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gridfm-datakit-v1: A Python Library for Scalable and Realistic Power Flow and Optimal Power Flow Data Generation

Alban Puech
Matteo Mazzonelli
Celia Cintas
Tamara R. Govindasamy
Mangaliso Mngomezulu
Jonas Weiss
Matteo Baù
Anna Varbella
François Mirallès
Kibaek Kim
Le Xie
Hendrik F. Hamann
Etienne Vos
Thomas Brunschwiler
Main:7 Pages
8 Figures
Bibliography:2 Pages
2 Tables
Appendix:5 Pages
Abstract

We introduce gridfm-datakit-v1, a Python library for generating realistic and diverse Power Flow (PF) and Optimal Power Flow (OPF) datasets for training Machine Learning (ML) solvers. Existing datasets and libraries face three main challenges: (1) lack of realistic stochastic load and topology perturbations, limiting scenario diversity; (2) PF datasets are restricted to OPF-feasible points, hindering generalization of ML solvers to cases that violate operating limits (e.g., branch overloads or voltage violations); and (3) OPF datasets use fixed generator cost functions, limiting generalization across varying costs. gridfm-datakit addresses these challenges by: (1) combining global load scaling from real-world profiles with localized noise and supporting arbitrary N-k topology perturbations to create diverse yet realistic datasets; (2) generating PF samples beyond operating limits; and (3) producing OPF data with varying generator costs. It also scales efficiently to large grids (up to 10,000 buses). Comparisons with OPFData, OPF-Learn, PGLearn, and PFΔ\Delta are provided. Available on GitHub atthis https URLunder Apache 2.0 and via `pip install gridfm-datakit`.

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