This work proposes a chemical mechanism tabulation method using artificial neural networks (ANNs) for turbulent combustion simulations. The method is employed here in the context of the Large-Eddy Simulation (LES)–Probability Density Function (PDF) approach and the method of stochastic fields for numerical solution, but can also be employed in other methods featuring real-time integration of chemical kinetics. The focus of the paper is on exploring an ANN architecture aiming at improved generalization, which uses a single multilayer perceptron (MLP) for each species over the entire training dataset. This method is shown to outperform previous approaches which take advantage of specialization by clustering the composition space using the Sel...
This research concerns the application of the Probability Density Function (PDF) on Large Eddy Simul...
This paper discusses an approach to incorporate Articial Neural Network (ANN) based kinetics modelin...
The work presented in this thesis focuses on the modelling of turbulent fully premixed and stratifie...
Combustion plays an important role on the energy production network throughout the entire world, fro...
A new machine learning methodology is proposed for speeding up thermochemistry computations in simul...
The objective of this work is the formulation, development and implementation of Artificial Neural N...
Two new models to calculate the species instantaneous and filtered reaction rates for multi-step, mu...
The objective of the present work is to develop a machine learning tabulation methodology for thermo...
Global warming caused by the use of fossil fuels is a common concern of the world today. It is of pr...
In the present study syngas-air diffusion flames are simulated using LES with artificial neural netw...
Large Eddy Simulations (LES) of a partially premixed, swirl-stabilised flame are performedusing a tr...
In reacting flows, detailed chemistry computations are usually avoided precomputing the thermochemic...
Large-eddy simulations (LES) of turbulent flames with detailed finite-rate kinetics is currently com...
This work presents a new approach for premixed turbulent combustion modeling based on convolutional ...
Large eddy simulation (LES) of a partially pre-mixed, swirl-stabilised flame is performed using atra...
This research concerns the application of the Probability Density Function (PDF) on Large Eddy Simul...
This paper discusses an approach to incorporate Articial Neural Network (ANN) based kinetics modelin...
The work presented in this thesis focuses on the modelling of turbulent fully premixed and stratifie...
Combustion plays an important role on the energy production network throughout the entire world, fro...
A new machine learning methodology is proposed for speeding up thermochemistry computations in simul...
The objective of this work is the formulation, development and implementation of Artificial Neural N...
Two new models to calculate the species instantaneous and filtered reaction rates for multi-step, mu...
The objective of the present work is to develop a machine learning tabulation methodology for thermo...
Global warming caused by the use of fossil fuels is a common concern of the world today. It is of pr...
In the present study syngas-air diffusion flames are simulated using LES with artificial neural netw...
Large Eddy Simulations (LES) of a partially premixed, swirl-stabilised flame are performedusing a tr...
In reacting flows, detailed chemistry computations are usually avoided precomputing the thermochemic...
Large-eddy simulations (LES) of turbulent flames with detailed finite-rate kinetics is currently com...
This work presents a new approach for premixed turbulent combustion modeling based on convolutional ...
Large eddy simulation (LES) of a partially pre-mixed, swirl-stabilised flame is performed using atra...
This research concerns the application of the Probability Density Function (PDF) on Large Eddy Simul...
This paper discusses an approach to incorporate Articial Neural Network (ANN) based kinetics modelin...
The work presented in this thesis focuses on the modelling of turbulent fully premixed and stratifie...