Liquid metals play a central role in new generation liquid metal cooled nuclear reactors, for which numerical investigations require the use of appropriate thermal turbulence models for low Prandtl number fluids. Given the limitations of traditional modelling approaches and the increasing availability of high-fidelity data for this class of fluids, we propose a Machine Learning strategy for the modelling of the turbulent heat flux. A comprehensive algebraic mathematical structure is derived and physical constraints are imposed to ensure attractive properties promoting applicability, robustness and stability. The closure coefficients of the model are predicted by an Artificial Neural Network (ANN) which is trained with DNS data at different ...
Turbulence modelling corresponds to one of the greatest unsolved problems in physics and mathematics...
International audienceThe high expressivity and agility of physics-informed neural networks (PINNs) ...
International audienceThe high expressivity and agility of physics-informed neural networks (PINNs) ...
Fluid dynamics of liquid metals plays a central role in new generation liquid metal cooled nuclear r...
In this paper, we investigate the feasibility of using DNS data and machine learning algorithms to a...
International audienceA chemistry reduction approach based on machine learning is proposed and appli...
One of the main challenges in fluid mechanics and heat transfer is the need for detailed studies and...
One of the main challenges in fluid mechanics and heat transfer is the need for detailed studies and...
The study of turbulent heat transfer in liquid metal flows has gained interest because of applicatio...
Liquid metal cooled reactors are envisaged to play an important role in the future of nuclear energy...
The study of turbulent heat transfer in liquid metal flows has gained interest because of applicatio...
International audienceThe high expressivity and agility of physics-informed neural networks (PINNs) ...
International audienceThe high expressivity and agility of physics-informed neural networks (PINNs) ...
Because of their high molecular heat conductivity, low-Prandtl number liquid metal is a promising ca...
Combustion plays an important role on the energy production network throughout the entire world, fro...
Turbulence modelling corresponds to one of the greatest unsolved problems in physics and mathematics...
International audienceThe high expressivity and agility of physics-informed neural networks (PINNs) ...
International audienceThe high expressivity and agility of physics-informed neural networks (PINNs) ...
Fluid dynamics of liquid metals plays a central role in new generation liquid metal cooled nuclear r...
In this paper, we investigate the feasibility of using DNS data and machine learning algorithms to a...
International audienceA chemistry reduction approach based on machine learning is proposed and appli...
One of the main challenges in fluid mechanics and heat transfer is the need for detailed studies and...
One of the main challenges in fluid mechanics and heat transfer is the need for detailed studies and...
The study of turbulent heat transfer in liquid metal flows has gained interest because of applicatio...
Liquid metal cooled reactors are envisaged to play an important role in the future of nuclear energy...
The study of turbulent heat transfer in liquid metal flows has gained interest because of applicatio...
International audienceThe high expressivity and agility of physics-informed neural networks (PINNs) ...
International audienceThe high expressivity and agility of physics-informed neural networks (PINNs) ...
Because of their high molecular heat conductivity, low-Prandtl number liquid metal is a promising ca...
Combustion plays an important role on the energy production network throughout the entire world, fro...
Turbulence modelling corresponds to one of the greatest unsolved problems in physics and mathematics...
International audienceThe high expressivity and agility of physics-informed neural networks (PINNs) ...
International audienceThe high expressivity and agility of physics-informed neural networks (PINNs) ...