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 Boolea...
Combustion science must necessarily go through a deep process of innovation, as only improving the e...
When it comes to handling large hydrocarbon molecules and describing the pyrolysis and combustion be...
A new algorithm based on Computational Singular Perturbation (CSP) is proposed to construct globa...
In this work, a data-driven methodology for modeling combustion kinetics, Learned Intelligent Tabula...
International audienceA chemistry reduction approach based on machine learning is proposed and appli...
To effectively simulate the combustion of hydrogen/hydrocarbon-fueled supersonic engines, such as sc...
In reacting flow simulations, detailed chemical kinetics for practical fuels is important for accura...
International audienceA novel chemistry reduction strategy based on convolutional neural networks (C...
The kinetic mechanisms describing the combustion of longer-chain fuels often have limited applicabil...
The adoption of detailed mechanisms for chemical kinetics often poses two types of severe challenges...
A strategy based on machine learning is discussed to close the gap between the detailed description ...
The numerical simulation and analysis of chemically reacting flows often requires the evaluation of ...
A new machine learning methodology is proposed for speeding up thermochemistry computations in simul...
International audienceA strategy based on machine learning is discussed to close the gap between the...
Global warming caused by the use of fossil fuels is a common concern of the world today. It is of pr...
Combustion science must necessarily go through a deep process of innovation, as only improving the e...
When it comes to handling large hydrocarbon molecules and describing the pyrolysis and combustion be...
A new algorithm based on Computational Singular Perturbation (CSP) is proposed to construct globa...
In this work, a data-driven methodology for modeling combustion kinetics, Learned Intelligent Tabula...
International audienceA chemistry reduction approach based on machine learning is proposed and appli...
To effectively simulate the combustion of hydrogen/hydrocarbon-fueled supersonic engines, such as sc...
In reacting flow simulations, detailed chemical kinetics for practical fuels is important for accura...
International audienceA novel chemistry reduction strategy based on convolutional neural networks (C...
The kinetic mechanisms describing the combustion of longer-chain fuels often have limited applicabil...
The adoption of detailed mechanisms for chemical kinetics often poses two types of severe challenges...
A strategy based on machine learning is discussed to close the gap between the detailed description ...
The numerical simulation and analysis of chemically reacting flows often requires the evaluation of ...
A new machine learning methodology is proposed for speeding up thermochemistry computations in simul...
International audienceA strategy based on machine learning is discussed to close the gap between the...
Global warming caused by the use of fossil fuels is a common concern of the world today. It is of pr...
Combustion science must necessarily go through a deep process of innovation, as only improving the e...
When it comes to handling large hydrocarbon molecules and describing the pyrolysis and combustion be...
A new algorithm based on Computational Singular Perturbation (CSP) is proposed to construct globa...