Feng Ding, Li Dengao, Zhou Yu, Wang Wei
College of Computer Science and Technology (College of Data Science), Taiyuan University of Technology, Taiyuan, China.
College of Computer Science and Technology, Taiyuan Normal University, Jinzhong, China.
Front Neurorobot. 2024 Sep 23;18:1461403. doi: 10.3389/fnbot.2024.1461403. eCollection 2024.
Residential load forecasting is a challenging task due to the random fluctuations caused by complex correlations and individual differences. The existing short-term load forecasting models usually introduce external influencing factors such as climate and date. However, these additional information not only bring computational burden to the model, but also have uncertainty. To address these issues, we propose a novel multi-level feature fusion model based on graph attention temporal convolutional network (MLFGCN) for short-term residential load forecasting.
The proposed MLFGCN model fully considers the potential long-term dependencies in a single load series and the correlations between multiple load series, and does not require any additional information to be added. Temporal convolutional network (TCN) with gating mechanism is introduced to learn potential long-term dependencies in the original load series. In addition, we design two graph attentive convolutional modules to capture potential multi-level dependencies in load data. Finally, the outputs of each module are fused through an information fusion layer to obtain the highly accurate forecasting results.
We conduct validation experiments on two real-world datasets. The results show that the proposed MLFGCN model achieves 0.25, 7.58% and 0.50 for MAE, MAPE and RMSE, respectively. These values are significantly better than those of baseline models.
The MLFGCN algorithm proposed in this paper can significantly improve the accuracy of short-term residential load forecasting. This is achieved through high-quality feature reconstruction, comprehensive information graph construction and spatiotemporal features capture.
由于复杂相关性和个体差异导致的随机波动,住宅负荷预测是一项具有挑战性的任务。现有的短期负荷预测模型通常会引入气候和日期等外部影响因素。然而,这些额外信息不仅给模型带来计算负担,而且具有不确定性。为了解决这些问题,我们提出了一种基于图注意力时间卷积网络(MLFGCN)的新型多级特征融合模型用于短期住宅负荷预测。
所提出的MLFGCN模型充分考虑了单个负荷序列中的潜在长期依赖性以及多个负荷序列之间的相关性,并且不需要添加任何额外信息。引入具有门控机制的时间卷积网络(TCN)来学习原始负荷序列中的潜在长期依赖性。此外,我们设计了两个图注意力卷积模块来捕捉负荷数据中的潜在多级依赖性。最后,通过信息融合层融合每个模块的输出,以获得高精度的预测结果。
我们在两个真实世界数据集上进行了验证实验。结果表明,所提出的MLFGCN模型的平均绝对误差(MAE)、平均绝对百分比误差(MAPE)和均方根误差(RMSE)分别达到0.25、7.58%和0.50。这些值明显优于基线模型。
本文提出的MLFGCN算法可以显著提高短期住宅负荷预测的准确性。这是通过高质量特征重构、综合信息图构建和时空特征捕捉实现的。