Hyperparameter Analysis-based Long-Short Term Memory (LSTM) for Power Quality Disturbances Classification
Power quality disturbances are a critical issue in electrical power systems, as they can lead to more severe problems with electrical machines or equipment, resulting in significant losses. While such disturbances are rare, using binary classification to differentiate between normal and abnormal pow...
Published in: | 2024 IEEE International Conference on Power and Energy, PECon 2024 |
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2024
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2-s2.0-85217379198 Fadzli M.F.H.M.; Shahbudin S. Hyperparameter Analysis-based Long-Short Term Memory (LSTM) for Power Quality Disturbances Classification 2024 2024 IEEE International Conference on Power and Energy, PECon 2024 10.1109/PECON62060.2024.10827412 https://www.scopus.com/inward/record.uri?eid=2-s2.0-85217379198&doi=10.1109%2fPECON62060.2024.10827412&partnerID=40&md5=ca1bb516f1ea2e09cc96fd117950055d Power quality disturbances are a critical issue in electrical power systems, as they can lead to more severe problems with electrical machines or equipment, resulting in significant losses. While such disturbances are rare, using binary classification to differentiate between normal and abnormal power quality signals has proven effective in detecting disruptions in power systems. This paper proposes a binary classification approach for identifying power quality disturbances, employing the Long Short-Term Memory (LSTM) algorithm. A hyperparameter analysis was conducted to optimize performance, and the results indicated that the highest accuracy of 91.67% was achieved with a sigmoid activation function, a learning rate of 0.0001, 40 epochs, and a batch size of 128. ©2024 IEEE. Institute of Electrical and Electronics Engineers Inc. English Conference paper |
author |
Fadzli M.F.H.M.; Shahbudin S. |
spellingShingle |
Fadzli M.F.H.M.; Shahbudin S. Hyperparameter Analysis-based Long-Short Term Memory (LSTM) for Power Quality Disturbances Classification |
author_facet |
Fadzli M.F.H.M.; Shahbudin S. |
author_sort |
Fadzli M.F.H.M.; Shahbudin S. |
title |
Hyperparameter Analysis-based Long-Short Term Memory (LSTM) for Power Quality Disturbances Classification |
title_short |
Hyperparameter Analysis-based Long-Short Term Memory (LSTM) for Power Quality Disturbances Classification |
title_full |
Hyperparameter Analysis-based Long-Short Term Memory (LSTM) for Power Quality Disturbances Classification |
title_fullStr |
Hyperparameter Analysis-based Long-Short Term Memory (LSTM) for Power Quality Disturbances Classification |
title_full_unstemmed |
Hyperparameter Analysis-based Long-Short Term Memory (LSTM) for Power Quality Disturbances Classification |
title_sort |
Hyperparameter Analysis-based Long-Short Term Memory (LSTM) for Power Quality Disturbances Classification |
publishDate |
2024 |
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2024 IEEE International Conference on Power and Energy, PECon 2024 |
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doi_str_mv |
10.1109/PECON62060.2024.10827412 |
url |
https://www.scopus.com/inward/record.uri?eid=2-s2.0-85217379198&doi=10.1109%2fPECON62060.2024.10827412&partnerID=40&md5=ca1bb516f1ea2e09cc96fd117950055d |
description |
Power quality disturbances are a critical issue in electrical power systems, as they can lead to more severe problems with electrical machines or equipment, resulting in significant losses. While such disturbances are rare, using binary classification to differentiate between normal and abnormal power quality signals has proven effective in detecting disruptions in power systems. This paper proposes a binary classification approach for identifying power quality disturbances, employing the Long Short-Term Memory (LSTM) algorithm. A hyperparameter analysis was conducted to optimize performance, and the results indicated that the highest accuracy of 91.67% was achieved with a sigmoid activation function, a learning rate of 0.0001, 40 epochs, and a batch size of 128. ©2024 IEEE. |
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Institute of Electrical and Electronics Engineers Inc. |
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English |
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Conference paper |
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scopus |
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Scopus |
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1825722578486951936 |