Lagrangian large eddy simulations via physics-informed machine learning

Author:

Tian Yifeng1ORCID,Woodward Michael23ORCID,Stepanov Mikhail2ORCID,Fryer Chris3ORCID,Hyett Criston23,Livescu Daniel3ORCID,Chertkov Michael2ORCID

Affiliation:

1. Information Sciences Group, Computer, Computational and Statistical Sciences Division (CCS-3), Los Alamos National Laboratory, Los Alamos, NM 87545

2. Graduate Interdisciplinary Program in Applied Mathematics and Department of Mathematics, University of Arizona, Tucson, AZ 85721

3. Computational Physics and Methods Group, Computer, Computational and Statistical Sciences Division (CCS-2), Los Alamos National Laboratory, Los Alamos, NM 87545

Abstract

High-Reynolds number homogeneous isotropic turbulence (HIT) is fully described within the Navier–Stokes (NS) equations, which are notoriously difficult to solve numerically. Engineers, interested primarily in describing turbulence at a reduced range of resolved scales, have designed heuristics, known as large eddy simulation (LES). LES is described in terms of the temporally evolving Eulerian velocity field defined over a spatial grid with the mean-spacing correspondent to the resolved scale. This classic Eulerian LES depends on assumptions about effects of subgrid scales on the resolved scales. Here, we take an alternative approach and design LES heuristics stated in terms of Lagrangian particles moving with the flow. Our Lagrangian LES, thus L-LES, is described by equations generalizing the weakly compressible smoothed particle hydrodynamics formulation with extended parametric and functional freedom, which is then resolved via Machine Learning training on Lagrangian data from direct numerical simulations of the NS equations. The L-LES model includes physics-informed parameterization and functional form, by combining physics-based parameters and physics-inspired Neural Networks to describe the evolution of turbulence within the resolved range of scales. The subgrid-scale contributions are modeled separately with physical constraints to account for the effects from unresolved scales. We build the resulting model under the differentiable programming framework to facilitate efficient training. We experiment with loss functions of different types, including physics-informed ones accounting for statistics of Lagrangian particles. We show that our L-LES model is capable of reproducing Eulerian and unique Lagrangian turbulence structures and statistics over a range of turbulent Mach numbers.

Funder

DOE | NNSA | LDRD | Los Alamos National Laboratory

Publisher

Proceedings of the National Academy of Sciences

Subject

Multidisciplinary

Reference87 articles.

1. P. Sagaut, Large Eddy Simulation for Incompressible Flows: An Introduction (Springer Science& Business Media, 2006).

2. G. R. Liu, Y. T. Gu, An Introduction to Meshfree Methods and Their Programming (Springer Science& Business Media, 2005).

3. Smoothed Particle Hydrodynamics (SPH): an Overview and Recent Developments

4. LAGRANGIAN INVESTIGATIONS OF TURBULENCE

5. Smoothed particle hydrodynamics: theory and application to non-spherical stars

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1. Lagrangian large eddy simulations via physics-informed machine learning;Proceedings of the National Academy of Sciences;2023-08-16

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