Applied Sciences (Dec 2020)

Mutual Information and Meta-Heuristic Classifiers Applied to Bearing Fault Diagnosis in Three-Phase Induction Motors

  • Gustavo Henrique Bazan,
  • Alessandro Goedtel,
  • Marcelo Favoretto Castoldi,
  • Wagner Fontes Godoy,
  • Oscar Duque-Perez,
  • Daniel Morinigo-Sotelo

DOI
https://doi.org/10.3390/app11010314
Journal volume & issue
Vol. 11, no. 1
p. 314

Abstract

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Three-phase induction motors are extensively used in industrial processes due to their robustness, adaptability to different operating conditions, and low operation and maintenance costs. Induction motor fault diagnosis has received special attention from industry since it can reduce process losses and ensure the reliable operation of industrial systems. Therefore, this paper presents a study on the use of meta-heuristic tools in the diagnosis of bearing failures in induction motors. The extraction of the fault characteristics is performed based on mutual information measurements between the stator current signals in the time domain. Then, the Artificial Bee Colony algorithm is used to select the relevant mutual information values and optimize the pattern classifier input data. To evaluate the classification accuracy under various levels of failure severity, the performance of two different pattern classifiers was compared: The C4.5 decision tree and the multi-layer artificial perceptron neural networks. The experimental results confirm the effectiveness of the proposed approach.

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