Introduction - If you have any usage issues, please Google them yourself
		 
In view of the above situation, a new fault diagnosis 
method is proposed based on dual-tree complex wavelet packet transform and threshold de-noising. Firstly, the 
non-stationary fault signal is decomposed into several different frequency band components through dual-tree 
complex wavelet packet decomposition. Secondly, Kurtosis and the cross-correlation coefficient of each 
component are obtained and compared. Due to the kurtosis reflecting the signal variations, if the kurtosis value is 
bigger, the degree of the change of signal is bigger too. The correlation coefficient can reflect the proximity 
between the component and the original signal at the same time, the correlation coefficient is bigger, the more 
similar with the original signal. Finally, the components that have a bigger value are chosen to be de-noised by a 
soft threshold and reconstructed by dual-tree complex wavelet packet transform. The noise interference was 
eliminated effectively, and the effective si