A deep learning-based model reduction (DeePMR) method for simplifying chemical kinetics
Zhiwei Wang, Yaoyu Zhang, Enhan Zhao, Yiguang Ju, Weinan E, Zhi-Qin, John Xu, Tianhan Zhang

TL;DR
This paper introduces DeePMR, a deep learning-based approach for simplifying chemical kinetic mechanisms, significantly reducing model complexity while maintaining accuracy across various combustion scenarios.
Contribution
DeePMR employs a neural network to efficiently explore Boolean space for mechanism reduction, achieving smaller mechanisms with comparable accuracy to existing methods.
Findings
Reduced mechanism with 45 species matches PFA accuracy
Further reduction to 28 species under specific conditions
DNN-assisted sampling improves efficiency by orders of magnitude
Abstract
A deep learning-based model reduction (DeePMR) method for simplifying chemical kinetics is proposed and validated using high-temperature auto-ignitions, perfectly stirred reactors (PSR), and one-dimensional freely propagating flames of n-heptane/air mixtures. The mechanism reduction is modeled as an optimization problem on Boolean space, where a Boolean vector, each entry corresponding to a species, represents a reduced mechanism. The optimization goal is to minimize the reduced mechanism size given the error tolerance of a group of pre-selected benchmark quantities. The key idea of the DeePMR is to employ a deep neural network (DNN) to formulate the objective function in the optimization problem. In order to explore high dimensional Boolean space efficiently, an iterative DNN-assisted data sampling and DNN training procedure are implemented. The results show that DNN-assistance…
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Taxonomy
TopicsAdvanced Combustion Engine Technologies · Combustion and flame dynamics · Heat transfer and supercritical fluids
