Modeling of Turbulent Natural Convection in Enclosed Tall Cavities


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Аннотация

It was shown in our previous work (J. Appl. Mech. Tech. Phys 57 (7), 1159–1171 (2016)) that the eddy-resolving parameter-free CABARET scheme as applied to two-and three-dimensional de Vahl Davis benchmark tests (thermal convection in a square cavity) yields numerical results on coarse (20 × 20 and 20 × 20 × 20) grids that agree surprisingly well with experimental data and highly accurate computations for Rayleigh numbers of up to 1014. In the present paper, the sensitivity of this phenomenon to the cavity shape (varying from cubical to highly elongated) is analyzed. Box-shaped computational domains with aspect ratios of 1: 4, 1: 10, and 1: 28.6 are considered. The results produced by the CABARET scheme are compared with experimental data (aspect ratio of 1: 28.6), DNS results (aspect ratio of 1: 4), and an empirical formula (aspect ratio of 1: 10). In all the cases, the CABARET-based integral parameters of the cavity flow agree well with the other authors’ results. Notably coarse grids with mesh refinement toward the walls are used in the CABARET calculations. It is shown that acceptable numerical accuracy on extremely coarse grids is achieved for an aspect ratio of up to 1: 10. For higher aspect ratios, the number of grid cells required for achieving prescribed accuracy grows significantly.

Об авторах

V. Goloviznin

Faculty of Computational Mathematics and Cybernetics

Автор, ответственный за переписку.
Email: gol@ibrae.ac.ru
Россия, Moscow, 119991

I. Korotkin

Nuclear Safety Institute

Email: gol@ibrae.ac.ru
Россия, Moscow, 115191

S. Finogenov

Nuclear Safety Institute

Email: gol@ibrae.ac.ru
Россия, Moscow, 115191

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