Short-term wind power forecasting method based on spatial-temporal graph neural network

Author:

Luo Dezhi,Ye Zhengdeng,Tu Zhekai,Chen Jing,Yan Qibo,Wu Peng

Abstract

Abstract In order to solve the problem that the weather factor is neglected in the current short-term wind power forecasting process, which leads to a big difference between the power forecasting result and the actual power, a short-term wind power forecasting method based on the spatial-temporal graph neural network is proposed. According to the operating power data, the short-term wind power forecasting sequence is calculated, and the wind farm is regarded as a graph. The dependence of space and time series is captured by a graph neural network, and the spatial-temporal graph neural network model is constructed. Combined with the wavelet decomposition process, short-term wind power forecasting is realized. The experimental results show that the average absolute error and average relative error of this method are less than 10%, and the wind power prediction results at different times are all on the actual wind power curve, which shows that this method can accurately predict short-term wind power.

Publisher

IOP Publishing

Reference10 articles.

1. Novel fully sensorless synergetic control of brushless doubly fed induction machine integrated into wind energy conversion system driven by fuzzy-based HCS MPPT algorithm [J];Beghdadi;Wind Engineering,2023

2. Environmental Assessment of Onshore Wind Energy Plans in Germany and Scotland: A Procedural Compliance with Respect to Integration of Climate Change Impacts [J];Baloch;Journal of Environmental Assessment Policy and Management,2023

3. Decentralized Optimization of Multiarea Interconnected Traffic-Power Systems with Wind Power Uncertainty [J];Zhang;IEEE transactions on industrial informatics,2023

4. Importance measure-based resilience analysis of a wind power generation system: [J];Dui;Proceedings of the Institution of Mechanical Engineers, Part O: Journal of Risk and Reliability,2022

5. Forecasting high-frequency spatio-temporal wind power with dimensionally reduced echo state networks [J];Huang;Journal of the Royal Statistical Society Series C,2022

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