Unifying formalism and closures for coarse-grained approaches to turbulence
A. Cimarelli, N. Marras, B. Niceno, Y. Tessier Urrecha

TL;DR
This paper introduces a unifying temporal filtering framework for turbulence modeling that bridges statistical and scale-resolving approaches, leading to improved closures and capturing complex phenomena.
Contribution
It presents a novel temporal filtering paradigm that unifies various turbulence closure methods and derives a dynamic procedure applicable across different modeling scales.
Findings
Unveiled algebraic properties of the temporal filter.
Derived a new class of turbulence closures.
Captured complex phenomena like laminar-turbulent transition.
Abstract
We propose the use of an unifying paradigm for the assessment and development of closed forms of the coarse-grained Navier-Stokes equations in approaches ranging from the statistical to the scale-resolving ones. It consists in the exact formalism provided by the temporally filtered Navier-Stokes equations. The fundamental idea is that the smoothing action of turbulent stresses can be described as a temporal filtering operator implicitly applied to the solution. Contrary to the average and spatial filtering operators, the temporal filter is an unifying operator smoothly varying within the statistical and scale-resolving realms. The potential of the temporal filtering paradigm is here highlighted by unveiling relevant algebraic properties and by deriving a new class of turbulence closures. A dynamic procedure is derived and shown to provide an unifying closure for both scale-resolving and…
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Taxonomy
TopicsAdvanced Numerical Methods in Computational Mathematics · Model Reduction and Neural Networks · Fluid Dynamics and Turbulent Flows
