Rotor fault detector of the converter-fed induction motor based on RBF neural network

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Abstract

This paper deals with the application of the Radial Basis Function (RBF) networks for the induction motor fault detection. The rotor faults are analysed and fault symptoms are described. Next the main stages of the design methodology of the RBF-based neural detectors are described. These networks are trained and tested using measurement data of the stator current (MCSA). The efficiency of developed RBF-NN detectors is evaluated. Furthermore, influence of neural networks complexity and parameters of the RBF activation function on the quality of data classification is shown. The presented neural detectors are tested with measurement data obtained in the laboratory setup containing the converter-fed induction motor (IM) and changeable rotors with a different degree of damages.

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Kowalski, C. T., & Kaminski, M. (2014). Rotor fault detector of the converter-fed induction motor based on RBF neural network. Bulletin of the Polish Academy of Sciences: Technical Sciences, 62(1), 69–76. https://doi.org/10.2478/bpasts-2014-0008

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