A graph neural network based chemical mechanism reduction method for combustion applications

arXiv cs.LG / 3/25/2026

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Key Points

  • The paper introduces two graph neural network (GNN)–based, data-driven chemical mechanism reduction methods for turbulent combustion flows where detailed kinetics are too computationally expensive to simulate directly.
  • GNN-SM uses a pre-trained surrogate model with message-passing transformer layers to guide reduction across a wide range of reactor/thermochemical conditions while preserving accuracy.
  • GNN-AE employs an autoencoder approach to produce highly compact chemical mechanisms, achieving up to 95% reductions in species and reactions within the training thermochemical regimes.
  • Across methane, ethylene, and iso-octane test cases, GNN-SM reaches reductions comparable to DRGEP across broad states, while GNN-AE outperforms DRGEP inside its target regime.
  • The authors position the framework as an automated machine-learning complement to traditional, expert-guided chemical reduction strategies for combustion modeling.

Abstract

Direct numerical simulations of turbulent reacting flows involving millions of grid points and detailed chemical mechanisms with hundreds of species and thousands of reactions are computationally prohibitive. To address this challenge, we present two data-driven chemical mechanism reduction formulations based on graph neural networks (GNNs) with message-passing transformer layers that learn nonlinear dependencies among species and reactions. The first formulation, GNN-SM, employs a pre-trained surrogate model to guide reduction across a broad range of reactor conditions. The second formulation, GNN-AE, uses an autoencoder formulation to obtain highly compact mechanisms that remain accurate within the thermochemical regimes used during training. The approaches are demonstrated on detailed mechanisms for methane (53 species, 325 reactions), ethylene (96 species, 1054 reactions), and iso-octane (1034 species, 8453 reactions). GNN-SM achieves reductions comparable to the established graph-based method DRGEP while maintaining accuracy across a wide range of thermochemical states. In contrast, GNN-AE achieves up to 95% reduction in species and reactions and outperforms DRGEP within its target conditions. Overall, the proposed framework provides an automated, machine-learning-based pathway for chemical mechanism reduction that can complement traditional expert-guided analytical approaches.