Overview of Applications and Research Directions of Deep Learning Methods for Wind Power Prediction

As the global demand for renewable energy increases, wind power, as an important part of clean renewable energy, the accurate prediction of its power is crucial for the stable operation of the power system and the efficient use of energy. In recent years, deep learning methods have demonstrated sign...

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Main Author: LIU Tan, LIU Na, LIU Guiping, LIU Kunjie, LIU Min, ZHUANG Xufei, ZHANG Zhonghao
Format: Article
Language:zho
Published: Journal of Computer Engineering and Applications Beijing Co., Ltd., Science Press 2025-03-01
Series:Jisuanji kexue yu tansuo
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Online Access:http://fcst.ceaj.org/fileup/1673-9418/PDF/2408090.pdf
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author LIU Tan, LIU Na, LIU Guiping, LIU Kunjie, LIU Min, ZHUANG Xufei, ZHANG Zhonghao
author_facet LIU Tan, LIU Na, LIU Guiping, LIU Kunjie, LIU Min, ZHUANG Xufei, ZHANG Zhonghao
author_sort LIU Tan, LIU Na, LIU Guiping, LIU Kunjie, LIU Min, ZHUANG Xufei, ZHANG Zhonghao
collection DOAJ
description As the global demand for renewable energy increases, wind power, as an important part of clean renewable energy, the accurate prediction of its power is crucial for the stable operation of the power system and the efficient use of energy. In recent years, deep learning methods have demonstrated significant advantages in the field of wind power prediction, and by constructing complex nonlinear models, deep learning models can effectively capture the intrinsic laws and changing trends of wind power data. This paper outlines the research objectives of wind power prediction from the classification of wind power prediction, the general idea of implementation, and the evaluation method. The application of deep learning technology in wind power prediction is reviewed, and on the basis of making a careful division of deep learning technology, it focuses on analyzing the overcome problems and performance by spatial structure-based deep learning models and time-based deep learning models and their related variants, and summarizes the limitations of the proposed modeling methods and the corresponding solutions. In addition, research progress in deep learning-based wind power prediction is outlined in data processing, parameter optimization algorithms, and optimization methods for wind power prediction models. Finally, an outlook on the future development direction of wind power prediction is given.
format Article
id doaj-art-05d84ac17ead4f24931fcad2c110846c
institution DOAJ
issn 1673-9418
language zho
publishDate 2025-03-01
publisher Journal of Computer Engineering and Applications Beijing Co., Ltd., Science Press
record_format Article
series Jisuanji kexue yu tansuo
spelling doaj-art-05d84ac17ead4f24931fcad2c110846c2025-08-20T02:46:24ZzhoJournal of Computer Engineering and Applications Beijing Co., Ltd., Science PressJisuanji kexue yu tansuo1673-94182025-03-0119360262210.3778/j.issn.1673-9418.2408090Overview of Applications and Research Directions of Deep Learning Methods for Wind Power PredictionLIU Tan, LIU Na, LIU Guiping, LIU Kunjie, LIU Min, ZHUANG Xufei, ZHANG Zhonghao01. College of Information Engineering, Inner Mongolia University of Technology, Hohhot 010080, China 2. Huadian (Ningxia) Energy Co., Ltd. New Energy Branch, Yinchuan 750000, China 3. Ordos Vocational College of Eco-environment, Ordos, Inner Mongolia 017010, ChinaAs the global demand for renewable energy increases, wind power, as an important part of clean renewable energy, the accurate prediction of its power is crucial for the stable operation of the power system and the efficient use of energy. In recent years, deep learning methods have demonstrated significant advantages in the field of wind power prediction, and by constructing complex nonlinear models, deep learning models can effectively capture the intrinsic laws and changing trends of wind power data. This paper outlines the research objectives of wind power prediction from the classification of wind power prediction, the general idea of implementation, and the evaluation method. The application of deep learning technology in wind power prediction is reviewed, and on the basis of making a careful division of deep learning technology, it focuses on analyzing the overcome problems and performance by spatial structure-based deep learning models and time-based deep learning models and their related variants, and summarizes the limitations of the proposed modeling methods and the corresponding solutions. In addition, research progress in deep learning-based wind power prediction is outlined in data processing, parameter optimization algorithms, and optimization methods for wind power prediction models. Finally, an outlook on the future development direction of wind power prediction is given.http://fcst.ceaj.org/fileup/1673-9418/PDF/2408090.pdfwind power prediction; neural networks; deep learning
spellingShingle LIU Tan, LIU Na, LIU Guiping, LIU Kunjie, LIU Min, ZHUANG Xufei, ZHANG Zhonghao
Overview of Applications and Research Directions of Deep Learning Methods for Wind Power Prediction
Jisuanji kexue yu tansuo
wind power prediction; neural networks; deep learning
title Overview of Applications and Research Directions of Deep Learning Methods for Wind Power Prediction
title_full Overview of Applications and Research Directions of Deep Learning Methods for Wind Power Prediction
title_fullStr Overview of Applications and Research Directions of Deep Learning Methods for Wind Power Prediction
title_full_unstemmed Overview of Applications and Research Directions of Deep Learning Methods for Wind Power Prediction
title_short Overview of Applications and Research Directions of Deep Learning Methods for Wind Power Prediction
title_sort overview of applications and research directions of deep learning methods for wind power prediction
topic wind power prediction; neural networks; deep learning
url http://fcst.ceaj.org/fileup/1673-9418/PDF/2408090.pdf
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