Title :
Accurate bearing faults classification based on statistical-time features, curvilinear component analysis and neural networks
Author :
Delgado, M. ; Cirrincione, G. ; Garcia, A. ; Ortega, A. ; Henao, H.
Author_Institution :
MCIA Res. Center, Tech. Univ. of Catalonia (UPC), Barcelona, Spain
Abstract :
Bearing faults are the commonest form of malfunction associated with electrical machines. So far, the research has been carried out mainly in the detection of localized faults, but the diagnosis of distributed faults is still under development. In this context, this work presents a new scheme for detecting and classifying both kinds of faults. This work deals with a new diagnosis monitoring scheme, which is based on statistical-time features calculated from vibration signal, curvilinear component analysis for compression and visualization of the features behavior and a hierarchical neural network structure for classification. The obtained results from different operation conditions validate the effectiveness and feasibility of the proposed methodology.
Keywords :
condition monitoring; fault diagnosis; feature extraction; machine bearings; mechanical engineering computing; neural nets; pattern classification; signal processing; statistical analysis; vibrations; accurate bearing fault classification; curvilinear component analysis; diagnosis monitoring scheme; distributed fault diagnosis; electrical machines; feature behavior compression; feature behavior visualization; hierarchical neural network structure; localized fault detection; statistical-time features; vibration signal; Vibration measurement; Visualization; Bearing balls; Classification algorithms; Fault detection; Feature extraction; Neural networks; Time domain analysis; Vibrations;
Conference_Titel :
IECON 2012 - 38th Annual Conference on IEEE Industrial Electronics Society
Conference_Location :
Montreal, QC
Print_ISBN :
978-1-4673-2419-9
Electronic_ISBN :
1553-572X
DOI :
10.1109/IECON.2012.6389596