ANFIS Models for Fault Detection and Isolation in the Drive Train of a Wind Turbine

The paper aims to improve the fault detection and isolation process in wind turbine systems by developing intelligent systems that can effectively identify and isolate faults. Specifically, the paper focuses on the drive train part of a horizontal axis wind turbine machine. The proposed fault diagno...

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Main Authors: Zakaria Zemali, Lakhmissi Cherroun, Nadji Hadroug, Ahmed Hafaifa
Format: Article
Language:English
Published: University of El Oued 2023-02-01
Series:International Journal of Energetica
Subjects:
Online Access:https://www.ijeca.info/index.php/IJECA/article/view/211
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author Zakaria Zemali
Lakhmissi Cherroun
Nadji Hadroug
Ahmed Hafaifa
author_facet Zakaria Zemali
Lakhmissi Cherroun
Nadji Hadroug
Ahmed Hafaifa
author_sort Zakaria Zemali
collection DOAJ
description The paper aims to improve the fault detection and isolation process in wind turbine systems by developing intelligent systems that can effectively identify and isolate faults. Specifically, the paper focuses on the drive train part of a horizontal axis wind turbine machine. The proposed fault diagnostic strategy is designed using an adaptive neural fuzzy inference system (ANFIS), which is a type of artificial neural network that combines the advantages of both fuzzy logic and neural networks. The ANFIS is used to generate residuals that occur after faults have been detected, and to determine the appropriate thresholds needed to correctly detect faults. The simulation results show that the proposed fault diagnostic strategy is effective in detecting faults in the drive train part of the wind turbine system. By using intelligent systems such as ANFIS, the fault detection process can be automated and streamlined, potentially reducing maintenance costs and improving the overall performance and efficiency of wind turbine systems.
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id doaj-art-47faceeb10ae45e0a77f2fcdabcf1d19
institution OA Journals
issn 2543-3717
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publishDate 2023-02-01
publisher University of El Oued
record_format Article
series International Journal of Energetica
spelling doaj-art-47faceeb10ae45e0a77f2fcdabcf1d192025-08-20T01:56:20ZengUniversity of El OuedInternational Journal of Energetica2543-37172023-02-01726470126ANFIS Models for Fault Detection and Isolation in the Drive Train of a Wind TurbineZakaria Zemali0Lakhmissi Cherroun1Nadji Hadroug2Ahmed Hafaifa3Applied Automation and Industrial Diagnostics Laboratory, Faculty of Science and Technology, University of DjelfaApplied Automation and Industrial Diagnostics Laboratory, Faculty of Science and Technology, University of DjelfaApplied Automation and Industrial Diagnostics Laboratory, Faculty of Science and Technology, University of DjelfaApplied Automation and Industrial Diagnostics Laboratory, Faculty of Science and Technology, University of DjelfaThe paper aims to improve the fault detection and isolation process in wind turbine systems by developing intelligent systems that can effectively identify and isolate faults. Specifically, the paper focuses on the drive train part of a horizontal axis wind turbine machine. The proposed fault diagnostic strategy is designed using an adaptive neural fuzzy inference system (ANFIS), which is a type of artificial neural network that combines the advantages of both fuzzy logic and neural networks. The ANFIS is used to generate residuals that occur after faults have been detected, and to determine the appropriate thresholds needed to correctly detect faults. The simulation results show that the proposed fault diagnostic strategy is effective in detecting faults in the drive train part of the wind turbine system. By using intelligent systems such as ANFIS, the fault detection process can be automated and streamlined, potentially reducing maintenance costs and improving the overall performance and efficiency of wind turbine systems.https://www.ijeca.info/index.php/IJECA/article/view/211wind turbine, drive train, fault detection, anfis, residual, estimation.
spellingShingle Zakaria Zemali
Lakhmissi Cherroun
Nadji Hadroug
Ahmed Hafaifa
ANFIS Models for Fault Detection and Isolation in the Drive Train of a Wind Turbine
International Journal of Energetica
wind turbine, drive train, fault detection, anfis, residual, estimation.
title ANFIS Models for Fault Detection and Isolation in the Drive Train of a Wind Turbine
title_full ANFIS Models for Fault Detection and Isolation in the Drive Train of a Wind Turbine
title_fullStr ANFIS Models for Fault Detection and Isolation in the Drive Train of a Wind Turbine
title_full_unstemmed ANFIS Models for Fault Detection and Isolation in the Drive Train of a Wind Turbine
title_short ANFIS Models for Fault Detection and Isolation in the Drive Train of a Wind Turbine
title_sort anfis models for fault detection and isolation in the drive train of a wind turbine
topic wind turbine, drive train, fault detection, anfis, residual, estimation.
url https://www.ijeca.info/index.php/IJECA/article/view/211
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