Graph Neural Network-based surrogate model for granular flows

05/09/2023
by   Yongjin Choi, et al.
0

Accurate simulation of granular flow dynamics is crucial for assessing various geotechnical risks, including landslides and debris flows. Granular flows involve a dynamic rearrangement of particles exhibiting complex transitions from solid-like to fluid-like responses. Traditional continuum and discrete numerical methods are limited by their computational cost in simulating large-scale systems. Statistical or machine learning-based models offer an alternative. Still, they are largely empirical, based on a limited set of parameters. Due to their permutation-dependent learning, traditional machine learning-based models require huge training data to generalize. To resolve these problems, we use a graph neural network, a state-of-the-art machine learning architecture that learns local interactions. Graphs represent the state of dynamically changing granular flows and the interaction laws, such as energy and momentum exchange between grains. We develop a graph neural network-based simulator (GNS) that takes the current state of granular flow and predicts the next state using Euler explicit integration by learning the local interaction laws. We train GNS on different granular trajectories. We then assess the performance of GNS by predicting granular column collapse. GNS accurately predicts flow dynamics for column collapses with different aspect ratios unseen during training. GNS is hundreds of times faster than high-fidelity numerical simulators. The model also generalizes to domains much larger than the training data, handling more than twice the number of particles than it was trained on.

READ FULL TEXT

page 14

page 16

page 19

research
11/18/2022

GNS: A generalizable Graph Neural Network-based simulator for particulate and fluid modeling

We develop a PyTorch-based Graph Network Simulator (GNS) that learns phy...
research
07/25/2023

Multi-GPU Approach for Training of Graph ML Models on large CFD Meshes

Mesh-based numerical solvers are an important part in many design tool c...
research
06/21/2021

Boundary Graph Neural Networks for 3D Simulations

The abundance of data has given machine learning huge momentum in natura...
research
06/25/2022

Minority Report: A Graph Network Oracle for In Situ Visualization

In situ visualization techniques are hampered by a lack of foresight: cr...
research
03/31/2023

E(3) Equivariant Graph Neural Networks for Particle-Based Fluid Mechanics

We contribute to the vastly growing field of machine learning for engine...
research
06/07/2020

Neural Vortex Method: from Finite Lagrangian Particles to Infinite Dimensional Eulerian Dynamics

In the field of fluid numerical analysis, there has been a long-standing...
research
11/17/2022

Graph Neural Network-based Surrogate Models for Finite Element Analysis

Current simulation of metal forging processes use advanced finite elemen...

Please sign up or login with your details

Forgot password? Click here to reset