J. Lin et Ls. Qu, Feature extraction based on Morlet wavelet and its application for mechanical fault diagnosis, J SOUND VIB, 234(1), 2000, pp. 135-148
The vibration signals of a machine always carry the dynamic information of
the machine. These signals are very useful for the feature extraction and f
ault diagnosis. However, in many cases, because these signals have very low
signal-to-noise ratio (SNR), to extract feature components becomes difficu
lt and the applicability of information drops down. Wavelet analysis in an
effective tool for signal processing and feature extraction. In this paper,
a denoising method based on wavelet analysis is applied to feature extract
ion for mechanical vibration signals. This method is an advanced version of
the famous "soft-thresholding denoising method" proposed by Donoho and Joh
nstone. Based on the Morlet wavelet, the time-frequency resolution can be a
dapted to different signals of interest. In this paper, this denoising meth
od is introduced in detail. The results of the application in rolling beari
ng diagnosis and gear-box diagnosis are satisfactory. (C) 2000 Academic Pre
ss.