Transient Stability-Constrained OPF: Neural Network Surrogate Models and Pricing Stability
Abstract
A Transient Stability-Constrained Optimal Power Flow (TSC-OPF) problem is proposed that enforces frequency stability constraints using Neural Network (NN) surrogate models. NNs are trained using a novel model-driven active sampling algorithm that iteratively generates NN training data located near the stability boundary and contained within the feasible set of the Alternating Current Optimal Power Flow (AC-OPF) problem. In the context of wholesale electricity markets, pricing structures are analyzed along with their dependencies on the selected input features to the NN surrogate model. An important insight identifies a trade-off between the accuracy of the NN surrogate model and sensible locational pricing structures. NN surrogate models for frequency stability are validated by ensuring the resulting TSC-OPF solution is stable over randomly generated load samples using a small Hawaii test case. The proposed TSC-OPF problem is shown to significantly enhance frequency stability at low computational cost and low financial cost to the system. For certain selections of NN inputs, the TSC-OPF problem is able to stabilize all load scenarios for which the solution to the AC-OPF problem resulted in instability.
Cite
@article{arxiv.2502.01844,
title = {Transient Stability-Constrained OPF: Neural Network Surrogate Models and Pricing Stability},
author = {Manuel Garcia and Nicole LoGiudice and Robert Parker and Russell Bent},
journal= {arXiv preprint arXiv:2502.01844},
year = {2025}
}
Comments
12 pages, 11 figures