Paper
13 May 2024 Research on wind power prediction based on machine learning
Long Gao, Denglong Lu, Lifeng Fan, Jinghui Zhang, Yahua Wang
Author Affiliations +
Proceedings Volume 13159, Eighth International Conference on Energy System, Electricity, and Power (ESEP 2023); 131590B (2024) https://doi.org/10.1117/12.3024304
Event: Eighth International Conference on Energy System, Electricity and Power (ESEP 2023), 2023, Wuhan, China
Abstract
The accuracy of wind and solar power prediction not only affects the assessment of "two regulations" for various wind and solar power plants, but also affects the power generation revenue of wind and solar power plants in the electricity market. Regarding the power prediction of regional wind and photovoltaic power plant clusters, the traditional method of summing up the power of individual stations has low accuracy and efficiency due to different station construction times and uneven single station forecasting accuracy. Therefore, a machine learning method is used to reasonably divide the wind power plants and photovoltaic power station clusters in the region, select representative power stations, and combine historical power data to optimize and correct the numerical prediction elements. Then, a short-term power prediction framework model based on the wind power plants and photovoltaic power station clusters is established using the BP neural network method to improve the prediction accuracy and efficiency.
(2024) Published by SPIE. Downloading of the abstract is permitted for personal use only.
Long Gao, Denglong Lu, Lifeng Fan, Jinghui Zhang, and Yahua Wang "Research on wind power prediction based on machine learning", Proc. SPIE 13159, Eighth International Conference on Energy System, Electricity, and Power (ESEP 2023), 131590B (13 May 2024); https://doi.org/10.1117/12.3024304
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KEYWORDS
Atmospheric modeling

Meteorology

Data modeling

Wind energy

Machine learning

Solar energy

Climatology

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