Title :
An experiment study of partial discharge pattern recognition method based on wavelet neural networks
Author :
Zheng, Dian-chun ; Zhang, Chun-xi ; Yang, Guo-qing ; Sun, Xue-yong
Author_Institution :
Electr. & Electron. Eng. Coll., Harbin Univ. Sci. & Tech.
Abstract :
Considering the time-frequency characteristic of the partial discharge (PD) signals, the kind of improved wavelet neural network is constructed by principle of the temporal-scaling approach, and it is that using temporal-scaling domain of the wavelet basis function being chosen covers that of the partial discharge signals. It is fact that the PD signals are transformed by the wavelet based on the different scales and displacements, and the wavelet detail coefficients are obtained under the different scales, which are inputted into the wavelet neural network to accomplish pattern classification during the network learning course. The PD signals, which are simulated with different PD signal sources in the lab, are de-noised and normalized. Using the power spectrum analysis method, figure out the temporal-scaling domain of the PD signals and figure out that of the wavelet function chosen, till the two pairs of parameters can be conformed, then the seating factors and displacement factors of the wavelet function, used as the structure parameters of the wavelet neural network, are taken as the basic frame of the improved wavelet neural network. The results indicate that the improved wavelet neural network has not only better identifying ability than that of the BP neural network and pattern features of the PD signals could be automatically extracted, but also the recognition precisions are higher than that of the other networks
Keywords :
feature extraction; learning (artificial intelligence); neural nets; partial discharges; pattern classification; power engineering computing; signal classification; signal denoising; signal sources; spectral analysis; time-frequency analysis; wavelet transforms; BP neural network; displacement factor; feature extraction; network learning; partial discharge patterns; pattern recognition; power spectrum analysis; temporal-scaling approach; time-frequency characteristics; wavelet neural network; Artificial neural networks; Fault location; Neural networks; Partial discharges; Pattern recognition; Pulse measurements; Signal analysis; Time domain analysis; Wavelet analysis; Wavelet domain; partial discharge; pattern recognition; wavelet neural network;
Conference_Titel :
Electrical Insulation, 2006. Conference Record of the 2006 IEEE International Symposium on
Conference_Location :
Toronto, Ont.
Print_ISBN :
1-4244-0333-2
DOI :
10.1109/ELINSL.2006.1665299