Ultra-short-term Power Forecasting of Wind Farm Cluster Based on Spatio-temporal Graph Neural Network Pattern Prediction

Hongjun Zhao, Guoqing Li, Ruifeng Chen, Z. Zhen, Fei Wang
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Abstract

Timely and accurate wind farm cluster power prediction is of great significance to the stability of the power system. Due to the strong randomness and uncertainty of wind, traditional prediction methods cannot meet the requirements of power prediction tasks. Moreover, many methods ignore the temporal and spatial correlation between wind farms, so it is difficult to achieve more accurate prediction. In this paper, we propose a power prediction method based on the prediction of the cluster output pattern. We use the spatio-temporal graph neural network to extract the spatio-temporal correlation between wind farms. We base the cluster power prediction problem on a graph instead of using methods such as griding to simplify the spatial correlation between power farms. Experiments show that our proposed method is superior to other methods of real wind farm cluster power dataset.
基于时空图神经网络模式预测的风电场集群超短期功率预测
及时准确地进行风电场集群功率预测,对电力系统的稳定运行具有重要意义。由于风的随机性和不确定性强,传统的预测方法已不能满足功率预测任务的要求。此外,许多方法忽略了风电场之间的时空相关性,因此难以实现更准确的预测。本文提出了一种基于集群输出模式预测的功率预测方法。我们使用时空图神经网络来提取风电场之间的时空相关性。我们将集群功率预测问题建立在图的基础上,而不是使用网格等方法来简化发电场之间的空间相关性。实验结果表明,本文提出的方法优于其他实际风电场集群功率数据集的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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