International audienceA chemistry reduction approach based on machine learning is proposed and applied to direct numerical simulation (DNS) of a turbulent non-premixed syngas oxy-flame interacting with a cooled wall. The training and the subsequent application of artificial neural networks (ANNs) rely on the processing of 'thermochemical vectors' composed of species mass fractions and temperature (ANN input), to predict the corresponding chemical sources (ANN output). The training of the ANN is performed aside from any flow simulation, using a turbulent non-adiabatic non-premixed micro-mixing based canonical problem with a reference detailed chemistry. Heat-loss effects are thus included in the ANN training. The performance of the ANN chemi...
In reacting flows, detailed chemistry computations are usually avoided precomputing the thermochemic...
This is an annual technical report for the work done over the last year (period ending 9/30/2004) on...
The objective of this work is the formulation, development and implementation of Artificial Neural N...
International audienceA novel chemistry reduction strategy based on convolutional neural networks (C...
International audienceA strategy based on machine learning is discussed to close the gap between the...
A strategy based on machine learning is discussed to close the gap between the detailed description ...
Global warming caused by the use of fossil fuels is a common concern of the world today. It is of pr...
Combustion plays an important role on the energy production network throughout the entire world, fro...
Large eddy simulation of a flameless combustion furnace is discussed with comparison against experim...
A deep learning-based model reduction (DeePMR) method for simplifying chemical kinetics is proposed ...
A new machine learning methodology is proposed for speeding up thermochemistry computations in simul...
This is an annual technical report for the work done over the last year (period ending 9/30/2005) on...
The focus of the present work is to investigate a new methodology for the rapid generation of lamina...
The focus of the present work is to investigate a new methodology for the rapid generation of lamina...
The focus of the present work is to investigate a new methodology for the rapid generation of lamina...
In reacting flows, detailed chemistry computations are usually avoided precomputing the thermochemic...
This is an annual technical report for the work done over the last year (period ending 9/30/2004) on...
The objective of this work is the formulation, development and implementation of Artificial Neural N...
International audienceA novel chemistry reduction strategy based on convolutional neural networks (C...
International audienceA strategy based on machine learning is discussed to close the gap between the...
A strategy based on machine learning is discussed to close the gap between the detailed description ...
Global warming caused by the use of fossil fuels is a common concern of the world today. It is of pr...
Combustion plays an important role on the energy production network throughout the entire world, fro...
Large eddy simulation of a flameless combustion furnace is discussed with comparison against experim...
A deep learning-based model reduction (DeePMR) method for simplifying chemical kinetics is proposed ...
A new machine learning methodology is proposed for speeding up thermochemistry computations in simul...
This is an annual technical report for the work done over the last year (period ending 9/30/2005) on...
The focus of the present work is to investigate a new methodology for the rapid generation of lamina...
The focus of the present work is to investigate a new methodology for the rapid generation of lamina...
The focus of the present work is to investigate a new methodology for the rapid generation of lamina...
In reacting flows, detailed chemistry computations are usually avoided precomputing the thermochemic...
This is an annual technical report for the work done over the last year (period ending 9/30/2004) on...
The objective of this work is the formulation, development and implementation of Artificial Neural N...