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Title: Two-phase flow simulations of surface waves in wind-forced conditions
The paper is devoted to two-phase flow simulations and investigates the ability of a diffusive interface Cahn–Hilliard volume-of-fluid model to capture the dynamics of the air–sea interface at geophysically relevant Reynolds numbers. It employs a hybrid filtered/averaging improved detached eddy simulation method to model turbulence and utilizes a continuum model to account for surface tension if the diffuse interface is under-resolved by the grid. A numerical wind-wave tank is introduced, and results obtained for two known wind-wave conditions are analyzed in comparison to experimental data at matched Reynolds numbers. The focus of the comparison is on both time-averaged and wave-coherent quantities, and includes pressure, velocity as well as modeled and resolved Reynolds stresses. In general, numerical predictions agree well with the experimental measurements and reproduce many wave-dependent flow features. Reynolds stresses near the water surface are found to be especially important in modulating the critical layer height. It is concluded that the diffusive interface approach proves to be a promising method for future studies of air–sea interface dynamics in geophysically relevant flows.  more » « less
Award ID(s):
2023626
PAR ID:
10568490
Author(s) / Creator(s):
; ; ; ; ; ;
Publisher / Repository:
Physics of Fluids
Date Published:
Journal Name:
Physics of Fluids
Volume:
35
Issue:
7
ISSN:
1070-6631
Format(s):
Medium: X
Sponsoring Org:
National Science Foundation
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