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Titel:

Learning Lagrangian Fluid Mechanics with E(3)-Equivariant Graph Neural Networks

Dokumenttyp:
Buchbeitrag
Autor(en):
Toshev, Artur P.; Galletti, Gianluca; Brandstetter, Johannes; Adami, Stefan; Adams, Nikolaus A.
Abstract:
We contribute to the vastly growing field of machine learning for engineering systems by demonstrating that equivariant graph neural networks have the potential to learn more accurate dynamic-interaction models than their non-equivariant counterparts. We benchmark two well-studied fluid-flow systems, namely 3D decaying Taylor-Green vortex and 3D reverse Poiseuille flow, and evaluate the models based on different performance measures, such as kinetic energy or Sinkhorn distance. In addition, we i...     »
Stichworte:
Equivariance; Fluid mechanics; Graph Neural Networks; Lagrangian Methods; Smoothed Particle Hydrodynamics
Dewey-Dezimalklassifikation:
620 Ingenieurwissenschaften
Buchtitel:
Lecture Notes in Computer Science
Verlag / Institution:
Springer Nature Switzerland
Jahr:
2023
Seiten/Umfang:
332-341
Nachgewiesen in:
Scopus
Print-ISBN:
97830313829879783031382994
Sprache:
en
DOI:
doi:10.1007/978-3-031-38299-4_35
WWW:
https://link.springer.com/chapter/10.1007/978-3-031-38299-4_35
TUM Einrichtung:
Lehrstuhl für Aerodynamik und Strömungsmechanik
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