Authors
Gustavo Henrique Bazan, Paulo Rogério Scalassara, Wagner Endo, Alessandro Goedtel, Wagner Fontes Godoy, Rodrigo Henrique Cunha Palácios
Publication date
2017/2/1
Journal
Electric Power Systems Research
Volume
143
Pages
347-356
Publisher
Elsevier
Description
The three-phase induction motors are considered one of the most important elements of the industrial process. However, in this environment, these machines are subject to electrical and mechanical faults, which may cause significant financial losses. Thus, the purpose of this paper is to present a pattern recognition method for the detection of stator windings short circuits based on measures of mutual information between the phase current signals. In order to validate the proposed patterns, feature vectors obtained from normal and faulty motors are applied to two topologies of artificial neural networks. The classification results presented accuracies over 93% even when the motors were subject to several conditions of load torque and power supply voltage unbalance.
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