Title :
Feature Extraction Method in Fault Diagnosis Based on Wavelet Fuzzy Network for Power System Rotating Machinery
Author :
Shanlin, Kang ; Peilin, Pang ; Feng, Fan ; Guangbin, Ding
Author_Institution :
Hebei Univ. of Eng., Handan
Abstract :
A new combined fault diagnosis approach for turbo-generator set based on wavelet fuzzy network is proposed. The wavelet transform is used to extract fault characteristics and neural network is used to diagnose the faults. To improve the performance of applying traditional fault diagnosis method to the vibrant faults, a novel method based on the statistic rule is brought forward to determine the threshold of each order of wavelet space and the decomposition level adaptively, increasing the signal-noise-ratio (SNR). The fault modes are classified by fuzzy diagnosis equation based on correlation matrix which shows good ability of self-adaption and self-learning. The improved least squares algorithm (LSA) is used to fulfill the network structure and the robustness of fault diagnosis equation is discussed. By means of choosing enough samples to train the fault diagnosis equation and the information representing the faults is input into the trained diagnosis equation,and according to the output result the type of fault can be determined. Actual applications show that the proposed method can effectively diagnose multi-concurrent fault for stator temperature fluctuation and rotor vibration and the diagnosis result is correct,increasing the accuracy of the fault diagnosis for rotating machinery.
Keywords :
electric machine analysis computing; fault diagnosis; fuzzy set theory; least mean squares methods; turbogenerators; wavelet transforms; combined fault diagnosis approach; correlation matrix; decomposition level; fault diagnosis; feature extraction method; fuzzy diagnosis equation; improved least squares algorithm; neural network; power system rotating machinery; signal-noise-ratio; statistic rule; turbo-generator set; vibrant faults; wavelet fuzzy network; wavelet space; wavelet transform; Equations; Fault diagnosis; Feature extraction; Fuzzy sets; Fuzzy systems; Machinery; Neural networks; Power system faults; Statistics; Wavelet transforms; Fault diagnosis; Signal de-noising; Turbo-generator set; Wavelet transform; fuzzy theory;
Conference_Titel :
Control Conference, 2007. CCC 2007. Chinese
Conference_Location :
Hunan
Print_ISBN :
978-7-81124-055-9
Electronic_ISBN :
978-7-900719-22-5
DOI :
10.1109/CHICC.2006.4347510