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Learning 3D Granular Flow Simulations

Authors :
Mayr, Andreas
Lehner, Sebastian
Mayrhofer, Arno
Kloss, Christoph
Hochreiter, Sepp
Brandstetter, Johannes
Publication Year :
2021

Abstract

Recently, the application of machine learning models has gained momentum in natural sciences and engineering, which is a natural fit due to the abundance of data in these fields. However, the modeling of physical processes from simulation data without first principle solutions remains difficult. Here, we present a Graph Neural Networks approach towards accurate modeling of complex 3D granular flow simulation processes created by the discrete element method LIGGGHTS and concentrate on simulations of physical systems found in real world applications like rotating drums and hoppers. We discuss how to implement Graph Neural Networks that deal with 3D objects, boundary conditions, particle - particle, and particle - boundary interactions such that an accurate modeling of relevant physical quantities is made possible. Finally, we compare the machine learning based trajectories to LIGGGHTS trajectories in terms of particle flows and mixing entropies.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2105.01636
Document Type :
Working Paper