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.
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