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dc.creatorArvanitidis A.I., Bargiotas D., Kontogiannis D., Fevgas A., Alamaniotis M.en
dc.date.accessioned2023-01-31T07:33:22Z
dc.date.available2023-01-31T07:33:22Z
dc.date.issued2022
dc.identifier10.3390/en15217929
dc.identifier.issn19961073
dc.identifier.urihttp://hdl.handle.net/11615/70834
dc.description.abstractIn recent decades, the traditional monopolistic energy exchange market has been replaced by deregulated, competitive marketplaces in which electricity may be purchased and sold at market prices like any other commodity. As a result, the deregulation of the electricity industry has produced a demand for wholesale organized marketplaces. Price predictions, which are primarily meant to establish the market clearing price, have become a significant factor to an energy company’s decision making and strategic development. Recently, the fast development of deep learning algorithms, as well as the deployment of front-end metaheuristic optimization approaches, have resulted in the efficient development of enhanced prediction models that are used for electricity price forecasting. In this paper, the development of six highly accurate, robust and optimized data-driven forecasting models in conjunction with an optimized Variational Mode Decomposition method and the K-Means clustering algorithm for short-term electricity price forecasting is proposed. In this work, we also establish an Inverted and Discrete Particle Swarm Optimization approach that is implemented for the optimization of the Variational Mode Decomposition method. The prediction of the day-ahead electricity prices is based on historical weather and price data of the deregulated Greek electricity market. The resulting forecasting outcomes are thoroughly compared in order to address which of the two proposed divide-and-conquer preprocessing approaches results in more accuracy concerning the issue of short-term electricity price forecasting. Finally, the proposed technique that produces the smallest error in the electricity price forecasting is based on Variational Mode Decomposition, which is optimized through the proposed variation of Particle Swarm Optimization, with a mean absolute percentage error value of 6.15%. © 2022 by the authors.en
dc.language.isoenen
dc.sourceEnergiesen
dc.source.urihttps://www.scopus.com/inward/record.uri?eid=2-s2.0-85141866750&doi=10.3390%2fen15217929&partnerID=40&md5=cde4455f80e4f107b452b7bf046d9ad3
dc.subjectCostsen
dc.subjectDecision makingen
dc.subjectDeep learningen
dc.subjectDeregulationen
dc.subjectForecastingen
dc.subjectK-means clusteringen
dc.subjectParticle swarm optimization (PSO)en
dc.subjectPower marketsen
dc.subjectWavelet decompositionen
dc.subjectData drivenen
dc.subjectData-driven forecasting modelen
dc.subjectElectricity prices forecastingen
dc.subjectForecasting modelsen
dc.subjectMetaheuristic optimizationen
dc.subjectMetaheuristic optimization algorithmen
dc.subjectOptimization algorithmsen
dc.subjectPreprocessing approachesen
dc.subjectShort-term electricity prices forecastingen
dc.subjectSignal decompositionen
dc.subjectVariational mode decompositionen
dc.subjectMDPIen
dc.titleOptimized Data-Driven Models for Short-Term Electricity Price Forecasting Based on Signal Decomposition and Clustering Techniquesen
dc.typeotheren


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