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Please use this identifier to cite or link to this item: http://hdl.handle.net/11375/12809
Title: Particle subgrid scale modeling in large-eddy simulation of particle-laden turbulence
Authors: Cernick, Matthew J.
Advisor: Tullis, S.
Lightstone, M.
Department: Mechanical Engineering
Keywords: large-eddy simulation;particle-laden turbulence;particle subgrid scale modeling;approximate deconvolution method;stochastic modeling;computational fluid dynamics;Fluid Dynamics;Mechanical Engineering;Fluid Dynamics
Publication Date: Apr-2013
Abstract: <p>This thesis is concerned with particle subgrid scale (SGS) modeling in large-eddy simulation (LES) of particle-laden turbulence. Although most particle-laden LES studies have neglected the effect of the subgrid scales on the particles, several particle SGS models have been proposed in the literature. In this research, the approximate deconvolution method (ADM), and the stochastic models of Fukagata et al. (2004), Shotorban and Mashayek (2006) and Berrouk et al. (2007) are analyzed. The particle SGS models are assessed by conducting both a priori and a posteriori tests of a periodic box of decaying, homogeneous and isotropic turbulence with an initial Reynolds number of Re=74. The model results are compared with particle statistics from a direct numerical simulation (DNS). Particles with a large range of Stokes numbers are tested using various filter sizes and stochastic model constant values. Simulations with and without gravity are performed to evaluate the ability of the models to account for the crossing trajectory and continuity effects. The results show that ADM improves results but is only capable of recovering a portion of the SGS turbulent kinetic energy. Conversely, the stochastic models are able to recover sufficient energy, but show a large range of results dependent on Stokes number and filter size. The stochastic models generally perform best at small Stokes numbers. Due to the random component, the stochastic models are unable to predict preferential concentration.</p>
URI: http://hdl.handle.net/11375/12809
Identifier: opendissertations/7664
8730
3568987
Appears in Collections:Open Access Dissertations and Theses

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