Robustness of Spatio-temporal Graph Neural Networks for Fault Location in Partially Observable Distribution Grids
Burak Karabulut, Carlo Manna, Chris Develder

TL;DR
This paper evaluates the robustness of spatio-temporal graph neural networks for fault location in partially observable distribution grids, proposing new graph strategies and demonstrating improved stability and efficiency over traditional methods.
Contribution
It introduces a measured-only graph-forming strategy and new GNN models, benchmarking them against existing approaches for fault location in distribution grids.
Findings
All STGNN variants outperform RNN baseline in accuracy.
Measured-only graphs reduce training time sixfold and improve performance.
STGNN models show superior stability with tight confidence intervals.
Abstract
Fault location in distribution grids is critical for reliability and minimizing outage durations. Yet, it remains challenging due to partial observability, given sparse measurement infrastructure. Recent works show promising results by combining Recurrent Neural Networks (RNNs) and Graph Neural Networks (GNNs) for spatio-temporal learning. Still, many modern GNN architectures remain untested for this grid application, while existing GNN solutions have not explored GNN topology definitions beyond simply adopting the full grid topology to construct the GNN graph. We address these gaps by (i) systematically comparing a newly proposed graph-forming strategy (measured-only) to the traditional full-topology approach, and (ii) introducing STGNN (Spatio-temporal GNN) models based on GraphSAGE and an improved Graph Attention (GATv2), for distribution grid fault location; (iii) benchmarking them…
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