Abstract

The induction motor (IM) is considered to be one of the most important types of motors used in industries. A sudden failure in this machine can lead to unwanted downtime, with consequences in costs, product quality, and safety. Over the last decade, several methods and techniques have been proposed to diagnose and detect faults in induction machines. In this paper, we present the development of a new algorithm based on the combination of both the Park’s vector approach (PVA) and the extended Park’s vector approach (EPVA) for broken rotor bars (BRBs) fault detection and identification. This fault can be detected using the PVA by monitoring the thickness and orientation of the park’s vector pattern and using EPVA by identifying specific spectral components related to the fault. For ability evaluation of our suggested algorithm, simulations and experiments are conducted and presented. The obtained results demonstrate that the proposed algorithm is accurate and effective and can be extensively used in IM fault detections and identifications.

Highlights

  • Squirrel cage induction motors (SCIM) are types of electrical machines that are widely considered in modern industries [1,2,3,4,5], with power ranges from a few kilo-watts to numerous mega-watts

  • It is recognized that the apparition of a rotor fault will create spectral components in the left and the right sides of the fundamental frequency of the line currents spectrum located at (1 ± 2·s)·fs

  • The experimental laboratory setup consists of a 1.5 kW three-phase squirrel-cage motor, a three-phase autotransformer, a variable resistor, a DC motor used as a separate

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Summary

Introduction

Squirrel cage induction motors (SCIM) are types of electrical machines that are widely considered in modern industries [1,2,3,4,5], with power ranges from a few kilo-watts to numerous mega-watts. This is due to its reliability, hardiness, low cost, quasi-absence of maintenance, ease of starting, high efficiency, etc. An unexpected failure can lead to unwanted downtime and heavy financial losses to the industries regarding maintenance cost and profits [1]

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