Data sets for the two numerical examples in the paper Multi-fidelity Generative Deep Learning Turbulent Flows. In this work, a novel multi-fidelity deep generative model is introduced for the surrogate modeling of high-fidelity turbulent flow fields given the solution of a computationally inexpensive but inaccurate low-fidelity solver. The resulting surrogate is able to generate physically accurate turbulent realizations at a computational cost magnitudes lower than that of a high-fidelity simulation. The deep generative model developed is a conditional invertible neural network, built with normalizing flows, with recurrent LSTM connections that allow for stable training of transient systems with high predictive accuracy. Data is provided ...
In this paper, we train turbulence models based on convolutional neural networks. These learned turb...
LES computations have limited applications in turbomachinery predictions because of the formidable a...
Machine learning models are gaining increasing popularity in the domain of fluid dynamics for their ...
Data sets for the two numerical examples in the paper Multi-fidelity Generative Deep Learning Turbul...
In this paper, deep learning (DL) methods are evaluated in the context of turbulent flows. Various g...
Turbulent reactive flow simulation often requires accounting for turbulence-chemistry interactions a...
The emerging push of the differentiable programming paradigm in scientific computing is conducive to...
From the simplest models to complex deep neural networks, modeling turbulence with machine learning ...
This article introduces a new Neural Network stochastic model to generate a 1-dimensional stochastic...
Turbulence closure models will continue to be necessary in order to perform computationally affordab...
Traditional fluid flow predictions require large computational resources. Despite recent progress i...
This study proposes a newly-developed deep-learning-based method to generate turbulent inflow condit...
The subject of this study presents an employed method in deep learning to create a model and predict...
Recently, computational modeling has shifted towards the use of statistical inference, deep learning...
A new super-resolution model, namely the turbulence volumetric super-resolution (TVSR) model, is dev...
In this paper, we train turbulence models based on convolutional neural networks. These learned turb...
LES computations have limited applications in turbomachinery predictions because of the formidable a...
Machine learning models are gaining increasing popularity in the domain of fluid dynamics for their ...
Data sets for the two numerical examples in the paper Multi-fidelity Generative Deep Learning Turbul...
In this paper, deep learning (DL) methods are evaluated in the context of turbulent flows. Various g...
Turbulent reactive flow simulation often requires accounting for turbulence-chemistry interactions a...
The emerging push of the differentiable programming paradigm in scientific computing is conducive to...
From the simplest models to complex deep neural networks, modeling turbulence with machine learning ...
This article introduces a new Neural Network stochastic model to generate a 1-dimensional stochastic...
Turbulence closure models will continue to be necessary in order to perform computationally affordab...
Traditional fluid flow predictions require large computational resources. Despite recent progress i...
This study proposes a newly-developed deep-learning-based method to generate turbulent inflow condit...
The subject of this study presents an employed method in deep learning to create a model and predict...
Recently, computational modeling has shifted towards the use of statistical inference, deep learning...
A new super-resolution model, namely the turbulence volumetric super-resolution (TVSR) model, is dev...
In this paper, we train turbulence models based on convolutional neural networks. These learned turb...
LES computations have limited applications in turbomachinery predictions because of the formidable a...
Machine learning models are gaining increasing popularity in the domain of fluid dynamics for their ...