Applicability of Machine Learning Methodologies to Model the Statistical Evolution of the Coarse-Grained Velocity Gradient Tensor
ORAL
Abstract
The evolution of the Lagrangian velocity gradient tensor contains local information about a variety of important turbulence characteristics. Work to model this evolution in isotropic turbulence, and at the smallest scales, has been successful - particularly through the use of machine learning (ML) techniques to approximate local closures to the non-local pressure hessian. However, extension of these methods to describe the evolution of the velocity gradient tensor (CGVGT) coarse-grained at a scale within the inertial range of turbulence remains to be a challenge. In this work, we examine the statistics of the CGVGT and its associated pressure Hessian to determine why the proposed ML methods struggle as the coarse-graining size increases. Through this investigation, we hope to enable a path forward in modeling the statistical evolution of the CGVGT.
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Presenters
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Criston M Hyett
The University of Arizona, University of Arizona
Authors
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Criston M Hyett
The University of Arizona, University of Arizona
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Yifeng Tian
Los Alamos National Laboratory
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Michael Woodward
University of Arizona
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Michael Chertkov
University of Arizona
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Daniel Livescu
LANL, Los Alamos National Laboratory
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Mikhail Stepanov
University of Arizona, The University of Arizona