Zhang Tong, Jiao Wenhua, Yu Jiguo, Xiong Yudou
IEEE Trans Neural Netw Learn Syst. 2025 Sep;36(9):17004-17018. doi: 10.1109/TNNLS.2025.3551778.
Enhancing the prediction of volatile and intermittent electric loads is one of the pivotal elements that contributes to the smooth functioning of modern power grids. However, conventional deep learning-based forecasting techniques fall short in simultaneously taking into account both the temporal dependencies of historical loads and the spatial structure between residential units, resulting in a subpar prediction performance. Furthermore, the representation of the spatial graph structure is frequently inadequate and constrained, along with the complexities inherent in Spatial-Temporal data, impeding the effective learning among different households. To alleviate those shortcomings, this article proposes a novel framework: Spatial-Temporal fusion adaptive gated graph convolution networks (STFAG-GCNs), tailored for residential short-term load forecasting (STLF). Spatial-Temporal fusion graph construction is introduced to compensate for several existing correlations where additional information are not known or unreflected in advance. Through an innovative gated adaptive fusion graph convolution (AFG-Conv) mechanism, Spatial-Temporal fusion graph convolution network (STFGCN) dynamically model the Spatial-Temporal correlations implicitly. Meanwhile, by integrating a gated temporal convolutional network (Gated TCN) and multiple STFGCNs into a unified Spatial-Temporal fusion layer, STFAG-GCN handles long sequences by stacking layers. Experimental results on real-world datasets validate the accuracy and robustness of STFAG-GCN in forecasting short-term residential loads, highlighting its advancements over state-of-the-art methods. Ablation experiments further reveal its effectiveness and superiority.
增强对波动性和间歇性电力负荷的预测是促进现代电网平稳运行的关键要素之一。然而,传统的基于深度学习的预测技术在同时考虑历史负荷的时间依赖性和住宅单元之间的空间结构方面存在不足,导致预测性能欠佳。此外,空间图结构的表示往往不够充分且受到限制,再加上时空数据固有的复杂性,阻碍了不同家庭之间的有效学习。为了缓解这些缺点,本文提出了一种新颖的框架:时空融合自适应门控图卷积网络(STFAG-GCNs),专门用于住宅短期负荷预测(STLF)。引入时空融合图构建以弥补一些现有的相关性,在这些相关性中,额外信息事先未知或未得到反映。通过创新的门控自适应融合图卷积(AFG-Conv)机制,时空融合图卷积网络(STFGCN)动态地隐式建模时空相关性。同时,通过将门控时间卷积网络(Gated TCN)和多个STFGCN集成到一个统一的时空融合层中,STFAG-GCN通过堆叠层来处理长序列。在真实世界数据集上的实验结果验证了STFAG-GCN在预测短期住宅负荷方面的准确性和鲁棒性,突出了其相对于现有最先进方法的进步。消融实验进一步揭示了其有效性和优越性。