Revisiting Deep AC-OPF (Papers Track)
Oluwatomisin Dada (University of Cambridge)
Abstract
Recent work has proposed machine learning (ML) approaches as fast surrogates for solving AC optimal power flow (AC-OPF), with claims of significant speed-ups and high accuracy. In this paper, we revisit these claims through a systematic evaluation of ML models against a set of simple yet carefully designed linear baselines. We introduce OPFormer-V, a transformer-based model for predicting bus voltages, and compare it to both the state-of-the-art DeepOPF-V model and simple linear methods. Our findings reveal that, while OPFormer-V improves over DeepOPF-V, the relative gains of ML approaches are less pronounced than expected: simple linear baselines can achieve comparable performance. These results highlight the importance of including strong linear baselines in future evaluations.