Physics-informed GNN for medium-high voltage AC power flow with edge-aware attention and line search correction operator
Kim, Changhun, Conrad, Timon, Karim, Redwanul, Oelhaf, Julian, Riebesel, David, Arias-Vergara, Tomás, Maier, Andreas, Jäger, Johann, Bayer, Siming
–arXiv.org Artificial Intelligence
Physics-informed graph neural networks (PIGNNs) have emerged as fast AC power-flow solvers that can replace classic Newton--Raphson (NR) solvers, especially when thousands of scenarios must be evaluated. However, current PIGNNs still need accuracy improvements at parity speed; in particular, the physics loss is inoperative at inference, which can deter operational adoption. We address this with PIGNN-Attn-LS, combining an edge-aware attention mechanism that explicitly encodes line physics via per-edge biases, capturing the grid's anisotropy, with a backtracking line-search-based globalized correction operator that restores an operative decrease criterion at inference. Training and testing use a realistic High-/Medium-Voltage scenario generator, with NR used only to construct reference states. On held-out HV cases consisting of 4--32-bus grids, PIGNN-Attn-LS achieves a test RMSE of 0.00033 p.u. in voltage and 0.08$^\circ$ in angle, outperforming the PIGNN-MLP baseline by 99.5\% and 87.1\%, respectively. With streaming micro-batches, it delivers 2--5$\times$ faster batched inference than NR on 4--1024-bus grids.
arXiv.org Artificial Intelligence
Sep-29-2025
- Country:
- Europe
- Germany (0.14)
- Poland > Masovia Province
- Warsaw (0.04)
- North America > United States
- Massachusetts > Middlesex County > Reading (0.04)
- Europe
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- Research Report (0.50)
- Industry:
- Energy > Power Industry (1.00)
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