Bulletin of the American Physical Society
77th Annual Meeting of the Division of Fluid Dynamics
Sunday–Tuesday, November 24–26, 2024; Salt Lake City, Utah
Session C02: Interact: Machine Learning in Fluids
10:50 AM,
Sunday, November 24, 2024
Room: 255 E
Chair: Karthikeyan Duraisamy, University of Michigan
Abstract: C02.00002 : Kinetic data-driven approach to turbulence subgrid modeling
Presenter:
Alessandro Gabbana
(Los Alamos National Laboratory (LANL))
Authors:
Alessandro Gabbana
(Los Alamos National Laboratory (LANL))
Giulio Ortali
(Eindhoven University of Technology)
Nicola Demo
(SISSA (International School for Advanced Studies), Trieste, Italy)
Gianluigi Rozza
(SISSA (International School for Advanced Studies), Trieste, Italy)
Federico Toschi
(Eindhoven University of Technology)
This talk presents a data-driven kinetic approach to turbulence modeling, using Direct Numerical Simulation (DNS) data of homogenous isotropic turbluent flows to learn a surrogate collision operator for a lattice Boltzmann solver, which effectively acts as a SGS model. We show that by exploiting the extra degrees of freedom offered by the mesoscopic description the model allows for stable simulations on coarse grids, preserving the statistical properties of turbulent flows, correctly capturing the intermittency of high-order velocity correlations. This work highlights how ANN can be employed to embed new physics from data in the framework of kinetic models.
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