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Towards Generalization of Graph Neural Networks for AC Optimal Power Flow

2 Pith papers cite this work. Polarity classification is still indexing.

2 Pith papers citing it
abstract

AC Optimal Power Flow (ACOPF) is computationally intensive for large-scale grids, often requiring prohibitive solution times with conventional solvers. Machine learning offers significant speedups, but existing models struggle with scalability and topology flexibility. To address these challenges, we propose a Hybrid Heterogeneous Message Passing Neural Network (HH-MPNN) that integrates a heterogeneous graph neural network (GNN) with a scalable transformer and physics-informed positional encodings. Our architecture explicitly models distinct power system components to capture local features while using global attention for long-range dependencies. Evaluated on diverse benchmarks, including PGLearn and GridFM-DataKit datasets, HH-MPNN achieves less than 1% optimality gap on default topologies across grid sizes from 14 to 2,000 buses. For N-1 contingencies, our approach demonstrates zero-shot N-1 generalization with less than 3% optimality gap on several test cases despite training only on default topologies. We further develop an approach that ensures robust N-1 generalization to high-impact contingencies through targeted augmentation of the training data, showing that exhaustive simulation is unnecessary for topologically flexible models. Finally, size generalization experiments demonstrate that pre-training on small grids significantly improves performance on large-scale systems. Achieving computational speedups of up to 5,000 times compared to interior point solvers, these results advance practical, generalizable machine learning for real-time power system operations.

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method 1

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years

2026 2

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UNVERDICTED 2

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method 1

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representative citing papers

Learning to Route Electric Trucks Under Operational Uncertainty

eess.SY · 2026-04-29 · unverdicted · novelty 5.0

A reinforcement learning framework formulated as an event-driven semi-Markov decision process with graph states and action masking outperforms heuristic and optimization baselines for stochastic electric truck routing under charging constraints.

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Showing 2 of 2 citing papers.

  • Towards Systematic Generalization for Power Grid Optimization Problems cs.LG · 2026-05-03 · unverdicted · none · ref 1 · internal anchor

    A shared graph neural network framework jointly solves ACOPF and SCUC problems using physics constraints and shows improved generalization to unseen grid topologies.

  • Learning to Route Electric Trucks Under Operational Uncertainty eess.SY · 2026-04-29 · unverdicted · none · ref 40 · internal anchor

    A reinforcement learning framework formulated as an event-driven semi-Markov decision process with graph states and action masking outperforms heuristic and optimization baselines for stochastic electric truck routing under charging constraints.