Fault Detection for Medium Voltage Switchgear Using a Deep Learning Hybrid 1D-CNN-LSTM Model

Medium voltage (MV) switchgear is a vital part of modern power systems, responsible for regulating the flow of electrical power and ensuring the safety of equipment and personnel. However, switchgear can experience various types of faults that can compromise its reliability and safety. Common faults...

Full description

Saved in:
Bibliographic Details
Main Authors: Alsumaidaee Y.A.M., Paw J.K.S., Yaw C.T., Tiong S.K., Chen C.P., Yusaf T., Benedict F., Kadirgama K., Hong T.C., Abdalla A.N.
Other Authors: 58648412900
Format: Article
Published: Institute of Electrical and Electronics Engineers Inc. 2024
Subjects:
Tags: Add Tag
No Tags, Be the first to tag this record!
Institution: Universiti Tenaga Nasional
id my.uniten.dspace-34571
record_format dspace
spelling my.uniten.dspace-345712024-10-14T11:20:45Z Fault Detection for Medium Voltage Switchgear Using a Deep Learning Hybrid 1D-CNN-LSTM Model Alsumaidaee Y.A.M. Paw J.K.S. Yaw C.T. Tiong S.K. Chen C.P. Yusaf T. Benedict F. Kadirgama K. Hong T.C. Abdalla A.N. 58648412900 58168727000 36560884300 15128307800 57883616100 23112065900 57194591957 12761486500 58486311800 25646071000 arcing fault deep learning Energy fault detection hybrid model medium voltage switchgear power system safety Accident prevention Deep learning Electric power system control Fault detection Finite difference method Frequency domain analysis Arcing faults Corona Deep learning Energy Faults detection Faults diagnosis Hybrid model Medium voltage Medium voltage switchgears Power system safeties Ultrasonic imaging Medium voltage (MV) switchgear is a vital part of modern power systems, responsible for regulating the flow of electrical power and ensuring the safety of equipment and personnel. However, switchgear can experience various types of faults that can compromise its reliability and safety. Common faults in switchgear include arcing, tracking, corona, normal cases, and mechanical faults. Accurate detection of these faults is essential for maintaining the safety of MV switchgear. In this paper, we propose a novel approach for fault detection using a hybrid model (1D-CNN-LSTM) in both the time domain (TD) and frequency domain (FD). The proposed approach involves gathering a dataset of switchgear operation data and pre-processing it to prepare it for training. The hybrid model is then trained on this dataset, and its performance is evaluated in the testing phase. The results of the testing phase demonstrate the effectiveness of the hybrid model in detecting faults. The model achieved 100% accuracy in both the time and frequency domains for classifying faults in Switchgear, including arcing, tracking, and mechanical faults. Additionally, the model achieved 98.4% accuracy in detecting corona faults in the TD. The hybrid model proposed in this study provides an effective and efficient approach for fault detection in MV switchgear. By learning spatial and temporal features simultaneously, this model can accurately classify faults in both the TD and FD. This approach has significant potential to improve the safety of MV switchgear as well as other industrial applications. � 2013 IEEE. Final 2024-10-14T03:20:45Z 2024-10-14T03:20:45Z 2023 Article 10.1109/ACCESS.2023.3294093 2-s2.0-85164727551 https://www.scopus.com/inward/record.uri?eid=2-s2.0-85164727551&doi=10.1109%2fACCESS.2023.3294093&partnerID=40&md5=cbdd10ffca1efa2e2667dfcf65e3cc7b https://irepository.uniten.edu.my/handle/123456789/34571 11 97574 97589 All Open Access Gold Open Access Institute of Electrical and Electronics Engineers Inc. Scopus
institution Universiti Tenaga Nasional
building UNITEN Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Tenaga Nasional
content_source UNITEN Institutional Repository
url_provider http://dspace.uniten.edu.my/
topic arcing fault
deep learning
Energy
fault detection
hybrid model
medium voltage switchgear
power system safety
Accident prevention
Deep learning
Electric power system control
Fault detection
Finite difference method
Frequency domain analysis
Arcing faults
Corona
Deep learning
Energy
Faults detection
Faults diagnosis
Hybrid model
Medium voltage
Medium voltage switchgears
Power system safeties
Ultrasonic imaging
spellingShingle arcing fault
deep learning
Energy
fault detection
hybrid model
medium voltage switchgear
power system safety
Accident prevention
Deep learning
Electric power system control
Fault detection
Finite difference method
Frequency domain analysis
Arcing faults
Corona
Deep learning
Energy
Faults detection
Faults diagnosis
Hybrid model
Medium voltage
Medium voltage switchgears
Power system safeties
Ultrasonic imaging
Alsumaidaee Y.A.M.
Paw J.K.S.
Yaw C.T.
Tiong S.K.
Chen C.P.
Yusaf T.
Benedict F.
Kadirgama K.
Hong T.C.
Abdalla A.N.
Fault Detection for Medium Voltage Switchgear Using a Deep Learning Hybrid 1D-CNN-LSTM Model
description Medium voltage (MV) switchgear is a vital part of modern power systems, responsible for regulating the flow of electrical power and ensuring the safety of equipment and personnel. However, switchgear can experience various types of faults that can compromise its reliability and safety. Common faults in switchgear include arcing, tracking, corona, normal cases, and mechanical faults. Accurate detection of these faults is essential for maintaining the safety of MV switchgear. In this paper, we propose a novel approach for fault detection using a hybrid model (1D-CNN-LSTM) in both the time domain (TD) and frequency domain (FD). The proposed approach involves gathering a dataset of switchgear operation data and pre-processing it to prepare it for training. The hybrid model is then trained on this dataset, and its performance is evaluated in the testing phase. The results of the testing phase demonstrate the effectiveness of the hybrid model in detecting faults. The model achieved 100% accuracy in both the time and frequency domains for classifying faults in Switchgear, including arcing, tracking, and mechanical faults. Additionally, the model achieved 98.4% accuracy in detecting corona faults in the TD. The hybrid model proposed in this study provides an effective and efficient approach for fault detection in MV switchgear. By learning spatial and temporal features simultaneously, this model can accurately classify faults in both the TD and FD. This approach has significant potential to improve the safety of MV switchgear as well as other industrial applications. � 2013 IEEE.
author2 58648412900
author_facet 58648412900
Alsumaidaee Y.A.M.
Paw J.K.S.
Yaw C.T.
Tiong S.K.
Chen C.P.
Yusaf T.
Benedict F.
Kadirgama K.
Hong T.C.
Abdalla A.N.
format Article
author Alsumaidaee Y.A.M.
Paw J.K.S.
Yaw C.T.
Tiong S.K.
Chen C.P.
Yusaf T.
Benedict F.
Kadirgama K.
Hong T.C.
Abdalla A.N.
author_sort Alsumaidaee Y.A.M.
title Fault Detection for Medium Voltage Switchgear Using a Deep Learning Hybrid 1D-CNN-LSTM Model
title_short Fault Detection for Medium Voltage Switchgear Using a Deep Learning Hybrid 1D-CNN-LSTM Model
title_full Fault Detection for Medium Voltage Switchgear Using a Deep Learning Hybrid 1D-CNN-LSTM Model
title_fullStr Fault Detection for Medium Voltage Switchgear Using a Deep Learning Hybrid 1D-CNN-LSTM Model
title_full_unstemmed Fault Detection for Medium Voltage Switchgear Using a Deep Learning Hybrid 1D-CNN-LSTM Model
title_sort fault detection for medium voltage switchgear using a deep learning hybrid 1d-cnn-lstm model
publisher Institute of Electrical and Electronics Engineers Inc.
publishDate 2024
_version_ 1814061185908080640