A novel, stochastic, hybrid binomial Langevin-multiple mapping conditioning (MMC) model—that utilizes the strengths of each component—has been developed for inhomogeneous flows. The implementation has the advantage of naturally incorporating velocity-scalar interactions through the binomial Langevin model and using this joint probability density function (PDF) to define a reference variable for the MMC part of the model. The approach has the advantage that the difficulties encountered with the binomial Langevin model in modeling scalars with nonelementary bounds are removed. The formulation of the closure leads to locality in scalar space and permits the use of simple approaches (e.g., the modified Curl’s model) for transport in the referen...
Markov jump processes are widely used to model interacting species in circumstances where discretene...
The Combustion Institute Bluff-body turbulent CH 4 : H 2 (1:1) flames at 50% (HM1), 75% (HM2) and 91...
This work introduces modeling of differential diffusion within the multiple mapping conditioning (MM...
The hybrid binomial Langevin-MMC (Multiple Mapping Conditioning) method combines the advantages of t...
Generalized Multiple Mapping Conditioning (MMC) allows for the use of any physical quantity to repre...
A new hybrid binomial Langevin–MMC (Multiple Mapping Conditioning) modelling approach is proposed. T...
The binomial Langevin model (BLM) predicts mixture fraction statistics including higher moments exce...
Multiple mapping conditioning (MMC) explicitly includes a link between the physical velocity and the...
The work presented in this thesis explores the feasibility of the Multiple Mapping Conditioning (MMC...
Newly-defined closures for the binomial-Langevin Multiple Mapping Conditioning (BLM-MMC) model are u...
Multiple mapping conditioning (MMC) is used to model local extinction and reignition phenomena in ho...
Multiple mapping conditioning (MMC) combines the probability density function (PDF) and the conditio...
This project contributes to the development of the hybrid binomial-Langevin Multiple Mapping Conditi...
This paper follows the evolution in understanding of the multiple mapping conditioning (MMC) approac...
A stochastic implementation of the Multiple Mapping Conditioning (MMC) approach has been applied to ...
Markov jump processes are widely used to model interacting species in circumstances where discretene...
The Combustion Institute Bluff-body turbulent CH 4 : H 2 (1:1) flames at 50% (HM1), 75% (HM2) and 91...
This work introduces modeling of differential diffusion within the multiple mapping conditioning (MM...
The hybrid binomial Langevin-MMC (Multiple Mapping Conditioning) method combines the advantages of t...
Generalized Multiple Mapping Conditioning (MMC) allows for the use of any physical quantity to repre...
A new hybrid binomial Langevin–MMC (Multiple Mapping Conditioning) modelling approach is proposed. T...
The binomial Langevin model (BLM) predicts mixture fraction statistics including higher moments exce...
Multiple mapping conditioning (MMC) explicitly includes a link between the physical velocity and the...
The work presented in this thesis explores the feasibility of the Multiple Mapping Conditioning (MMC...
Newly-defined closures for the binomial-Langevin Multiple Mapping Conditioning (BLM-MMC) model are u...
Multiple mapping conditioning (MMC) is used to model local extinction and reignition phenomena in ho...
Multiple mapping conditioning (MMC) combines the probability density function (PDF) and the conditio...
This project contributes to the development of the hybrid binomial-Langevin Multiple Mapping Conditi...
This paper follows the evolution in understanding of the multiple mapping conditioning (MMC) approac...
A stochastic implementation of the Multiple Mapping Conditioning (MMC) approach has been applied to ...
Markov jump processes are widely used to model interacting species in circumstances where discretene...
The Combustion Institute Bluff-body turbulent CH 4 : H 2 (1:1) flames at 50% (HM1), 75% (HM2) and 91...
This work introduces modeling of differential diffusion within the multiple mapping conditioning (MM...