The volume of fluid (VoF) method is widely used in multi-phase flow simulations to track and locate the interface between two immiscible fluids. A major bottleneck of the VoF method is the interface reconstruction step due to its high computational cost and low accuracy on unstructured grids. We propose a machine learning enhanced VoF method based on Graph Neural Networks (GNN) to accelerate the interface reconstruction on general unstructured meshes. We first develop a methodology to generate a synthetic dataset based on paraboloid surfaces discretized on unstructured meshes. We then train a GNN based model and perform generalization tests. Our results demonstrate the efficiency of a GNN based approach for interface reconstruction in multi...
International audienceWe introduce in this paper new and very effective numerical methods based on n...
We introduce in this paper new, efficient numerical methods based on neural networks for the approxi...
Deep learning has been employed to identify flow characteristics from Computational Fluid Dynamics (...
The volume of fluid (VoF) method is widely used in multi-phase flow simulations to track and locate ...
The volume of fluid (VoF) method is widely used in multi-phase flow simulations to track and locate ...
The volume of fluid (VOF) method is widely used to simulate the flow of immiscible fluids. It uses a...
The volume of fluid (VOF) method is widely used to simulate the flow of immiscible fluids. It uses a...
In recent years, the development of deep learning is noticeably influencing the progress of computat...
Using convolutional neural networks, deep learning-based reduced-order models have demonstrated grea...
The complex flow modeling based on machine learning is becoming a promising way to describe multipha...
Multiphase flows are described by the multiphase Navier-Stokes equations. Numerically solving these ...
The spread of machine learning (ML) techniques in combination with the availability of high-quality ...
Multiphase flows are described by the multiphase Navier-Stokes equations. Numerically solving these ...
International audienceThe ubiquity of fluids in the physical world explains the need to accurately s...
International audienceWe introduce in this paper new and very effective numerical methods based on n...
We introduce in this paper new, efficient numerical methods based on neural networks for the approxi...
Deep learning has been employed to identify flow characteristics from Computational Fluid Dynamics (...
The volume of fluid (VoF) method is widely used in multi-phase flow simulations to track and locate ...
The volume of fluid (VoF) method is widely used in multi-phase flow simulations to track and locate ...
The volume of fluid (VOF) method is widely used to simulate the flow of immiscible fluids. It uses a...
The volume of fluid (VOF) method is widely used to simulate the flow of immiscible fluids. It uses a...
In recent years, the development of deep learning is noticeably influencing the progress of computat...
Using convolutional neural networks, deep learning-based reduced-order models have demonstrated grea...
The complex flow modeling based on machine learning is becoming a promising way to describe multipha...
Multiphase flows are described by the multiphase Navier-Stokes equations. Numerically solving these ...
The spread of machine learning (ML) techniques in combination with the availability of high-quality ...
Multiphase flows are described by the multiphase Navier-Stokes equations. Numerically solving these ...
International audienceThe ubiquity of fluids in the physical world explains the need to accurately s...
International audienceWe introduce in this paper new and very effective numerical methods based on n...
We introduce in this paper new, efficient numerical methods based on neural networks for the approxi...
Deep learning has been employed to identify flow characteristics from Computational Fluid Dynamics (...