2023
DOI: 10.3390/en16124780
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Physical Variable Measurement Techniques for Fault Detection in Electric Motors

Abstract: Induction motors are widely used worldwide for domestic and industrial applications. Fault detection and classification techniques based on signal analysis have increased in popularity due to the growing use of induction motors in new technologies such as electric vehicles, automatic control, maintenance systems, and the inclusion of renewable energy sources in electrical systems, among others. Hence, monitoring, fault detection, and classification are topics of interest for researchers, given that the presenc… Show more

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Cited by 8 publications
(7 citation statements)
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“…The median is used as the main discriminant factor in the performance of the selection process. It is considered a good detection if the healthy condition, in the upper adjacent, and the fault condition, in the lower adjacent, are not overlapped, and the distance between them is at least three standard deviations according to the Chebyshev inequality, as shown in Figure 8 [34]. Once the detection is achieved for all the frequencies at the different fault conditions (bearing ball damage, outer-race damage, and corrosion damage) for loaded and unloaded motors, in the classification block, the amplitudes are compared to select the type of fault.…”
Section: Methodsmentioning
confidence: 99%
“…The median is used as the main discriminant factor in the performance of the selection process. It is considered a good detection if the healthy condition, in the upper adjacent, and the fault condition, in the lower adjacent, are not overlapped, and the distance between them is at least three standard deviations according to the Chebyshev inequality, as shown in Figure 8 [34]. Once the detection is achieved for all the frequencies at the different fault conditions (bearing ball damage, outer-race damage, and corrosion damage) for loaded and unloaded motors, in the classification block, the amplitudes are compared to select the type of fault.…”
Section: Methodsmentioning
confidence: 99%
“…Their study focuses on utilizing MCSA to detect and diagnose faults in IMs, contributing to improved motor maintenance and reliability. These recent article [31]- [36] discusses various techniques for detecting faults in electric motors by measuring physical variables and other techniques.…”
Section: Literature Reviewmentioning
confidence: 99%
“…In today's industrial landscape, three-phase IMs dominate and account for over 85% of all electric motor utilization [1]. However, despite the high reliability and durability of IMs, they are prone to various types of faults [2]. The most common faults of IMs include bearings, rotor cages, and stator winding faults.…”
Section: Introductionmentioning
confidence: 99%