2024
DOI: 10.1063/5.0231494
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Generalized field inversion strategies for data-driven turbulence closure modeling

Hannes Mandler,
Bernhard Weigand

Abstract: Most data-driven turbulence closures are based on the general structure of nonlinear eddy viscosity models. Although this structure can be embedded into the machine learning algorithm and the Reynolds stress tensor itself can be fit as a function of scalar- and tensor-valued inputs, there exists an alternative two-step approach. First, the spatial distributions of the optimal closure coefficients are computed by solving an inverse problem. Subsequently, these are expressed as functions of solely scalar-valued … Show more

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