Numéro |
Sci. Tech. Energ. Transition
Volume 80, 2025
Decarbonizing Energy Systems: Smart Grid and Renewable Technologies
|
|
---|---|---|
Numéro d'article | 9 | |
Nombre de pages | 12 | |
DOI | https://doi.org/10.2516/stet/2024100 | |
Publié en ligne | 6 janvier 2025 |
Regular Article
Dynamic graph structure and spatio-temporal representations in wind power forecasting
1
State Grid Jibei Zhangjiakou Wind, PV, Storage and Transmission Renewable Energy Co., Ltd., Zhangjiakou 075000, China
2
Hebei University of Architecture, Information Engineering College, Zhangjiakou 075000, Hebei, China
* Corresponding author: fjl1976@hebiace.edu.cn
Received:
5
July
2024
Accepted:
13
November
2024
Wind Power Forecasting (WPF) has gained considerable focus as a crucial aspect of the successful integration and operation of wind power. However, due to the stochastic and unstable nature of wind, it poses a real challenge to effectively analyze the correlations among multiple time series data for accurate prediction. In our study, an end-to-end framework called Dynamic Graph structure and Spatio-Temporal representation learning (DSTG) framework is proposed to achieve stable power forecasting by constructing graph data to capture the critical features in the data. Specifically, a Graph Structure Learning (GSL) module is introduced to dynamically construct task-related correlation matrices via backpropagation to mitigate the inherent inconsistency and randomness of wind power data. Additionally, a dual-scale temporal graph learning (DTG) module is further proposed to explore the implicit spatio-temporal features at a fine-grained level using different skip connections from the constructed graph data. Finally, comprehensive experiments are performed on the collected Xuji Group Wind Power (XGWP) dataset, and the results show that DSTG outperforms the state-of-the-art spatio-temporal methods by 10.12% on the average of root mean square error and mean absolute error, demonstrating the effectiveness of DSTG. In conclusion, our model provides a promising approach.
Key words: Graph / Wind power / Spatio-temporal features / Graph neural networks / Dynamic graph structure
© The Author(s), published by EDP Sciences, 2025
This is an Open Access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
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