Grid-Agent: An LLM-Powered Multi-Agent System for Power Grid Control
By: Yan Zhang , Ahmad Mohammad Saber , Amr Youssef and more
Potential Business Impact:
AI fixes power grid problems instantly.
Modern power grids face unprecedented complexity from Distributed Energy Resources (DERs), Electric Vehicles (EVs), and extreme weather, while also being increasingly exposed to cyberattacks that can trigger grid violations. This paper introduces Grid-Agent, an autonomous AI-driven framework that leverages Large Language Models (LLMs) within a multi-agent system to detect and remediate violations. Grid-Agent integrates semantic reasoning with numerical precision through modular agents: a planning agent generates coordinated action sequences using power flow solvers, while a validation agent ensures stability and safety through sandboxed execution with rollback mechanisms. To enhance scalability, the framework employs an adaptive multi-scale network representation that dynamically adjusts encoding schemes based on system size and complexity. Violation resolution is achieved through optimizing switch configurations, battery deployment, and load curtailment. Our experiments on IEEE and CIGRE benchmark networks, including the IEEE 69-bus, CIGRE MV, IEEE 30-bus test systems, demonstrate superior mitigation performance, highlighting Grid-Agent's suitability for modern smart grids requiring rapid, adaptive response.
Similar Papers
Semantic Reasoning Meets Numerical Precision: An LLM-Powered Multi-Agent System for Power Grid Control
Multiagent Systems
AI fixes power grid problems instantly.
GridMind: LLMs-Powered Agents for Power System Analysis and Operations
Artificial Intelligence
AI helps power grids make smart choices faster.
Power Grid Control with Graph-Based Distributed Reinforcement Learning
Machine Learning (CS)
Helps power grids run better with smart computers.