PF∆: A Benchmark Dataset for Power Flow Under Load, Generation, and Topology Variations
Abstract
Power flow (PF) calculations are the backbone of real-time grid operations, across workflows such as contingency analysis (where repeated PF evaluations assess grid security under outages) and topology optimization (which involves PF-based searches over combinatorially large action spaces). Running these calculations at operational timescales or across large evaluation spaces remains a major computational bottleneck. Additionally, growing uncertainty in power system operations from the integration of renewables and climate-induced extreme weather also calls for tools that can accurately and efficiently simulate a wide range of scenarios and operating conditions. Machine learning methods offer a potential speedup over traditional solvers, but their performance has not been systematically assessed on benchmarks that capture real-world variability. This paper introduces PF∆, a benchmark dataset for power flow that captures diverse variations in load, generation, and topology. PF∆ contains 859,800 solved power flow instances spanning six different bus system sizes, capturing three types of contingency scenarios (N , N –1, and N –2), and including close-to-infeasible cases near steady-state voltage stability limits. We evaluate traditional solvers and GNN-based methods, highlighting key areas where existing approaches struggle, and identifying open problems for future research. Our dataset is available at https://huggingface.co/datasets/pfdelta/pfdelta/tree/main and our code with data generation scripts and model implementations is at https: //github.com/MOSSLab-MIT/pfdelta
Cite
Text
Rivera et al. "PF∆: A Benchmark Dataset for Power Flow Under Load, Generation, and Topology Variations." Advances in Neural Information Processing Systems, 2025.Markdown
[Rivera et al. "PF∆: A Benchmark Dataset for Power Flow Under Load, Generation, and Topology Variations." Advances in Neural Information Processing Systems, 2025.](https://mlanthology.org/neurips/2025/rivera2025neurips-pf/)BibTeX
@inproceedings{rivera2025neurips-pf,
title = {{PF∆: A Benchmark Dataset for Power Flow Under Load, Generation, and Topology Variations}},
author = {Rivera, Ana K. and Bhagavathula, Anvita and Carbonero, Alvaro and Donti, Priya L.},
booktitle = {Advances in Neural Information Processing Systems},
year = {2025},
url = {https://mlanthology.org/neurips/2025/rivera2025neurips-pf/}
}