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Comparison and Enhancement of Machine Learning Algorithms for Wind Turbine Output Prediction with Insufficient Data

Author

Listed:
  • Subin Im

    (Department of Electrical Engineering, Kwangwoon University, Seoul 01897, Republic of Korea)

  • Hojun Lee

    (Department of Electrical Engineering, Kwangwoon University, Seoul 01897, Republic of Korea)

  • Don Hur

    (Department of Electrical Engineering, Kwangwoon University, Seoul 01897, Republic of Korea)

  • Minhan Yoon

    (Department of Electrical Engineering, Kwangwoon University, Seoul 01897, Republic of Korea)

Abstract

As the penetration of renewable energy sources into a power system increases, the significance of precise short-term forecasts for wind power generation becomes paramount. However, the erratic and non-periodic nature of wind poses challenges in accurately predicting the output. This paper presents a comprehensive investigation into forecasting wind power generation for the following day, using three machine learning models: long short-term memory (LSTM), convolutional neural network-bidirectional LSTM (CNN-biLSTM), and light gradient boosting machine (LGBM). In addition, this paper proposes a method to improve the prediction performance of LGBM by separating data according to the distribution of features, and training and testing each separated dataset with a distinct model. This study includes a comparative analysis of the performance of the proposed models in predicting wind turbine output, offering valuable insights into their respective efficiencies. The results of this investigation were analyzed for two geographically distinct wind farms (Korea and the UK). The findings of this study are expected to facilitate the selection of efficient prediction models within the forecast accuracy auxiliary service market and assist grid operators in ensuring reliable power supply for the grid.

Suggested Citation

  • Subin Im & Hojun Lee & Don Hur & Minhan Yoon, 2023. "Comparison and Enhancement of Machine Learning Algorithms for Wind Turbine Output Prediction with Insufficient Data," Energies, MDPI, vol. 16(15), pages 1-16, August.
  • Handle: RePEc:gam:jeners:v:16:y:2023:i:15:p:5810-:d:1210786
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    References listed on IDEAS

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