A comparative analysis of Deep Neural Networks and Gradient Boosting Algorithms in long-term wind power forecasting

dc.contributor.author Luka Ivanović
dc.contributor.author Saša Milić
dc.contributor.author Živko Sokolović
dc.contributor.author Aleksandar Rakić
dc.date.accessioned 2025-06-19T16:26:48Z
dc.date.available 2025-06-19T16:26:48Z
dc.date.issued 2024-01-01
dc.description.abstract <jats:p>A vital step toward a sustainable future is the power grid's incorporation of renewable energy sources. Wind energy is significant because of its broad availability and minimal environmental impact. The paper presents a comparative analysis of recurrent neural network algorithms and gradient boosting machines applied to time series data for the regression issue of estimating the active power generated by a wind farm. Gradient boosting algorithms combine the advantages of a few machine learning models (decision trees, random forests, etc.) to produce a powerful prediction model. In addition to conventional recurrent neural networks, the article deals with long short-term memory and gated recurrent unit as cutting-edge models for time series analysis and predictions. A comprehensive analysis was carried out on a large wind power generation data set.</jats:p>
dc.description.epage 36
dc.description.spage 15
dc.identifier.doi 10.5937/zeint34-51258
dc.identifier.issn 0350-8528
dc.identifier.issn 2406-1212
dc.identifier.openaire doi_dedup___:fb36029ead67c37043a6d3166b8f5650
dc.identifier.uri https://ror.circle-u.eu/handle/123456789/1341917
dc.openaire.affiliation University of Belgrade
dc.openaire.collaboration 1
dc.publisher Centre for Evaluation in Education and Science (CEON/CEES)
dc.rights OPEN
dc.rights.license CC BY
dc.source Zbornik radova Elektrotehnicki institut Nikola Tesla
dc.subject gradient boosting machines
dc.subject xgboost
dc.subject machine learning
dc.subject power generation
dc.subject gated recurrent unit
dc.subject wind farm
dc.subject recurrent neural network
dc.subject Electrical engineering. Electronics. Nuclear engineering
dc.subject long short-term memory
dc.subject TK1-9971
dc.title A comparative analysis of Deep Neural Networks and Gradient Boosting Algorithms in long-term wind power forecasting
dc.type publication

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