Machine Learning Statistical Evolution of the Coarse-Grained Velocity Gradient Tensor
ORAL
Abstract
We exploit recent advances in physics-informed machine learning and phenomenological theories of turbulence to develop parameterized stochastic differential equations (SDEs) coupling the Lagrangian evolution of a fluid volume to the coarse-grained velocity gradient tensor; resulting in a reduced order model for incompressible turbulence. Choosing minimal representations of fluid geometry and velocity gradient tensor, we search for local approximations to nonlinear (pressure and subgrid) terms. The goal is achieved by optimizing physics-informed neural networks - dependent on the coupled system of fluid geometry and velocity gradient tensor - over high fidelity Lagrangian direct numerical simulation data. We demonstrate the ability of the parameterized SDEs to reproduce the topological statistics of the coarse-grained velocity gradient tensor, as well as the shape distributions of the respective fluid elements.
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Presenters
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Criston M Hyett
University of Arizona, The University of Arizona
Authors
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Criston M Hyett
University of Arizona, The University of Arizona
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Michael Chertkov
University of Arizona
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Yifeng Tian
Los Alamos National Laboratory
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Daniel Livescu
Los Alamos Natl Lab, Los Alamos National Laboratory
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Mikhail Stepanov
University of Arizona