Large-eddy simulation of wall-bounded turbulent flow with high-order discrete unified gas-kinetic scheme

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作者
Rui Zhang
Chengwen Zhong
Sha Liu
Congshan Zhuo
机构
[1] School of Aeronautics,
[2] Northwestern Polytechnical University,undefined
[3] National Key Laboratory of Science and Technology on Aerodynamic Design and Research,undefined
[4] Northwestern Polytechnical University,undefined
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Large-eddy simulation; Wall-bounded turbulent flow; DUGKS; High order scheme;
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摘要
In this paper, we introduce the discrete Maxwellian equilibrium distribution function for incompressible flow and force term into the two-stage third-order Discrete Unified Gas-Kinetic Scheme (DUGKS) for simulating low-speed turbulent flows. The Wall-Adapting Local Eddy-viscosity (WALE) and Vreman sub-grid models for Large-Eddy Simulations (LES) of turbulent flows are coupled within the present framework. Meanwhile, the implicit LES are also presented to verify the effect of LES models. A parallel implementation strategy for the present framework is developed, and three canonical wall-bounded turbulent flow cases are investigated, including the fully developed turbulent channel flow at a friction Reynolds number (Re) about 180, the turbulent plane Couette flow at a friction Re number about 93 and lid-driven cubical cavity flow at a Re number of 12000. The turbulence statistics, including mean velocity, the r.m.s. fluctuations velocity, Reynolds stress, etc. are computed by the present approach. Their predictions match precisely with each other, and they are both in reasonable agreement with the benchmark data of DNS. Especially, the predicted flow physics of three-dimensional lid-driven cavity flow are consistent with the description from abundant literature. The present numerical results verify that the present two-stage third-order DUGKS-based LES method is capable for simulating inhomogeneous wall-bounded turbulent flows and getting reliable results with relatively coarse grids.
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