Energies (Sep 2023)

Multidimensional Feature-Based Graph Attention Networks and Dynamic Learning for Electricity Load Forecasting

  • Chaokai Huang,
  • Ning Du,
  • Jiahan He,
  • Na Li,
  • Yifan Feng,
  • Weihong Cai

DOI
https://doi.org/10.3390/en16186443
Journal volume & issue
Vol. 16, no. 18
p. 6443

Abstract

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Electricity load forecasting is of great significance for the overall operation of the power system and the orderly use of electricity at a later stage. However, traditional load forecasting does not consider the change in load quantity at each time point, while the information on the time difference of the load data can reflect the dynamic evolution information of the load data, which is a very important factor for load forecasting. In addition, the research topics in recent years mainly focus on the learning of the complex relationships of load sequences in time latitude by graph neural networks. The relationships between different variables of load sequences are not explicitly captured. In this paper, we propose a model that combines a differential learning network and a multidimensional feature graph attention layer, it can model the time dependence and dynamic evolution of load sequences by learning the amount of load variation at different time points, while representing the correlation of different variable features of load sequences through the graph attention layer. Comparative experiments show that the prediction errors of the proposed model have decreased by 5–26% compared to other advanced methods in the UC Irvine Machine Learning Repository Electricity Load Chart public dataset.

Keywords