Scientific Data (Jun 2024)

SDWPF: A Dataset for Spatial Dynamic Wind Power Forecasting over a Large Turbine Array

  • Jingbo Zhou,
  • Xinjiang Lu,
  • Yixiong Xiao,
  • Jian Tang,
  • Jiantao Su,
  • Yu Li,
  • Ji Liu,
  • Junfu Lyu,
  • Yanjun Ma,
  • Dejing Dou

DOI
https://doi.org/10.1038/s41597-024-03427-5
Journal volume & issue
Vol. 11, no. 1
pp. 1 – 7

Abstract

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Abstract Wind power is a clean and renewable energy, yet it poses integration challenges to the grid due to its variable nature. Thus, Wind Power Forecasting (WPF) is crucial for its successful integration. However, existing WPF datasets often cover only a limited number of turbines and lack detailed information. To bridge this gap and advance WPF research, we introduce the Spatial Dynamic Wind Power Forecasting dataset (SDWPF). The SDWPF dataset not only provides information on power generation and wind speed but also details the spatial distribution of the wind turbines and dynamic contextual factors specific to each turbine. These factors include weather information and the internal status of each wind turbine, thereby enriching the dataset and improving its applicability for predictive analysis. Further leveraging the potential of SDWPF, we initiated the ACM KDD Cup 2022, a competition distinguished as the foremost annual event in data mining, renowned for presenting cutting-edge challenges and attracting top talent from academia and industry. Our event successfully draws registrations from over 2400 teams around the globe.