A General Framework for Load Forecasting based on Pre-trained Large Language Model (2406.11336v2)
Abstract: Accurate load forecasting is crucial for maintaining the power balance between generators and consumers,particularly with the increasing integration of renewable energy sources, which introduce significant intermittent volatility. With the advancement of data-driven methods, machine learning and deep learning models have become the predominant approaches for load forecasting tasks. In recent years, pre-trained LLMs have achieved significant progress, demonstrating superior performance across various fields. This paper proposes a load forecasting method based on LLMs, offering not only precise predictive capabilities but also broad and flexible applicability. Additionally, a data modeling method is introduced to effectively transform load sequence data into natural language suitable for LLM training. Furthermore, a data enhancement strategy is designed to mitigate the impact of LLM hallucinations on forecasting results. The effectiveness of the proposed method is validated using two real-world datasets. Compared to existing methods, our approach demonstrates state-of-the-art performance across all validation metrics.
- Mingyang Gao (2 papers)
- Suyang Zhou (4 papers)
- Wei Gu (41 papers)
- Zhi Wu (37 papers)
- Haiquan Liu (1 paper)
- Aihua Zhou (1 paper)