Traditional fluid flow predictions require large computational resources. Despite recent progress in parallel and GPU computing, the ability to run fluid flow predictions in real-time is often infeasible. Recently developed machine learning approaches, which are trained on high-fidelity data, perform unsatisfactorily outside the training set and remove the ability of utilising legacy codes after training. We propose a novel methodology that uses a deep learning approach that can be used within a low-fidelity fluid flow solver to significantly increase the accuracy of the low-fidelity simulations. The resulting solver enables accurate while reducing computational times up to 100 times. The deep neural network is trained on a combinati...
Computational Fluid Dynamics (CFD) simulations are a numerical tool to model and analyze the behavio...
In recent years, deep learning has opened countless research opportunities across many different dis...
We demonstrate several techniques to encourage practical uses of neural networks for fluid flow esti...
Traditional fluid flow predictions require large computational resources. Despite recent progress i...
The modeling of complex physical and biological phenomena has long been the domain of computational ...
Computational fluid dynamics (CFD) is the de-facto method for solving the Navier-Stokes equations, t...
Machine learning models are gaining increasing popularity in the domain of fluid dynamics for their ...
Recently, computational modeling has shifted towards the use of statistical inference, deep learning...
Recently, physics-driven deep learning methods have shown particular promise for the prediction of p...
It is the tradition for the fluid community to study fluid dynamics problems via numerical simulatio...
The usage of neural networks (NNs) for flow reconstruction (FR) tasks from a limited number of senso...
Data sets for the two numerical examples in the paper Multi-fidelity Generative Deep Learning Turbul...
A convolution neural network (CNN)-based approach for the construction of reduced order surrogate mo...
Historically, numerical analysis has formed the backbone of supercomputing for decades by applying m...
Physics-informed neural network (PINN) architectures are recent developments that can act as surroga...
Computational Fluid Dynamics (CFD) simulations are a numerical tool to model and analyze the behavio...
In recent years, deep learning has opened countless research opportunities across many different dis...
We demonstrate several techniques to encourage practical uses of neural networks for fluid flow esti...
Traditional fluid flow predictions require large computational resources. Despite recent progress i...
The modeling of complex physical and biological phenomena has long been the domain of computational ...
Computational fluid dynamics (CFD) is the de-facto method for solving the Navier-Stokes equations, t...
Machine learning models are gaining increasing popularity in the domain of fluid dynamics for their ...
Recently, computational modeling has shifted towards the use of statistical inference, deep learning...
Recently, physics-driven deep learning methods have shown particular promise for the prediction of p...
It is the tradition for the fluid community to study fluid dynamics problems via numerical simulatio...
The usage of neural networks (NNs) for flow reconstruction (FR) tasks from a limited number of senso...
Data sets for the two numerical examples in the paper Multi-fidelity Generative Deep Learning Turbul...
A convolution neural network (CNN)-based approach for the construction of reduced order surrogate mo...
Historically, numerical analysis has formed the backbone of supercomputing for decades by applying m...
Physics-informed neural network (PINN) architectures are recent developments that can act as surroga...
Computational Fluid Dynamics (CFD) simulations are a numerical tool to model and analyze the behavio...
In recent years, deep learning has opened countless research opportunities across many different dis...
We demonstrate several techniques to encourage practical uses of neural networks for fluid flow esti...