User: Guest  Login

Title:

Inferring incompressible two-phase flow fields from the interface motion using physics-informed neural networks

Document type:
Zeitschriftenaufsatz
Author(s):
Buhendwa, Aaron B.; Adami, Stefan; Adams, Nikolaus A.
Abstract:
In this work, physics-informed neural networks are applied to incompressible two-phase flow problems. We investigate the forward problem, where the governing equations are solved from initial and boundary conditions, as well as the inverse problem, where continuous velocity and pressure fields are inferred from scattered-time data on the interface position. We employ a volume of fluid approach, i.e. the auxiliary variable here is the volume fraction of the fluids within each phase. For the forwa...     »
Keywords:
Physics-informed neural networks; Two-phase flows; Volume-of-fluid; Hidden fluid mechanics; Incompressible Navier–Stokes equations
Dewey Decimal Classification:
620 Ingenieurwissenschaften
Journal title:
Machine Learning with Applications
Year:
2021
Journal volume:
4
Pages contribution:
100029
Language:
en
Fulltext / DOI:
doi:10.1016/j.mlwa.2021.100029
Publisher:
Elsevier BV
E-ISSN:
2666-8270
Submitted:
14.08.2020
Accepted:
10.03.2021
Date of publication:
01.06.2021
TUM Institution:
Lehrstuhl für Aerodynamik und Strömungsmechanik
 BibTeX