In this paper, we investigate the feasibility of using DNS data and machine learning algorithms to assist RANS turbulence model development. High-fidelity DNS data are generated with the incompressible Navier–Stokes solver implemented in the spectral/hp element software framework Nektar++. Two test cases are considered: a turbulent channel flow and a stationary serpentine passage, representative of internal turbo-machinery cooling flow. The Python framework TensorFlow is chosen to train neural networks in order to address the known limitations of the Boussinesq approximation and a clustering based on flow features is run upfront to enable training on selected areas. The resulting models are implemented in the Rolls-Royce solver HYDRA and a ...
International audienceThe high expressivity and agility of physics-informed neural networks (PINNs) ...
A novel machine learning algorithm is presented, serving as a data-driven turbulence modeling tool f...
A novel machine learning algorithm is presented, serving as a data-driven turbulence modeling tool f...
The application of machine learning algorithms as data-driven turbulence modelling tools for Reynold...
In this paper, deep learning (DL) methods are evaluated in the context of turbulent flows. Various g...
Among numerical solution techniques for turbulent flow, Reynolds Average Navier-Stokes (RANS) presen...
In this paper, a physics-informed machine learning approach is applied to improve the accuracy of th...
Turbulence modelling corresponds to one of the greatest unsolved problems in physics and mathematics...
Accurate prediction of turbulent flows is important due to their typical key roles in engineering an...
Liquid metals play a central role in new generation liquid metal cooled nuclear reactors, for which ...
International audienceThe high expressivity and agility of physics-informed neural networks (PINNs) ...
A novel machine learning algorithm is presented, serving as a data-driven turbulence modeling tool f...
A novel machine learning algorithm is presented, serving as a data-driven turbulence modeling tool f...
Fluid dynamics of liquid metals plays a central role in new generation liquid metal cooled nuclear r...
A novel machine learning algorithm is presented, serving as a data-driven turbulence modeling tool f...
International audienceThe high expressivity and agility of physics-informed neural networks (PINNs) ...
A novel machine learning algorithm is presented, serving as a data-driven turbulence modeling tool f...
A novel machine learning algorithm is presented, serving as a data-driven turbulence modeling tool f...
The application of machine learning algorithms as data-driven turbulence modelling tools for Reynold...
In this paper, deep learning (DL) methods are evaluated in the context of turbulent flows. Various g...
Among numerical solution techniques for turbulent flow, Reynolds Average Navier-Stokes (RANS) presen...
In this paper, a physics-informed machine learning approach is applied to improve the accuracy of th...
Turbulence modelling corresponds to one of the greatest unsolved problems in physics and mathematics...
Accurate prediction of turbulent flows is important due to their typical key roles in engineering an...
Liquid metals play a central role in new generation liquid metal cooled nuclear reactors, for which ...
International audienceThe high expressivity and agility of physics-informed neural networks (PINNs) ...
A novel machine learning algorithm is presented, serving as a data-driven turbulence modeling tool f...
A novel machine learning algorithm is presented, serving as a data-driven turbulence modeling tool f...
Fluid dynamics of liquid metals plays a central role in new generation liquid metal cooled nuclear r...
A novel machine learning algorithm is presented, serving as a data-driven turbulence modeling tool f...
International audienceThe high expressivity and agility of physics-informed neural networks (PINNs) ...
A novel machine learning algorithm is presented, serving as a data-driven turbulence modeling tool f...
A novel machine learning algorithm is presented, serving as a data-driven turbulence modeling tool f...