This paper presents a novel generative model to synthesize fluid simulations from a set of reduced parameters. A convolutional neural network is trained on a collection of discrete, parameterizable fluid simulation velocity fields. Due to the capability of deep learning architectures to learn representative features of the data, our generative model is able to accurately approximate the training data set, while providing plausible interpolated in-betweens. The proposed generative model is optimized for fluids by a novel loss function that guarantees divergence-free velocity fields at all times. In addition, we demonstrate that we can handle complex parameterizations in reduced spaces, and advance simulations in time by integrating in the la...
Deep learning has shown great potential for modeling the physical dynamics of complex particle syste...
This paper presents a novel model reduction method: deep learning reduced order model, which is base...
It is the tradition for the fluid community to study fluid dynamics problems via numerical simulatio...
The modeling of complex physical and biological phenomena has long been the domain of computational ...
In recent years, deep learning has opened countless research opportunities across many different dis...
Simulating fluid flows in different virtual scenarios is of key importance in engineering applicatio...
The main objective of this thesis was to explore the capabilities of neural networks in terms of rep...
Simulating fluid flows in different virtual scenarios is of key importance in engineering applicatio...
Over the last decade, deep learning methods have achieved success in diverse domains, becoming one o...
The computational cost and memory demand required by computational fluid dynamics (CFD) codes simula...
The unprecedented amount of data generated from experiments, field observations, and large-scale num...
Data sets for the two numerical examples in the paper Multi-fidelity Generative Deep Learning Turbul...
Computational fluid dynamics (CFD) is the de-facto method for solving the Navier-Stokes equations, t...
In recent years, the evolution of artificial intelligence, especially deep learning, has been remark...
Historically, numerical analysis has formed the backbone of supercomputing for decades by applying m...
Deep learning has shown great potential for modeling the physical dynamics of complex particle syste...
This paper presents a novel model reduction method: deep learning reduced order model, which is base...
It is the tradition for the fluid community to study fluid dynamics problems via numerical simulatio...
The modeling of complex physical and biological phenomena has long been the domain of computational ...
In recent years, deep learning has opened countless research opportunities across many different dis...
Simulating fluid flows in different virtual scenarios is of key importance in engineering applicatio...
The main objective of this thesis was to explore the capabilities of neural networks in terms of rep...
Simulating fluid flows in different virtual scenarios is of key importance in engineering applicatio...
Over the last decade, deep learning methods have achieved success in diverse domains, becoming one o...
The computational cost and memory demand required by computational fluid dynamics (CFD) codes simula...
The unprecedented amount of data generated from experiments, field observations, and large-scale num...
Data sets for the two numerical examples in the paper Multi-fidelity Generative Deep Learning Turbul...
Computational fluid dynamics (CFD) is the de-facto method for solving the Navier-Stokes equations, t...
In recent years, the evolution of artificial intelligence, especially deep learning, has been remark...
Historically, numerical analysis has formed the backbone of supercomputing for decades by applying m...
Deep learning has shown great potential for modeling the physical dynamics of complex particle syste...
This paper presents a novel model reduction method: deep learning reduced order model, which is base...
It is the tradition for the fluid community to study fluid dynamics problems via numerical simulatio...