Predicting weather-related power outages in large scale distribution grids with deep learning ensembles

Weather events are primarily contributors to electrical supply disruptions, prompting the need to accurately forecast these weather-related power outages. This paper focuses on predicting daily reported incidences in electrical grids within specific regions, leveraging weather conditions as specific...

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Main Authors: L. Prieto-Godino, C. Peláez-Rodríguez, J. Pérez-Aracil, J. Pastor-Soriano, S. Salcedo-Sanz
Format: Article
Language:English
Published: Elsevier 2025-09-01
Series:International Journal of Electrical Power & Energy Systems
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Online Access:http://www.sciencedirect.com/science/article/pii/S014206152500359X
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author L. Prieto-Godino
C. Peláez-Rodríguez
J. Pérez-Aracil
J. Pastor-Soriano
S. Salcedo-Sanz
author_facet L. Prieto-Godino
C. Peláez-Rodríguez
J. Pérez-Aracil
J. Pastor-Soriano
S. Salcedo-Sanz
author_sort L. Prieto-Godino
collection DOAJ
description Weather events are primarily contributors to electrical supply disruptions, prompting the need to accurately forecast these weather-related power outages. This paper focuses on predicting daily reported incidences in electrical grids within specific regions, leveraging weather conditions as specific predictive variables. An optimization-based feature selection approach has been considered for selecting the optimal Reanalysis node locations used as predictors. To overcome the data imbalance challenge and enhance prediction accuracy, we propose a Deep Learning-based (DL) ensemble algorithm. Five distinct DL architectures are considered, generating multiple individual learners with randomly selected hyperparameters. Diversity is ensured by training each model with slightly different randomly sampled data. Three information fusion techniques construct the final ensemble models. The proposed approach has been successfully evaluated in predicting real daily reported incidences in distribution lines across two Spanish provinces, Valencia and Albacete, achieving an accurate prediction of days with extreme incidences while maintaining a good overall performance and a low rate of false alarms. The top-performing models using this methodology achieve detection rates of 38% and 73%, with false alarm rates of 1% and 3%, respectively. This approach not only enhances prediction accuracy compared to individual learners but also improves the generalization ability and robustness of standalone DL models. Additionally, it effectively reduces the inherent overfitting of these methods, removing the necessity for a complex hyperparameter selection process.
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spelling doaj-art-924e09912f9c4f4db83c4a6d1a93faa52025-06-27T05:49:10ZengElsevierInternational Journal of Electrical Power & Energy Systems0142-06152025-09-01170110811Predicting weather-related power outages in large scale distribution grids with deep learning ensemblesL. Prieto-Godino0C. Peláez-Rodríguez1J. Pérez-Aracil2J. Pastor-Soriano3S. Salcedo-Sanz4Department of Signal Processing and Communications, Universidad de Alcalá, 28805 Alcalá de Henares, Madrid, Spain; Department of Prediction and Performance, Iberdrola Sustainable Energy, Iberdrola, SpainDepartment of Signal Processing and Communications, Universidad de Alcalá, 28805 Alcalá de Henares, Madrid, Spain; Corresponding author.Department of Signal Processing and Communications, Universidad de Alcalá, 28805 Alcalá de Henares, Madrid, SpainEast South Distribution Operation Center, i-DE, Iberdrola, SpainDepartment of Signal Processing and Communications, Universidad de Alcalá, 28805 Alcalá de Henares, Madrid, SpainWeather events are primarily contributors to electrical supply disruptions, prompting the need to accurately forecast these weather-related power outages. This paper focuses on predicting daily reported incidences in electrical grids within specific regions, leveraging weather conditions as specific predictive variables. An optimization-based feature selection approach has been considered for selecting the optimal Reanalysis node locations used as predictors. To overcome the data imbalance challenge and enhance prediction accuracy, we propose a Deep Learning-based (DL) ensemble algorithm. Five distinct DL architectures are considered, generating multiple individual learners with randomly selected hyperparameters. Diversity is ensured by training each model with slightly different randomly sampled data. Three information fusion techniques construct the final ensemble models. The proposed approach has been successfully evaluated in predicting real daily reported incidences in distribution lines across two Spanish provinces, Valencia and Albacete, achieving an accurate prediction of days with extreme incidences while maintaining a good overall performance and a low rate of false alarms. The top-performing models using this methodology achieve detection rates of 38% and 73%, with false alarm rates of 1% and 3%, respectively. This approach not only enhances prediction accuracy compared to individual learners but also improves the generalization ability and robustness of standalone DL models. Additionally, it effectively reduces the inherent overfitting of these methods, removing the necessity for a complex hyperparameter selection process.http://www.sciencedirect.com/science/article/pii/S014206152500359XPower outage predictionWeather-related outagesElectrical distribution linesDeep learning ensemblesEnsemble learning
spellingShingle L. Prieto-Godino
C. Peláez-Rodríguez
J. Pérez-Aracil
J. Pastor-Soriano
S. Salcedo-Sanz
Predicting weather-related power outages in large scale distribution grids with deep learning ensembles
International Journal of Electrical Power & Energy Systems
Power outage prediction
Weather-related outages
Electrical distribution lines
Deep learning ensembles
Ensemble learning
title Predicting weather-related power outages in large scale distribution grids with deep learning ensembles
title_full Predicting weather-related power outages in large scale distribution grids with deep learning ensembles
title_fullStr Predicting weather-related power outages in large scale distribution grids with deep learning ensembles
title_full_unstemmed Predicting weather-related power outages in large scale distribution grids with deep learning ensembles
title_short Predicting weather-related power outages in large scale distribution grids with deep learning ensembles
title_sort predicting weather related power outages in large scale distribution grids with deep learning ensembles
topic Power outage prediction
Weather-related outages
Electrical distribution lines
Deep learning ensembles
Ensemble learning
url http://www.sciencedirect.com/science/article/pii/S014206152500359X
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