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Machine Learning Based Method for Impedance Estimation and Unbalance Supply Voltage Detection in Induction Motors

Induction motors (IMs) are widely used in industrial applications due to their advantages over other motor types. However, the efficiency and lifespan of IMs can be significantly impacted by operating conditions, especially Unbalanced Supply Voltages (USV), which are common in industrial plants. Det...

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Autores principales: Laadjal, Khaled, Amaral, Acácio M. R., Sahraoui, Mohamed, Cardoso, Antonio J. Marques
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10537051/
https://www.ncbi.nlm.nih.gov/pubmed/37766042
http://dx.doi.org/10.3390/s23187989
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author Laadjal, Khaled
Amaral, Acácio M. R.
Sahraoui, Mohamed
Cardoso, Antonio J. Marques
author_facet Laadjal, Khaled
Amaral, Acácio M. R.
Sahraoui, Mohamed
Cardoso, Antonio J. Marques
author_sort Laadjal, Khaled
collection PubMed
description Induction motors (IMs) are widely used in industrial applications due to their advantages over other motor types. However, the efficiency and lifespan of IMs can be significantly impacted by operating conditions, especially Unbalanced Supply Voltages (USV), which are common in industrial plants. Detecting and accurately assessing the severity of USV in real-time is crucial to prevent major breakdowns and enhance reliability and safety in industrial facilities. This paper presented a reliable method for precise online detection of USV by monitoring a relevant indicator, denominated by negative voltage factor (NVF), which, in turn, is obtained using the voltage symmetrical components. On the other hand, impedance estimation proves to be fundamental to understand the behavior of motors and identify possible problems. IM impedance affects its performance, namely torque, power factor and efficiency. Furthermore, as the presence of faults or abnormalities is manifested by the modification of the IM impedance, its estimation is particularly useful in this context. This paper proposed two machine learning (ML) models, the first one estimated the IM stator phase impedance, and the second one detected USV conditions. Therefore, the first ML model was capable of estimating the IM phases impedances using just the phase currents with no need for extra sensors, as the currents were used to control the IM. The second ML model required both phase currents and voltages to estimate NVF. The proposed approach used a combination of a Regressor Decision Tree (DTR) model with the Short Time Least Squares Prony (STLSP) technique. The STLSP algorithm was used to create the datasets that will be used in the training and testing phase of the DTR model, being crucial in the creation of both features and targets. After the training phase, the STLSP technique was again used on completely new data to obtain the DTR model inputs, from which the ML models can estimate desired physical quantities (phases impedance or NVF).
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spelling pubmed-105370512023-09-29 Machine Learning Based Method for Impedance Estimation and Unbalance Supply Voltage Detection in Induction Motors Laadjal, Khaled Amaral, Acácio M. R. Sahraoui, Mohamed Cardoso, Antonio J. Marques Sensors (Basel) Article Induction motors (IMs) are widely used in industrial applications due to their advantages over other motor types. However, the efficiency and lifespan of IMs can be significantly impacted by operating conditions, especially Unbalanced Supply Voltages (USV), which are common in industrial plants. Detecting and accurately assessing the severity of USV in real-time is crucial to prevent major breakdowns and enhance reliability and safety in industrial facilities. This paper presented a reliable method for precise online detection of USV by monitoring a relevant indicator, denominated by negative voltage factor (NVF), which, in turn, is obtained using the voltage symmetrical components. On the other hand, impedance estimation proves to be fundamental to understand the behavior of motors and identify possible problems. IM impedance affects its performance, namely torque, power factor and efficiency. Furthermore, as the presence of faults or abnormalities is manifested by the modification of the IM impedance, its estimation is particularly useful in this context. This paper proposed two machine learning (ML) models, the first one estimated the IM stator phase impedance, and the second one detected USV conditions. Therefore, the first ML model was capable of estimating the IM phases impedances using just the phase currents with no need for extra sensors, as the currents were used to control the IM. The second ML model required both phase currents and voltages to estimate NVF. The proposed approach used a combination of a Regressor Decision Tree (DTR) model with the Short Time Least Squares Prony (STLSP) technique. The STLSP algorithm was used to create the datasets that will be used in the training and testing phase of the DTR model, being crucial in the creation of both features and targets. After the training phase, the STLSP technique was again used on completely new data to obtain the DTR model inputs, from which the ML models can estimate desired physical quantities (phases impedance or NVF). MDPI 2023-09-20 /pmc/articles/PMC10537051/ /pubmed/37766042 http://dx.doi.org/10.3390/s23187989 Text en © 2023 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Laadjal, Khaled
Amaral, Acácio M. R.
Sahraoui, Mohamed
Cardoso, Antonio J. Marques
Machine Learning Based Method for Impedance Estimation and Unbalance Supply Voltage Detection in Induction Motors
title Machine Learning Based Method for Impedance Estimation and Unbalance Supply Voltage Detection in Induction Motors
title_full Machine Learning Based Method for Impedance Estimation and Unbalance Supply Voltage Detection in Induction Motors
title_fullStr Machine Learning Based Method for Impedance Estimation and Unbalance Supply Voltage Detection in Induction Motors
title_full_unstemmed Machine Learning Based Method for Impedance Estimation and Unbalance Supply Voltage Detection in Induction Motors
title_short Machine Learning Based Method for Impedance Estimation and Unbalance Supply Voltage Detection in Induction Motors
title_sort machine learning based method for impedance estimation and unbalance supply voltage detection in induction motors
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10537051/
https://www.ncbi.nlm.nih.gov/pubmed/37766042
http://dx.doi.org/10.3390/s23187989
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