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Hierarchical parcel-swapping representation of turbulent mixing. Part 2. Application to channel flow

Published online by Cambridge University Press:  10 June 2014

Alan R. Kerstein*
Affiliation:
72 Lomitas Road, Danville, CA 94526, USA
*
Email address for correspondence: alan.kerstein@gmail.com

Abstract

A novel concept for simulation of turbulent mixing, termed hierarchical parcel swapping (HiPS), was recently proposed. The method involves either a parameterized representation of the turbulent flow or a more self-contained flow simulation. As a step toward turbulent mixing applications, the latter formulation is used for the first numerical demonstration of model performance. Owing to its suitability for this purpose and its role as a canonical benchmark, channel flow is the target application. Despite its idealized representation of this flow, HiPS is shown to capture salient features of the flow with a notable degree of quantitative accuracy. The implications of this finding with regard to flow physics and with regard to the applicability of HiPS to other problems are discussed.

Type
Papers
Copyright
© 2014 Cambridge University Press 

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