In this work, we propose using an ensemble Kalman method to learn a nonlinear eddy viscosity model, represented as a tensor basis neural network, from velocity data. Data-driven turbulence models have emerged as a promising alternative to traditional models for providing closure mapping from the mean velocities to Reynolds stresses. Most data-driven models in this category need full-field Reynolds stress data for training, which not only places stringent demand on the data generation but also makes the trained model ill-conditioned and lacks robustness. This difficulty can be alleviated by incorporating the Reynolds-averaged Navier-Stokes (RANS) solver in the training process. However, this would necessitate developing adjoint solvers of th...
The application of machine learning algorithms as data-driven turbulence modelling tools for Reynold...
From the simplest models to complex deep neural networks, modeling turbulence with machine learning ...
The problem of classifying turbulent environments from partial observation is key for some theoretic...
In this work, we propose using an ensemble Kalman method to learn a nonlinear eddy viscosity model, ...
In this work, we propose using an ensemble Kalman method to learn a nonlinear eddy viscosity model, ...
This paper presents a neural-network-based turbulence modeling approach for transonic flows based on...
Learning turbulence models from observation data is of significant interest in discovering a unified...
The emerging push of the differentiable programming paradigm in scientific computing is conducive to...
In recent years, machine learning methods represented by deep neural networks (DNN) have been a new ...
A novel machine learning algorithm is presented, serving as a data-driven turbulence modeling tool f...
Most flows of engineering interest are turbulent. Direct numerical or scale-resolved simulations (DN...
Most flows of engineering interest are turbulent. Direct numerical or scale-resolved simulations (DN...
In this article, we demonstrate the use of artificial neural networks as optimal maps which are util...
Turbulence closure models will continue to be necessary in order to perform computationally affordab...
This paper introduces an ensemble-based field inversion framework to augment the turbulence models b...
The application of machine learning algorithms as data-driven turbulence modelling tools for Reynold...
From the simplest models to complex deep neural networks, modeling turbulence with machine learning ...
The problem of classifying turbulent environments from partial observation is key for some theoretic...
In this work, we propose using an ensemble Kalman method to learn a nonlinear eddy viscosity model, ...
In this work, we propose using an ensemble Kalman method to learn a nonlinear eddy viscosity model, ...
This paper presents a neural-network-based turbulence modeling approach for transonic flows based on...
Learning turbulence models from observation data is of significant interest in discovering a unified...
The emerging push of the differentiable programming paradigm in scientific computing is conducive to...
In recent years, machine learning methods represented by deep neural networks (DNN) have been a new ...
A novel machine learning algorithm is presented, serving as a data-driven turbulence modeling tool f...
Most flows of engineering interest are turbulent. Direct numerical or scale-resolved simulations (DN...
Most flows of engineering interest are turbulent. Direct numerical or scale-resolved simulations (DN...
In this article, we demonstrate the use of artificial neural networks as optimal maps which are util...
Turbulence closure models will continue to be necessary in order to perform computationally affordab...
This paper introduces an ensemble-based field inversion framework to augment the turbulence models b...
The application of machine learning algorithms as data-driven turbulence modelling tools for Reynold...
From the simplest models to complex deep neural networks, modeling turbulence with machine learning ...
The problem of classifying turbulent environments from partial observation is key for some theoretic...