LGSPOct 5, 2022

TgDLF2.0: Theory-guided deep-learning for electrical load forecasting via Transformer and transfer learning

arXiv:2210.02448v14 citationsh-index: 17
AI Analysis

This work addresses load forecasting for electricity scheduling and energy saving, but it is incremental as it builds on an existing framework with specific enhancements.

The paper tackles electrical load forecasting by proposing TgDLF2.0, an improved version of a previous framework, which uses Transformer and transfer learning to enhance accuracy and efficiency; it achieves approximately 16% higher accuracy and saves over half the training time compared to the earlier method.

Electrical energy is essential in today's society. Accurate electrical load forecasting is beneficial for better scheduling of electricity generation and saving electrical energy. In this paper, we propose theory-guided deep-learning load forecasting 2.0 (TgDLF2.0) to solve this issue, which is an improved version of the theory-guided deep-learning framework for load forecasting via ensemble long short-term memory (TgDLF). TgDLF2.0 introduces the deep-learning model Transformer and transfer learning on the basis of dividing the electrical load into dimensionless trends and local fluctuations, which realizes the utilization of domain knowledge, captures the long-term dependency of the load series, and is more appropriate for realistic scenarios with scarce samples. Cross-validation experiments on different districts show that TgDLF2.0 is approximately 16% more accurate than TgDLF and saves more than half of the training time. TgDLF2.0 with 50% weather noise has the same accuracy as TgDLF without noise, which proves its robustness. We also preliminarily mine the interpretability of Transformer in TgDLF2.0, which may provide future potential for better theory guidance. Furthermore, experiments demonstrate that transfer learning can accelerate convergence of the model in half the number of training epochs and achieve better performance.

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