Author/Authors :
Zhong, Jian-Hua Department of Electromechanical Engineering - University of Macau, Macau , Liang, JieJunYi School of Electrical, Mechanical and Mechatronic Systems - University of Technology Sydney, Sydney, Australia , Yang,Zhi-Xin Department of Electromechanical Engineering - University of Macau, Macau , Wong, Pak Kin Department of Electromechanical Engineering - University of Macau, Macau , Wang, Xian-Bo Department of Electromechanical Engineering - University of Macau, Macau
Abstract :
Fault diagnosis is very important to maintain the operation of a gas turbine generator system (GTGS) in power plants, where any abnormal situations will interrupt the electricity supply. The fault diagnosis of the GTGS faces the main challenge that the acquired data, vibration or sound signals, contain a great deal of redundant information which extends the fault identification time and degrades the diagnostic accuracy. To improve the diagnostic performance in the GTGS, an effective fault feature extraction framework is proposed to solve the problem of the signal disorder and redundant information in the acquired signal. The proposed framework combines feature extraction with a general machine learning method, support vector machine (SVM), to implement an intelligent fault diagnosis. The feature extraction method adopts wavelet packet transform and time-domain statistical features to extract the features of faults from the vibration signal. To further reduce the redundant information in extracted features, kernel principal component analysis is applied in this study. Experimental results indicate that the proposed feature extracted technique is an effective method to extract the useful features of faults, resulting in improvement of the performance of fault diagnosis for the GTGS.
Keywords :
Effective Fault , Feature Extraction Method , System Diagnosis , Gas Turbine Generator