Skip to main content
Power Systems Computation Conference 2026

Full Program »

View File
PDF
0.6MB

Diffopf: Diffusion Solver For Optimal Power Flow

The optimal power flow (OPF) is a multi-valued, non-convex mapping from loads to dispatch setpoints. The variability of system parameters (e.g., admittances, topology) further contributes to the multiplicity of dispatch setpoints for a given load. Existing deep learning OPF solvers are single-valued and thus fail to capture the variability of system parameters unless fully represented in the feature space, which is prohibitive. To solve this problem, we introduce a diffusion-based OPF solver, termed DiffOPF, that treats OPF as a conditional sampling problem. The solver learns the joint distribution of loads and dispatch setpoints from operational history, and returns the marginal dispatch distributions conditioned on loads. Unlike single-valued solvers, DiffOPF enables sampling statistically credible warm starts with favorable cost and constraint satisfaction trade-offs. We explore the sample complexity of DiffOPF to ensure the OPF solution within a prescribed distance from the optimizationbased solution, and verify this experimentally on power system benchmarks.

Milad Hoseinpour
University of Michigan
United States

Vladimir Dvorkin
University of Michigan
United States

 


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