Robustness of Spatio-temporal Graph Neural Networks for Fault Location in Partially Observable Distribution Grids
arXiv cs.LG / 4/23/2026
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Key Points
- The paper tackles fault location in distribution grids under partial observability, where sparse sensors make the problem difficult.
- It proposes STGNN models for this task using GraphSAGE and an improved Graph Attention (GATv2) and evaluates them on the IEEE 123-bus feeder.
- Experiments show that all tested STGNN variants outperform a pure RNN baseline, with up to an 11-point F1 improvement.
- The authors find only marginal F1 gains among the explored STGNN models (RGATv2 and RGSAGE), but they report markedly better stability for STGNNs versus RNNs across runs.
- A “measured-only” (reduced) GNN topology yields both faster training (about 6×) and better fault-location performance (up to 11 points F1) compared with using the full grid topology.
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