Artificial Intelligence and Statistical Techniques in Short-Term Load Forecasting: a Review

Electrical utilities depend on short-term demand forecasting to adjust proactively the production and the distribution in anticipation of major variations. This systematic review analyzes 240 works published in scholarly journals between 2000 and 2019 that focus on applying Artificial Intelligence (...

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Published inInternational Review on Modeling and Simulations Vol. 14; no. 6; p. 408
Main Authors Bou Nassif, Ali, Soudan, Bassel, Azzeh, Mohammad, Attilli, Imtinan, Almulla, Omar
Format Journal Article
LanguageEnglish
Published Naples Praise Worthy Prize 2021
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ISSN1974-9821
2533-1701
1974-9821
DOI10.15866/iremos.v14i6.21328

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Abstract Electrical utilities depend on short-term demand forecasting to adjust proactively the production and the distribution in anticipation of major variations. This systematic review analyzes 240 works published in scholarly journals between 2000 and 2019 that focus on applying Artificial Intelligence (AI), statistical, and hybrid models to Short-Term Load Forecasting (STLF). This work represents the most comprehensive review of works on this subject to date. A complete analysis of the literature is conducted in order to identify the most popular and accurate techniques as well as existing gaps. The findings show that although Artificial Neural Networks (ANN) continue to be the most commonly used standalone technique, researchers have been exceedingly opting for hybrid combinations of different techniques to leverage the combined advantages of individual methods. The review demonstrates that it is commonly possible with these hybrid combinations to achieve prediction accuracy exceeding 99%. The most successful duration for short-term forecasting has been identified as prediction for a duration of one day at an hourly interval. The review has identified a deficiency in access to datasets needed for training of the models. A significant gap has been identified in researching regions other than Asia, Europe, North America, and Australia.
AbstractList Electrical utilities depend on short-term demand forecasting to adjust proactively the production and the distribution in anticipation of major variations. This systematic review analyzes 240 works published in scholarly journals between 2000 and 2019 that focus on applying Artificial Intelligence (AI), statistical, and hybrid models to Short-Term Load Forecasting (STLF). This work represents the most comprehensive review of works on this subject to date. A complete analysis of the literature is conducted in order to identify the most popular and accurate techniques as well as existing gaps. The findings show that although Artificial Neural Networks (ANN) continue to be the most commonly used standalone technique, researchers have been exceedingly opting for hybrid combinations of different techniques to leverage the combined advantages of individual methods. The review demonstrates that it is commonly possible with these hybrid combinations to achieve prediction accuracy exceeding 99%. The most successful duration for short-term forecasting has been identified as prediction for a duration of one day at an hourly interval. The review has identified a deficiency in access to datasets needed for training of the models. A significant gap has been identified in researching regions other than Asia, Europe, North America, and Australia.
Author Bou Nassif, Ali
Soudan, Bassel
Azzeh, Mohammad
Almulla, Omar
Attilli, Imtinan
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SubjectTerms Artificial intelligence
Artificial neural networks
Economic forecasting
Electric utilities
Mathematical models
Title Artificial Intelligence and Statistical Techniques in Short-Term Load Forecasting: a Review
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