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Russian Journal of Cybernetics, 2021 Volume 2, Issue 4, Pages 15–29 (Mi uk86)

Neural networks applications to combustion process simulation

B. V. Kryzhanovskya, N. N. Smirnovba, V. F. Nikitinab, Ia. M. Karandasheva, M. Yu. Malsagova, E. V. Mikhalchenkoba

a Federal State Institution “Scientific Research Institute for System Analysis of the Russian Academy of Sciences”, Moscow, Russian Federation
b Lomonosov Moscow State University, Moscow, Russian Federation

Abstract: Combustion process simulations are the key aspect enabling full-scale 3D simulations of advanced aerospace engines. This work studies solving chemical kinetics problems with artificial neural networks. The training datasets were generated by classical numerical methods. Choosing a multi-layer neural network architecture and fine-tuning its parameters, we developed a simple model that can solve the problem. The neural network obtained works is recursive, and by running many iterations it can predict the behavior of a chemical multimodal dynamic system.

Keywords: chemical kinetics, combustion simulation, artificial neural networks, multi-layer networks, recursive approach.

DOI: 10.51790/2712-9942-2021-2-4-2



© Steklov Math. Inst. of RAS, 2024