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Application of the fuzzy min-max neural network to fault detection and diagnosis of induction motors

journal contribution
posted on 2012-12-01, 00:00 authored by M Seera, Chee Peng LimChee Peng Lim, D Ishak, H Singh
In this paper, an application of the motor current signature analysis (MCSA) method and the fuzzy min–max (FMM) neural network to detection and classification of induction motor faults is described. The finite element method is employed to generate simulated data pertaining to changes in the stator current signatures under different motor conditions. The MCSA method is then used to process the stator current signatures. Specifically, the power spectral density is employed to extract harmonics features for fault detection and classification with the FMM network. Various types of induction motor faults, which include stator winding faults and eccentricity problems, under different load conditions are experimented. The results are analyzed and compared with those from other methods. The outcomes indicate that the proposed technique is effective for fault detection and diagnosis of induction motors under different conditions.

History

Journal

Neural computing and applications

Volume

23

Issue

Supplement 1

Pagination

191 - 200

Publisher

Springer

Location

London, England

ISSN

0941-0643

eISSN

1433-3058

Language

eng

Publication classification

C1 Refereed article in a scholarly journal

Copyright notice

2012, Springer