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The Use of Digital Twins in Finite Element for the Study of Induction Motors Faults

Overview
Journal Sensors (Basel)
Publisher MDPI
Specialty Biotechnology
Date 2021 Dec 10
PMID 34883837
Citations 2
Authors
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Abstract

Induction motors play a key role in the industrial sector. Thus, the correct diagnosis and classification of faults on these machines are important, even in the initial stages of evolution. Such analysis allows for increased productivity, avoids unexpected process interruptions, and prevents damage to machines. Usually, fault diagnosis is carried out by analyzing the characteristic effects caused by the faults. Thus, it is necessary to know and understand the behavior during the operation of the faulty machine. In general, monitoring these characteristics is complex, as it is necessary to acquire signals from the same motor with and without failures for comparison purposes. Whether in an industrial environment or in laboratories, the experimental characterization of failures can become unfeasible for several reasons. Thus, computer simulation of faulty motors digital twins can be an important alternative for failure analysis, especially in large motors. From this perspective, this paper presents and discusses several limitations found in the technical literature that can be minimized with the implementation of digital twins. In addition, a 3D finite element model of an induction motor with broken rotor bars is demonstrated, and motor current signature analysis is used to verify the fault effects. Results are analyzed in the time and frequency domain. Additionally, an artificial neural network of the multilayer perceptron type is used to classify the failure of broken bars in the 3D model rotor.

Citing Articles

Digital Twin Approach for Operation and Maintenance of Transportation System-Systematic Review.

Werbinska-Wojciechowska S, Giel R, Winiarska K Sensors (Basel). 2024; 24(18).

PMID: 39338814 PMC: 11435829. DOI: 10.3390/s24186069.


Exploring Digital Twin-Based Fault Monitoring: Challenges and Opportunities.

Bofill J, Abisado M, Villaverde J, Sampedro G Sensors (Basel). 2023; 23(16).

PMID: 37631622 PMC: 10458716. DOI: 10.3390/s23167087.

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