Skip to main content
Power Systems Computation Conference 2026

Full Program »

View File
PDF
1.1MB

Powerchain: A Verifiable Agentic Ai System For Automating Distribution Grid Analyses

Rapid electrification and decarbonization are increasing the complexity of distribution grid (DG) operation and planning, necessitating advanced computational analyses to ensure reliability and resilience. These analyses depend on disparate workflows comprising complex models, function calls, and data pipelines that require substantial expert knowledge and remain difficult to automate. Workforce and budget constraints further limit utilities’ ability to apply such analyses at scale. To address this gap, we built an agentic system, PowerChain, which is capable of autonomously performing complex grid analyses. Existing agentic AI systems are typically developed in a bottomup manner with a customized context for predefined analysis tasks; therefore, they do not generalize to tasks that the agent has never seen. In comparison, to generalize to unseen DG analysis tasks, PowerChain dynamically generates structured context by leveraging supervisory signals from self-contained power systems tools (e.g., GridLAB-D) and an optimized set of expert-annotated and verified reasoning trajectories. For complex DG tasks defined in natural language, empirical results on real utility data demonstrate that PowerChain achieves up to a ∼144% improvement in performance over baselines.

Emmanuel Badmus
University of Vermont
United States

Peng Sang
University of Vermont
United States

Dimitrios Stamoulis
University of Texas at Austin
United States

Amritanshu Pandey
University of Vermont
United States

 


Powered by OpenConf®
Copyright ©2002-2025 Zakon Group LLC