English

STDHL: Spatio-Temporal Dynamic Hypergraph Learning for Wind Power Forecasting

Machine Learning 2024-12-17 v1 Signal Processing

Abstract

Leveraging spatio-temporal correlations among wind farms can significantly enhance the accuracy of ultra-short-term wind power forecasting. However, the complex and dynamic nature of these correlations presents significant modeling challenges. To address this, we propose a spatio-temporal dynamic hypergraph learning (STDHL) model. This model uses a hypergraph structure to represent spatial features among wind farms. Unlike traditional graph structures, which only capture pair-wise node features, hypergraphs create hyperedges connecting multiple nodes, enabling the representation and transmission of higher-order spatial features. The STDHL model incorporates a novel dynamic hypergraph convolutional layer to model dynamic spatial correlations and a grouped temporal convolutional layer for channel-independent temporal modeling. The model uses spatio-temporal encoders to extract features from multi-source covariates, which are mapped to quantile results through a forecast decoder. Experimental results using the GEFCom dataset show that the STDHL model outperforms existing state-of-the-art methods. Furthermore, an in-depth analysis highlights the critical role of spatio-temporal covariates in improving ultra-short-term forecasting accuracy.

Keywords

Cite

@article{arxiv.2412.11393,
  title  = {STDHL: Spatio-Temporal Dynamic Hypergraph Learning for Wind Power Forecasting},
  author = {Xiaochong Dong and Xuemin Zhang and Ming Yang and Shengwei Mei},
  journal= {arXiv preprint arXiv:2412.11393},
  year   = {2024}
}
R2 v1 2026-06-28T20:36:11.072Z