基于动态图关注的风电场组合预测模型

X. Liao, Yiqun Cheng
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引用次数: 0

摘要

近年来,风电在能源构成中占有越来越重要的地位。为了提高风电场的预测精度,帮助管理调度,提出了一种基于动态图卷积和图关注的多场点短期风电时空组合预测模型。首先,利用图卷积实现多站点间时间特征的相邻聚集,并利用图注意机制增强图卷积提取空间特征的能力;同时,针对传统模型无法处理图节点关联关系实时变化的问题,根据图卷积过程中节点间的关联系数和距离动态构造邻接矩阵。最后,利用门控循环单元对动态图卷积输出的上下文信息进行处理,完成风电的预测。实验结果表明,所提出的组合模型在预测精度、稳定性和多步预测性能方面都是最优的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Wind farm combination forecasting model based on dynamic graph attention
In recent years, wind power has become more and more important in the energy component. In order to improve the prediction accuracy of wind farms and help management and scheduling, a multi-site short-term wind power spatiotemporal combination forecasting model based on dynamic graph convolution and graph attention is proposed. Firstly, graph convolution is used to realize neighbor aggregation of temporal features between multiple sites, and the graph attention mechanism is used to enhance its ability to extract spatial features. At the same time, in view of the problem that the traditional model cannot deal with the real-time change of graph node correlation, the adjacency matrix is dynamically constructed according to the correlation coefficient and distance between nodes in the graph convolution process. Finally, the Gated Recurrent Unit is used to process the context information of dynamic graph convolution output to complete the prediction of wind power. The experimental results show that the proposed combined model is optimal in the aspects of prediction accuracy, stability and multi-step prediction performance.
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