232 pagesIn this time of severe climate change, there is an increasing need for sophisticated simulation tools to facilitate more efficient fossil-fuel based combustion devices with low pollutant and greenhouse gas emissions. In particular, to simulate a turbulent reacting flow, a proper prediction of the interactions between turbulence and chemistry is extremely important. Probability density function (PDF) methods have been shown to capture this strong turbulence chemistry interaction accurately. However, one of the biggest disadvantages of PDF methods is its significantly higher computational cost of solving the chemistry in its exact form compared to other simpler methods, such as flamelet-based models. This necessitates the development...
This study presents an analytical Jacobian formulation for detailed gas-phase reaction kinetics, sui...
A Computational Fluid Dynamics (CFD) tool for performing turbulent combustion simulations that requi...
A new machine learning methodology is proposed for speeding up thermochemistry computations in simul...
Despite the onset of peta-scale computing, simulations of reacting flows with detailed chemistry is ...
A combined Monte Carlo-computational fluid dynamic (CFD) algorithm was developed recently at Lewis R...
A major challenge in the numerical simulations of turbulent reacting flows in-volving large numbers ...
Detailed chemical kinetics is important for high-fidelity reacting flow simulations. The major chall...
Large-scale high-fidelity numerical simulation with detailed chemistry is an important approach to t...
Detailed chemical kinetics is important for high-fidelity reacting flow simulations. The major chall...
Detailed chemical kinetics is important for high-fidelity reacting flow simulations. The major chall...
In the field of turbulent reactive flow simulations, hybrid particle/finite volume large eddy simula...
Detailed chemical kinetics is important for high-fidelity reacting flow simulations. The major chall...
Detailed chemical kinetics is important for high-fidelity reacting flow simulations. The major chall...
Combustion science must necessarily go through a deep process of innovation, as only improving the e...
This study presents an analytical Jacobian formulation for detailed gas-phase reaction kinetics, sui...
This study presents an analytical Jacobian formulation for detailed gas-phase reaction kinetics, sui...
A Computational Fluid Dynamics (CFD) tool for performing turbulent combustion simulations that requi...
A new machine learning methodology is proposed for speeding up thermochemistry computations in simul...
Despite the onset of peta-scale computing, simulations of reacting flows with detailed chemistry is ...
A combined Monte Carlo-computational fluid dynamic (CFD) algorithm was developed recently at Lewis R...
A major challenge in the numerical simulations of turbulent reacting flows in-volving large numbers ...
Detailed chemical kinetics is important for high-fidelity reacting flow simulations. The major chall...
Large-scale high-fidelity numerical simulation with detailed chemistry is an important approach to t...
Detailed chemical kinetics is important for high-fidelity reacting flow simulations. The major chall...
Detailed chemical kinetics is important for high-fidelity reacting flow simulations. The major chall...
In the field of turbulent reactive flow simulations, hybrid particle/finite volume large eddy simula...
Detailed chemical kinetics is important for high-fidelity reacting flow simulations. The major chall...
Detailed chemical kinetics is important for high-fidelity reacting flow simulations. The major chall...
Combustion science must necessarily go through a deep process of innovation, as only improving the e...
This study presents an analytical Jacobian formulation for detailed gas-phase reaction kinetics, sui...
This study presents an analytical Jacobian formulation for detailed gas-phase reaction kinetics, sui...
A Computational Fluid Dynamics (CFD) tool for performing turbulent combustion simulations that requi...
A new machine learning methodology is proposed for speeding up thermochemistry computations in simul...