Authors
Hassen Keskes, Ahmed Braham, Zied Lachiri
Publication date
2013/4/1
Journal
Electric Power Systems Research
Volume
97
Pages
151-157
Publisher
Elsevier
Description
This paper presents the establishing of intelligent system for broken-rotor-bar (BRB) diagnosis based on a novel combination of both, stationary wavelet packet transform (SWPT) and multiclass wavelet support vector machines (MWSVM). The SWPT is used for feature extraction under lower sampling rate. In fact, it is demonstrated through experimental results that the use of the lower sampling rate does not affect the performance of SWPT to detect BRB, while requiring much less computation and low cost implementation. The multiclass SVM (MSVM) is used to automatically recognize the faults. Different MSVM strategies are compared with various kernel functions in terms of classification accuracy, training and testing complexity. The classification results show that the wavelet kernel function detects the faulty conditions with a higher accuracy.
Total citations
20132014201520162017201820192020202120222023202451610192123125151494