。首先对时域采样信号进行Morlet小波变换预处理,将所得时频系数矩阵进行SVD分析,根据奇异值曲率谱特征滤除噪声,以提取相应尺度下的微弱故障信息;然后自适应选取最佳尺度附近的分量信号,并将Shannon能量熵作为特征参数,以此构建特征向量,用于建立基于VPMCD的故障识别模型。实验采用5折交叉验证法及Jackknife检验法对所提方法进行检验,结果证明了所提方法的有效性。
Abstract
How to extract characteristic parameters from vibration signals with noise is a key problem of bearing fault diagnosis. A novel method based on Morlet wavelet-Singular Value Decomposition( SVD) and Variable Predictive Model based Class Discriminate( VPMCD) was proposed in this paper aiming to solve this problem. Firstly,Morlet wavelet transform was used to pre-process the signals in the time domain to obtain a time-frequency coefficient matrix,then SVD was applied to the matrix to remove noise and extract the weak fault information in the corresponding dimensions according to the singular value curvature spectrum; Secondly,the signal components near the optimal meature were selected,and the Shannon energy entropy were used as the characteristic parameters to construct the feature vectors,which were then used to establish the fault identification model based on VPMCD. Finally,5-fold cross validation method and Jackknife test method were adopted to verify the proposed method,and the results have demonstrated its effectiveness.
关键词
奇异值分解变量预测模型小波变换能量熵故障诊断
Keywords
Singular value decompositionVariable predictive modelWavelet transformEnergy entropyFault diagnosis