Toward an Operational GNN-Based Multimesh Surrogate for Fast Flood Forecasting
Valentin Mercier (Toulouse INP, IRIT, EPE UT), Serge Gratton (IRIT, EPE UT, Toulouse INP), Lapeyre Corentin (NVIDIA), Gwena\"el Chevallet

TL;DR
This paper develops a graph neural network surrogate model for flood forecasting that significantly accelerates high-fidelity hydraulic simulations, enabling rapid predictions on large urban floodplains.
Contribution
It introduces a multimesh GNN approach conditioned on discharge features, improving accuracy and stability for flood prediction tasks.
Findings
The surrogate achieves 6-hour flood predictions in 0.4 seconds on a GPU.
Conditioning on discharge Q(t) is crucial for boundary-driven flood modeling.
Multimesh connectivity and pushforward training enhance model accuracy and rollout stability.
Abstract
Operational flood forecasting still relies on high-fidelity two-dimensional hydraulic solvers, but their runtime can be prohibitive for rapid decision support on large urban floodplains. In parallel, AI-based surrogate models have shown strong potential in several areas of computational physics for accelerating otherwise expensive high-fidelity simulations. We address this issue on the lower T\^et River (France), starting from a production-grade Telemac2D model defined on a high-resolution unstructured finite-element mesh with more than nodes. From this setup, we build a learning-ready database of synthetic but operationally grounded flood events covering several representative hydrograph families and peak discharges. On top of this database, we develop a graph-neural surrogate based on projected meshes and multimesh connectivity. The projected-mesh strategy keeps…
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