LGCHEM-PHApr 17, 2025

ChemKANs for Combustion Chemistry Modeling and Acceleration

arXiv:2504.12580v27 citationsh-index: 7Phys Chem Chem Phys
Originality Incremental advance
AI Analysis

This work addresses the problem of computational inefficiency in combustion chemistry modeling for researchers and engineers, representing an incremental improvement with domain-specific impact.

The paper tackled the challenge of efficient chemical kinetic model inference and simulation acceleration in combustion by introducing ChemKANs, a neural network framework that achieved a 2x acceleration over detailed chemistry with a parameter-lean model (344 parameters) and demonstrated resilience to up to 15% noise without overfitting.

Efficient chemical kinetic model inference and application in combustion are challenging due to large ODE systems and widely separated time scales. Machine learning techniques have been proposed to streamline these models, though strong nonlinearity and numerical stiffness combined with noisy data sources make their application challenging. Here, we introduce ChemKANs, a novel neural network framework with applications both in model inference and simulation acceleration for combustion chemistry. ChemKAN's novel structure augments the generic Kolmogorov Arnold Network Ordinary Differential Equations (KAN-ODEs) with knowledge of the information flow through the relevant kinetic and thermodynamic laws. This chemistry-specific structure combined with the expressivity and rapid neural scaling of the underlying KAN-ODE algorithm instills in ChemKANs a strong inductive bias, streamlined training, and higher accuracy predictions compared to standard benchmarks, while facilitating parameter sparsity through shared information across all inputs and outputs. In a model inference investigation, we benchmark the robustness of ChemKANs to sparse data containing up to 15% added noise, and superfluously large network parameterizations. We find that ChemKANs exhibit no overfitting or model degradation in any of these training cases, demonstrating significant resilience to common deep learning failure modes. Next, we find that a remarkably parameter-lean ChemKAN (344 parameters) can accurately represent hydrogen combustion chemistry, providing a 2x acceleration over the detailed chemistry in a solver that is generalizable to larger-scale turbulent flow simulations. These demonstrations indicate the potential for ChemKANs as robust, expressive, and efficient tools for model inference and simulation acceleration for combustion physics and chemical kinetics.

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