Spatiotemporal Prediction of Electric Vehicle Charging Load Based on Large Language Models
Spatiotemporal Prediction of Electric Vehicle Charging Load Based on Large Language Models
The rapid growth of EVs and the subsequent increase in charging demand pose significant challenges for load grid scheduling and the operation of EV charging stations. Effectively harnessing the spatiotemporal correlations among EV charging stations to improve forecasting accuracy is complex. To tackle these challenges, we propose EV-LLM for EV charging loads based on LLMs in this paper. EV-LLM integrates the strengths of Graph Convolutional Networks (GCNs) in spatiotemporal feature extraction with the generalization capabilities of fine-tuned generative LLMs. Also, EV-LLM enables effective data mining and feature extraction across multimodal and multidimensional datasets, incorporating historical charging data, weather information, and relevant textual descriptions to enhance forecasting accuracy for multiple charging stations. We validate the effectiveness of EV-LLM by using charging data from 10 stations in California, demonstrating its superiority over the other traditional deep learning methods and potential to optimize load grid scheduling and support vehicle-to-grid interactions.
Hang Fan、Mingxuan Li、Jingshi Cui、Zuhan Zhang、Wencai Run、Dunnan Liu
发电、发电厂输配电工程电气化、电能应用计算技术、计算机技术
Hang Fan,Mingxuan Li,Jingshi Cui,Zuhan Zhang,Wencai Run,Dunnan Liu.Spatiotemporal Prediction of Electric Vehicle Charging Load Based on Large Language Models[EB/OL].(2025-06-04)[2025-06-20].https://arxiv.org/abs/2506.03728.点此复制
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