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Auteurs principaux: Güvengir, Umut, Küçük, Dilek, Buhan, Serkan, Mantaş, Cuma Ali, Yeniceli, Murathan
Format: Preprint
Publié: 2025
Sujets:
Accès en ligne:https://arxiv.org/abs/2503.13566
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author Güvengir, Umut
Küçük, Dilek
Buhan, Serkan
Mantaş, Cuma Ali
Yeniceli, Murathan
author_facet Güvengir, Umut
Küçük, Dilek
Buhan, Serkan
Mantaş, Cuma Ali
Yeniceli, Murathan
contents Automatic classification of electric power quality events with respect to their root causes is critical for electrical grid management. In this paper, we present comparative evaluation results of an extensive set of machine learning models for the classification of power quality events, based on their root causes. After extensive experiments using different machine learning libraries, it is observed that the best performing learning models turn out to be Cubic SVM and XGBoost. During error analysis, it is observed that the main source of performance degradation for both models is the classification of ABC faults as ABCG faults, or vice versa. Ultimately, the models achieving the best results will be integrated into the event classification module of a large-scale power quality and grid monitoring system for the Turkish electricity transmission system.
format Preprint
id arxiv_https___arxiv_org_abs_2503_13566
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Classification of power quality events in the transmission grid: comparative evaluation of different machine learning models
Güvengir, Umut
Küçük, Dilek
Buhan, Serkan
Mantaş, Cuma Ali
Yeniceli, Murathan
Signal Processing
Machine Learning
Automatic classification of electric power quality events with respect to their root causes is critical for electrical grid management. In this paper, we present comparative evaluation results of an extensive set of machine learning models for the classification of power quality events, based on their root causes. After extensive experiments using different machine learning libraries, it is observed that the best performing learning models turn out to be Cubic SVM and XGBoost. During error analysis, it is observed that the main source of performance degradation for both models is the classification of ABC faults as ABCG faults, or vice versa. Ultimately, the models achieving the best results will be integrated into the event classification module of a large-scale power quality and grid monitoring system for the Turkish electricity transmission system.
title Classification of power quality events in the transmission grid: comparative evaluation of different machine learning models
topic Signal Processing
Machine Learning
url https://arxiv.org/abs/2503.13566