Detection of Corona Faults in Switchgear by Using 1D-CNN, LSTM, and 1D-CNN-LSTM Methods

The damaging effects of corona faults have made them a major concern in metal-clad switchgear, requiring extreme caution during operation. Corona faults are also the primary cause of flashovers in medium-voltage metal-clad electrical equipment. The root cause of this issue is an electrical breakdown...

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Main Authors: Mohammed Alsumaidaee Y.A., Yaw C.T., Koh S.P., Tiong S.K., Chen C.P., Yusaf T., Abdalla A.N., Ali K., Raj A.A.
Other Authors: 58648412900
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spelling my.uniten.dspace-343342024-10-14T11:19:07Z Detection of Corona Faults in Switchgear by Using 1D-CNN, LSTM, and 1D-CNN-LSTM Methods Mohammed Alsumaidaee Y.A. Yaw C.T. Koh S.P. Tiong S.K. Chen C.P. Yusaf T. Abdalla A.N. Ali K. Raj A.A. 58648412900 36560884300 22951210700 15128307800 57883616100 23112065900 25646071000 36130958600 57189492851 1D-CNN-LSTM corona discharge energy faults switchgear Air quality Electric corona Fault detection Flashover Learning systems Long short-term memory Time domain analysis 1d-CNN-LSTM Corona discharges Damaging effects Electrical equipment Electrical stress Energy Fault Medium voltage Metal-clad Time and frequency domains algorithm article deep learning human learning long short term memory network physiological stress sound worker Frequency domain analysis The damaging effects of corona faults have made them a major concern in metal-clad switchgear, requiring extreme caution during operation. Corona faults are also the primary cause of flashovers in medium-voltage metal-clad electrical equipment. The root cause of this issue is an electrical breakdown of the air due to electrical stress and poor air quality within the switchgear. Without proper preventative measures, a flashover can occur, resulting in serious harm to workers and equipment. As a result, detecting corona faults in switchgear and preventing electrical stress buildup in switches is critical. Recent years have seen the successful use of Deep Learning (DL) applications for corona and non-corona detection, owing to their autonomous feature learning capability. This paper systematically analyzes three deep learning techniques, namely 1D-CNN, LSTM, and 1D-CNN-LSTM hybrid models, to identify the most effective model for detecting corona faults. The hybrid 1D-CNN-LSTM model is deemed the best due to its high accuracy in both the time and frequency domains. This model analyzes the sound waves generated in switchgear to detect faults. The study examines model performance in both the time and frequency domains. In the time domain analysis (TDA), 1D-CNN achieved success rates of 98%, 98.4%, and 93.9%, while LSTM obtained success rates of 97.3%, 98.4%, and 92.4%. The most suitable model, the 1D-CNN-LSTM, achieved success rates of 99.3%, 98.4%, and 98.4% in differentiating corona and non-corona cases during training, validation, and testing. In the frequency domain analysis (FDA), 1D-CNN achieved success rates of 100%, 95.8%, and 95.8%, while LSTM obtained success rates of 100%, 100%, and 100%. The 1D-CNN-LSTM model achieved a 100%, 100%, and 100% success rate during training, validation, and testing. Hence, the developed algorithms achieved high performance in identifying corona faults in switchgear, particularly the 1D-CNN-LSTM model due to its accuracy in detecting corona faults in both the time and frequency domains. � 2023 by the authors. Final 2024-10-14T03:19:07Z 2024-10-14T03:19:07Z 2023 Article 10.3390/s23063108 2-s2.0-85151199257 https://www.scopus.com/inward/record.uri?eid=2-s2.0-85151199257&doi=10.3390%2fs23063108&partnerID=40&md5=4f5c3789b867e384739a6cc88591a6d4 https://irepository.uniten.edu.my/handle/123456789/34334 23 6 3108 All Open Access Gold Open Access MDPI 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 1D-CNN-LSTM
corona discharge
energy
faults
switchgear
Air quality
Electric corona
Fault detection
Flashover
Learning systems
Long short-term memory
Time domain analysis
1d-CNN-LSTM
Corona discharges
Damaging effects
Electrical equipment
Electrical stress
Energy
Fault
Medium voltage
Metal-clad
Time and frequency domains
algorithm
article
deep learning
human
learning
long short term memory network
physiological stress
sound
worker
Frequency domain analysis
spellingShingle 1D-CNN-LSTM
corona discharge
energy
faults
switchgear
Air quality
Electric corona
Fault detection
Flashover
Learning systems
Long short-term memory
Time domain analysis
1d-CNN-LSTM
Corona discharges
Damaging effects
Electrical equipment
Electrical stress
Energy
Fault
Medium voltage
Metal-clad
Time and frequency domains
algorithm
article
deep learning
human
learning
long short term memory network
physiological stress
sound
worker
Frequency domain analysis
Mohammed Alsumaidaee Y.A.
Yaw C.T.
Koh S.P.
Tiong S.K.
Chen C.P.
Yusaf T.
Abdalla A.N.
Ali K.
Raj A.A.
Detection of Corona Faults in Switchgear by Using 1D-CNN, LSTM, and 1D-CNN-LSTM Methods
description The damaging effects of corona faults have made them a major concern in metal-clad switchgear, requiring extreme caution during operation. Corona faults are also the primary cause of flashovers in medium-voltage metal-clad electrical equipment. The root cause of this issue is an electrical breakdown of the air due to electrical stress and poor air quality within the switchgear. Without proper preventative measures, a flashover can occur, resulting in serious harm to workers and equipment. As a result, detecting corona faults in switchgear and preventing electrical stress buildup in switches is critical. Recent years have seen the successful use of Deep Learning (DL) applications for corona and non-corona detection, owing to their autonomous feature learning capability. This paper systematically analyzes three deep learning techniques, namely 1D-CNN, LSTM, and 1D-CNN-LSTM hybrid models, to identify the most effective model for detecting corona faults. The hybrid 1D-CNN-LSTM model is deemed the best due to its high accuracy in both the time and frequency domains. This model analyzes the sound waves generated in switchgear to detect faults. The study examines model performance in both the time and frequency domains. In the time domain analysis (TDA), 1D-CNN achieved success rates of 98%, 98.4%, and 93.9%, while LSTM obtained success rates of 97.3%, 98.4%, and 92.4%. The most suitable model, the 1D-CNN-LSTM, achieved success rates of 99.3%, 98.4%, and 98.4% in differentiating corona and non-corona cases during training, validation, and testing. In the frequency domain analysis (FDA), 1D-CNN achieved success rates of 100%, 95.8%, and 95.8%, while LSTM obtained success rates of 100%, 100%, and 100%. The 1D-CNN-LSTM model achieved a 100%, 100%, and 100% success rate during training, validation, and testing. Hence, the developed algorithms achieved high performance in identifying corona faults in switchgear, particularly the 1D-CNN-LSTM model due to its accuracy in detecting corona faults in both the time and frequency domains. � 2023 by the authors.
author2 58648412900
author_facet 58648412900
Mohammed Alsumaidaee Y.A.
Yaw C.T.
Koh S.P.
Tiong S.K.
Chen C.P.
Yusaf T.
Abdalla A.N.
Ali K.
Raj A.A.
format Article
author Mohammed Alsumaidaee Y.A.
Yaw C.T.
Koh S.P.
Tiong S.K.
Chen C.P.
Yusaf T.
Abdalla A.N.
Ali K.
Raj A.A.
author_sort Mohammed Alsumaidaee Y.A.
title Detection of Corona Faults in Switchgear by Using 1D-CNN, LSTM, and 1D-CNN-LSTM Methods
title_short Detection of Corona Faults in Switchgear by Using 1D-CNN, LSTM, and 1D-CNN-LSTM Methods
title_full Detection of Corona Faults in Switchgear by Using 1D-CNN, LSTM, and 1D-CNN-LSTM Methods
title_fullStr Detection of Corona Faults in Switchgear by Using 1D-CNN, LSTM, and 1D-CNN-LSTM Methods
title_full_unstemmed Detection of Corona Faults in Switchgear by Using 1D-CNN, LSTM, and 1D-CNN-LSTM Methods
title_sort detection of corona faults in switchgear by using 1d-cnn, lstm, and 1d-cnn-lstm methods
publisher MDPI
publishDate 2024
_version_ 1814061116755542016