Title :
Monitoring and diagnosis of induction motors electrical faults using a current Park´s vector pattern learning approach
Author :
Nejjari, Hamid ; Benbouzid, M.E.H.
Author_Institution :
Ecole Nat. Superieure des Arts et Metiers, Lille, France
Abstract :
Various applications of artificial neural networks (ANNs) presented in the literature prove that such technique is well suited to cope with online fault diagnosis in induction motors. The aim of this paper is to present a methodology by which induction motor electrical faults can be diagnosed. The proposed methodology is based on the so-called Park´s vector approach. In fact, stator current Park´s vector patterns are first learned, using ANN´s, and then used to discern between “healthy” and “faulty” induction motors. The diagnosis process was tested on both classical and decentralized approaches. The purpose of a decentralized architecture is to facilitate a satisfactory distributed implementation of new types of faults to the initial NN monitoring system. The generality of the proposed methodology has been experimentally tested on a 4 kW squirrel-cage induction motor. The obtained results provide a satisfactory level of accuracy, indicating a promising industrial application of the hybrid Park´s vector-neural networks approach
Keywords :
computerised monitoring; electrical faults; fault diagnosis; learning (artificial intelligence); machine testing; neural nets; pattern recognition; power engineering computing; squirrel cage motors; stators; vectors; 4 kW; artificial neural networks; computerised monitoring system; electrical fault diagnosis; electrical fault monitoring; online fault diagnosis; pattern learning approach; squirrel-cage induction motor; stator current Park´s vector; Artificial neural networks; Condition monitoring; Electric machines; Fault diagnosis; Induction motors; Neural networks; Signal detection; Stators; Testing; Voltage;
Journal_Title :
Industry Applications, IEEE Transactions on