
Smart EV Charging with AI Digital Twins
Using LLMs to Model User Behavior and Optimize Grid Resources
This research creates digital twin models of EV users powered by large language models to intelligently manage charging stations and optimize grid resources.
- Develops an LLM-driven multi-agent framework that accurately simulates user decision-making for charging/discharging EVs
- Implements dynamic incentive mechanisms to influence user behavior and balance grid needs
- Enables more efficient vehicle-to-grid (V2G) integration by predicting and adapting to user preferences
- Demonstrates how AI can enhance energy management through personalized user modeling
This approach matters for engineering because it provides a scalable solution for managing distributed energy resources while respecting individual user preferences and constraints, helping utilities balance grid stability with user satisfaction.