AI RESEARCH
Modeling subgrid scale production rates on complex meshes using graph neural networks
arXiv CS.LG
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ArXi:2603.19841v1 Announce Type: cross Large-eddy simulations (LES) require closures for filtered production rates because the resolved fields do not contain all correlations that govern chemical source terms. We develop a graph neural network (GNN) that predicts filtered species production rates on non-uniform meshes from inputs of filtered mass fractions and temperature. Direct numerical simulations of turbulent premixed hydrogen-methane jet flames with hydrogen fractions of 10%, 50%, and 80% provide the dataset.