Abstract

Bearing faults account for over 40% of induction motor faults, and for this reason, for several decades, much attention has been paid to their condition monitoring, through vibration measurements and, more recently, through electromagnetic signal analysis. Furthermore, in the last few years, research has been focused on evaluating deep learning algorithms for the automatic diagnosis of these faults. Therefore, the purpose of this study is to propose a novel procedure to automatically diagnose different types of bearing faults and load anomalies by means of the stator current and the external stray flux measured on the induction motor in which the bearings are installed. All the data were collected by performing experimental tests in the laboratory. Then, these data were processed to obtain images (scalograms and spectrograms), which were elaborated by a pre-trained Deep Convolutional Neural Network, modified through the transfer learning technique. The results demonstrated the ability of the electromagnetic signals, and in particular of the stray flux, to detect bearing faults and mechanical anomalies, in agreement with the recent literature. Moreover, the Convolutional Neural Network has been proven to be able to automatically discriminate bearing defects and with respect to the healthy condition.

Highlights

  • IntroductionPublisher’s Note: MDPI stays neutral with regard to jurisdictional claims in published maps and institutional affiliations

  • The research group of this paper has previously investigated the advantages offered by electromagnetic signal analysis for bearing diagnostics, in particular, Motor Current Signature Analysis (MCSA) for single-point defects and generalized roughness [7], stray flux analysis for single-point defects [8], and both signals for identifying different steps of generalized roughness [9]

  • The results presented in this paper have demonstrated the ability of electromagnetic signals coming from an induction motor in detecting different types of bearing faults and mechanical anomalies due to the load

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Summary

Introduction

Publisher’s Note: MDPI stays neutral with regard to jurisdictional claims in published maps and institutional affiliations. Rolling bearings are purely mechanical elements; they represent a critical factor for the safe operation of rotating electrical machines. If their maintenance is disregarded, i.e., if they are not correctly lubricated and/or substituted in due time, they can fail, causing the breakdown of the electrical machine. The power supply of electrical motors by means of electronic converters can arouse shaft voltage and bearing currents if the bearing is not properly insulated, with a consequent early fault of the bearing itself [1]

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