SDWPF: A Dataset for Spatial Dynamic Wind Power Forecasting Challenge at
KDD Cup 2022
- URL: http://arxiv.org/abs/2208.04360v1
- Date: Mon, 8 Aug 2022 18:38:45 GMT
- Title: SDWPF: A Dataset for Spatial Dynamic Wind Power Forecasting Challenge at
KDD Cup 2022
- Authors: Jingbo Zhou, Xinjiang Lu, Yixiong Xiao, Jiantao Su, Junfu Lyu, Yanjun
Ma, Dejing Dou
- Abstract summary: We present a unique Spatial Dynamic Wind Power Forecasting dataset: SDWPF.
This dataset includes the spatial distribution of wind turbines, as well as the dynamic context factors.
We use this dataset to launch the Baidu KDD Cup 2022 to examine the limit of current WPF solutions.
- Score: 42.72560292756442
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: The variability of wind power supply can present substantial challenges to
incorporating wind power into a grid system. Thus, Wind Power Forecasting (WPF)
has been widely recognized as one of the most critical issues in wind power
integration and operation. There has been an explosion of studies on wind power
forecasting problems in the past decades. Nevertheless, how to well handle the
WPF problem is still challenging, since high prediction accuracy is always
demanded to ensure grid stability and security of supply. We present a unique
Spatial Dynamic Wind Power Forecasting dataset: SDWPF, which includes the
spatial distribution of wind turbines, as well as the dynamic context factors.
Whereas, most of the existing datasets have only a small number of wind
turbines without knowing the locations and context information of wind turbines
at a fine-grained time scale. By contrast, SDWPF provides the wind power data
of 134 wind turbines from a wind farm over half a year with their relative
positions and internal statuses. We use this dataset to launch the Baidu KDD
Cup 2022 to examine the limit of current WPF solutions. The dataset is released
at https://aistudio.baidu.com/aistudio/competition/detail/152/0/datasets.
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