Power Quality Disturbances Classification Analysis Using EfficientNet Architecture
Power quality denotes the methodology employed to supply power and ground-sensitive equipment in a manner conducive to optimal equipment functionality. It encompasses a diverse range of challenges, including voltage fluctuations like sags and spikes, harmonics, transients, and voltage imbalances, co...
Published in: | 2024 IEEE 15th Control and System Graduate Research Colloquium, ICSGRC 2024 - Conference Proceeding |
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2-s2.0-85206660808 Fitri Mat Zabidi M.D.; Shahbudin S.; Sulaiman S.I.; Abdul Rahman F.Y.; Saad H. Power Quality Disturbances Classification Analysis Using EfficientNet Architecture 2024 2024 IEEE 15th Control and System Graduate Research Colloquium, ICSGRC 2024 - Conference Proceeding 10.1109/ICSGRC62081.2024.10691145 https://www.scopus.com/inward/record.uri?eid=2-s2.0-85206660808&doi=10.1109%2fICSGRC62081.2024.10691145&partnerID=40&md5=9c37acd187e6f8d46cbcea067d63bd18 Power quality denotes the methodology employed to supply power and ground-sensitive equipment in a manner conducive to optimal equipment functionality. It encompasses a diverse range of challenges, including voltage fluctuations like sags and spikes, harmonics, transients, and voltage imbalances, collectively known as power quality disturbances (PQD). Recently, Convolutional neural networks (CNN) have been the most often utilized technique for PQD classification However, CNN's most recent version has not yet been implemented. Therefore, the objectives of this work are to use Fourier Transform as a feature extraction method in classifying and analyzing PQD using EfficientNet with 8 models (from B0 to B7) and to validate and evaluate the performance of the best EfficientNet model by comparing it with 1D-CNN and ResNet-50 architectures. The results show that EfficientNet B0 outperformed 1D-CNN and ResNet-50 in terms of accuracy (84.72%), precision (90%), recall (84.33%), and F1-score (86%), among other metrics. This research will help to improve the PQD classification system. © 2024 IEEE. Institute of Electrical and Electronics Engineers Inc. English Conference paper |
author |
Fitri Mat Zabidi M.D.; Shahbudin S.; Sulaiman S.I.; Abdul Rahman F.Y.; Saad H. |
spellingShingle |
Fitri Mat Zabidi M.D.; Shahbudin S.; Sulaiman S.I.; Abdul Rahman F.Y.; Saad H. Power Quality Disturbances Classification Analysis Using EfficientNet Architecture |
author_facet |
Fitri Mat Zabidi M.D.; Shahbudin S.; Sulaiman S.I.; Abdul Rahman F.Y.; Saad H. |
author_sort |
Fitri Mat Zabidi M.D.; Shahbudin S.; Sulaiman S.I.; Abdul Rahman F.Y.; Saad H. |
title |
Power Quality Disturbances Classification Analysis Using EfficientNet Architecture |
title_short |
Power Quality Disturbances Classification Analysis Using EfficientNet Architecture |
title_full |
Power Quality Disturbances Classification Analysis Using EfficientNet Architecture |
title_fullStr |
Power Quality Disturbances Classification Analysis Using EfficientNet Architecture |
title_full_unstemmed |
Power Quality Disturbances Classification Analysis Using EfficientNet Architecture |
title_sort |
Power Quality Disturbances Classification Analysis Using EfficientNet Architecture |
publishDate |
2024 |
container_title |
2024 IEEE 15th Control and System Graduate Research Colloquium, ICSGRC 2024 - Conference Proceeding |
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container_issue |
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doi_str_mv |
10.1109/ICSGRC62081.2024.10691145 |
url |
https://www.scopus.com/inward/record.uri?eid=2-s2.0-85206660808&doi=10.1109%2fICSGRC62081.2024.10691145&partnerID=40&md5=9c37acd187e6f8d46cbcea067d63bd18 |
description |
Power quality denotes the methodology employed to supply power and ground-sensitive equipment in a manner conducive to optimal equipment functionality. It encompasses a diverse range of challenges, including voltage fluctuations like sags and spikes, harmonics, transients, and voltage imbalances, collectively known as power quality disturbances (PQD). Recently, Convolutional neural networks (CNN) have been the most often utilized technique for PQD classification However, CNN's most recent version has not yet been implemented. Therefore, the objectives of this work are to use Fourier Transform as a feature extraction method in classifying and analyzing PQD using EfficientNet with 8 models (from B0 to B7) and to validate and evaluate the performance of the best EfficientNet model by comparing it with 1D-CNN and ResNet-50 architectures. The results show that EfficientNet B0 outperformed 1D-CNN and ResNet-50 in terms of accuracy (84.72%), precision (90%), recall (84.33%), and F1-score (86%), among other metrics. This research will help to improve the PQD classification system. © 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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1814778500749459456 |