Application of Automated Machine Learning (AutoML) Method in Wind Turbine Fault Detection

Fault detection has drew much attention nowadays, as it can save time and operational maintenance costs, especially in the wind turbine (WT) that is becoming familiar with renewable energy. Machine learning became widespread use in fault detection methods. However, most available machine learning ne...

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Published in:Journal of Physics: Conference Series
Main Author: Fadzail N.F.; Mat Zali S.; Mid E.C.; Jailani R.
Format: Conference paper
Language:English
Published: Institute of Physics 2022
Online Access:https://www.scopus.com/inward/record.uri?eid=2-s2.0-85137151382&doi=10.1088%2f1742-6596%2f2312%2f1%2f012074&partnerID=40&md5=c6c4827e2d4d462072ea5e9015384111
id 2-s2.0-85137151382
spelling 2-s2.0-85137151382
Fadzail N.F.; Mat Zali S.; Mid E.C.; Jailani R.
Application of Automated Machine Learning (AutoML) Method in Wind Turbine Fault Detection
2022
Journal of Physics: Conference Series
2312
1
10.1088/1742-6596/2312/1/012074
https://www.scopus.com/inward/record.uri?eid=2-s2.0-85137151382&doi=10.1088%2f1742-6596%2f2312%2f1%2f012074&partnerID=40&md5=c6c4827e2d4d462072ea5e9015384111
Fault detection has drew much attention nowadays, as it can save time and operational maintenance costs, especially in the wind turbine (WT) that is becoming familiar with renewable energy. Machine learning became widespread use in fault detection methods. However, most available machine learning needs more data and much time to train. Therefore, there is a need to detect faults using a few data during the training process. This paper aims to apply Automated Machine Learning (AutoML) method for fault detection in WT systems. The fault detection in the WT system focuses on the internal stator fault in the generator as it is the main part of the WT. The AutoML model was developed using a neural network (NN) algorithm in python based on the Auto-Keras model. The model was developed using four inputs, i.e. stator and rotor currents in the d-q axis (Iqs, Ids, Iqr and Idr ) while the outputs are impedance values, i.e. stator resistance, Rs, and stator inductance, Ls . The WT system used in this research is the doubly-fed induction generator (DFIG) in MATLAB/Simulink. In the Auto-Keras model, the impedance values (Rs and L s) indicated the condition of the DFIG, either normal or fault conditions. Two fault types were applied to the WT system, i.e. inter-turn short circuit and open circuit fault. The Auto-Keras model was trained and tested with the various values of data. The accuracy and the root means square error (RMSE) value of the model were calculated. The result shows that the accuracy is high as it is more than 93% in most conditions, and the RMSE value is low, close to the zero value. Applying the AutoML method in fault detection of the WT system shows its capability to identify faults accurately. © Published under licence by IOP Publishing Ltd.
Institute of Physics
17426588
English
Conference paper
All Open Access; Gold Open Access
author Fadzail N.F.; Mat Zali S.; Mid E.C.; Jailani R.
spellingShingle Fadzail N.F.; Mat Zali S.; Mid E.C.; Jailani R.
Application of Automated Machine Learning (AutoML) Method in Wind Turbine Fault Detection
author_facet Fadzail N.F.; Mat Zali S.; Mid E.C.; Jailani R.
author_sort Fadzail N.F.; Mat Zali S.; Mid E.C.; Jailani R.
title Application of Automated Machine Learning (AutoML) Method in Wind Turbine Fault Detection
title_short Application of Automated Machine Learning (AutoML) Method in Wind Turbine Fault Detection
title_full Application of Automated Machine Learning (AutoML) Method in Wind Turbine Fault Detection
title_fullStr Application of Automated Machine Learning (AutoML) Method in Wind Turbine Fault Detection
title_full_unstemmed Application of Automated Machine Learning (AutoML) Method in Wind Turbine Fault Detection
title_sort Application of Automated Machine Learning (AutoML) Method in Wind Turbine Fault Detection
publishDate 2022
container_title Journal of Physics: Conference Series
container_volume 2312
container_issue 1
doi_str_mv 10.1088/1742-6596/2312/1/012074
url https://www.scopus.com/inward/record.uri?eid=2-s2.0-85137151382&doi=10.1088%2f1742-6596%2f2312%2f1%2f012074&partnerID=40&md5=c6c4827e2d4d462072ea5e9015384111
description Fault detection has drew much attention nowadays, as it can save time and operational maintenance costs, especially in the wind turbine (WT) that is becoming familiar with renewable energy. Machine learning became widespread use in fault detection methods. However, most available machine learning needs more data and much time to train. Therefore, there is a need to detect faults using a few data during the training process. This paper aims to apply Automated Machine Learning (AutoML) method for fault detection in WT systems. The fault detection in the WT system focuses on the internal stator fault in the generator as it is the main part of the WT. The AutoML model was developed using a neural network (NN) algorithm in python based on the Auto-Keras model. The model was developed using four inputs, i.e. stator and rotor currents in the d-q axis (Iqs, Ids, Iqr and Idr ) while the outputs are impedance values, i.e. stator resistance, Rs, and stator inductance, Ls . The WT system used in this research is the doubly-fed induction generator (DFIG) in MATLAB/Simulink. In the Auto-Keras model, the impedance values (Rs and L s) indicated the condition of the DFIG, either normal or fault conditions. Two fault types were applied to the WT system, i.e. inter-turn short circuit and open circuit fault. The Auto-Keras model was trained and tested with the various values of data. The accuracy and the root means square error (RMSE) value of the model were calculated. The result shows that the accuracy is high as it is more than 93% in most conditions, and the RMSE value is low, close to the zero value. Applying the AutoML method in fault detection of the WT system shows its capability to identify faults accurately. © Published under licence by IOP Publishing Ltd.
publisher Institute of Physics
issn 17426588
language English
format Conference paper
accesstype All Open Access; Gold Open Access
record_format scopus
collection Scopus
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