A Short-Term Forecasting of Wind Power Outputs Based on Gradient Boosting Regression Tree Algorithms

Author:

Park Soyoung1,Jung Solyoung2,Lee Jaegul2,Hur Jin1ORCID

Affiliation:

1. Department of Climate and Energy Systems Engineering, Ewha Womans University, Seoul 03760, Republic of Korea

2. Korea Electric Power Corporation Research Institute, Daejeon 34056, Republic of Korea

Abstract

With growing interest in sustainability and net-zero emissions, there has been a global trend to integrate wind power into energy grids. However, challenges such as the intermittency of wind energy remain, which leads to a significant need for accurate wind-power forecasting. Therefore, this study focuses on creating a wind-power generation-forecasting model using a machine-learning algorithm. In this study, we used the gradient-boosting machine (GBM) algorithm to build a wind-power forecasting model. Time-series data with a 15 min interval from Jeju’s wind farms were applied to the model as input data. The short-term forecasting model trained by the same month with the test set turns out to have the best performance, with an NMAE value of 5.15%. Furthermore, the forecasting results were applied to Jeju’s power system to carry out a grid-security analysis. The improved accuracy of wind-power forecasting and its impact on the security of electrical grids in this study potentially contributes to greater integration of wind energy.

Publisher

MDPI AG

Subject

Energy (miscellaneous),Energy Engineering and Power Technology,Renewable Energy, Sustainability and the Environment,Electrical and Electronic Engineering,Control and Optimization,Engineering (miscellaneous),Building and Construction

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3. Cho, Y.S., Cho, S.M., So, J.Y., Ahn, J.K., Lee, S.H., Kim, K.H., Cho, I.H., Lim, D.O., Kong, J.Y., and Kim, S.K. (2019). CFI 2030 Plan Amendment Supplement Service, Jeju Special Self-Governing Province.

4. Barthelmie, R.J., and Pryor, S.C. (2021). Climate change mitigation potential of wind energy. Climate, 9.

5. IRENA (2019). Future of Wind: Deployment, Investment, Technology, Grid Integration and Socio-Economic Aspects, A Global Energy Transformation paper; International Renewable Energy Agency.

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