Power Generation Technology ›› 2025, Vol. 46 ›› Issue (2): 326-335.DOI: 10.12096/j.2096-4528.pgt.23129

• New Energy • Previous Articles    

Short-Term Wind Power Prediction Method Considering Wind Turbine Operation Status Clustering Under Low-Temperature Conditions

Yangfan ZHANG1, Yilin LI2, Lin YE2, Xuejiao FU1, Zhengyu WANG1, Yaohan WANG1   

  1. 1.North China Electric Power Research Institution (State Grid Jibei Electric Power Research Institute), Xicheng District, Beijing 100018, China
    2.College of Information and Electrical Engineering, China Agricultural University, Haidian District, Beijing 100083, China
  • Received:2024-05-10 Revised:2024-08-01 Published:2025-04-30 Online:2025-04-23
  • Supported by:
    the Science and Technology Program of North China Electric Power Research Institute Co., Ltd(KJZ2022060)

Abstract:

Objectives Low-temperature weather poses challenges to the operation of power systems with a high proportion of new energy, such as wind power. Improving the accuracy of short-term wind power prediction under low-temperature conditions will provide effective decision-making information for power system scheduling and operation. To address this, a wind power prediction method considering the clustering of unit operation status under low-temperature conditions is proposed. Methods The fuzzy C-means (FCM) clustering algorithm is used to cluster wind turbines based on their operation status and protection control information. Then, a prediction method based on support vector machine is proposed to predict whether the wind turbines are in normal operation status. The LightGBM algorithm in ensemble learning is employed to predict the power output of wind turbines under normal operation. Based on the prediction results of both operation status and power values, the overall wind power output of the wind farm is determined. Finally, a case study of a wind farm in northern Hebei is conducted to validate the effectiveness of the proposed method. Results By fully utilizing the characteristics of wind turbine protection control behaviors under low temperatures, the proposed method accurately predicts the critical shutdown time of wind turbines and provides the shutdown capacity. It effectively fits the variation patterns of wind power curves,which improves the prediction accuracy of the wind power to more than 90%. Conclusion The proposed method can provide reliable prediction information for power scheduling and control. Additionally, it can provide a reference for short-term wind power prediction under other extreme weather conditions, such as strong winds.

Key words: new energy, power system, wind power, power prediction, unit operation, fuzzy C-means (FCM)clustering, support vector machine, power scheduling and control

CLC Number: