山东大学学报 (工学版) ›› 2026, Vol. 56 ›› Issue (2): 130-138.doi: 10.6040/j.issn.1672-3961.0.2025.030
• 电气工程 • 上一篇
郑哲明1,2,孔玲玲1,2*,何印1,2
ZHENG Zheming1,2, KONG Lingling1,2*, HE Yin1,2
摘要: 针对传统风电功率预测方法忽略时空特征交互的问题,提出一种融合双图结构与注意力机制的时空图卷积网络模型(spatial-temporal graph convolutional network with attention, STGCN-A)。基于最大信息系数构建相关性矩阵,形成基于统计相关性的空间图,结合欧氏距离构建地理邻近性空间图,实现风电机组间的双图建模;采用图卷积网络(graph convolutional network, GCN)提取空间特征,结合门控循环单元(gated recurrent unit, GRU)深度挖掘时间依赖关系,引入注意力机制(attention mechanism, AM)对时间步进行动态加权,以增强时空特征中关键信息的表示能力。在实际风电数据集中开展对比试验,结果表明,该模型在均方根误差ERMS、平均绝对误差EMA和决定系数R2评价指标上优于传统方法,表现出较高的预测精度,具有较好的实际应用潜力。
中图分类号:
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