dc.description.abstract |
In probability density function (PDF) methods of turbulent flows, the joint PDF of several
flow variables is computed by numerically integrating a system of stochastic differential
equations for Lagrangian particles. Because the technique solves a transport equation for
the PDF of the velocity and scalars, a mathematically exact treatment of advection, viscous
effects and arbitrarily complex chemical reactions is possible; these processes are treated
without closure assumptions. A set of algorithms is proposed to provide an efficient solution
of the PDF transport equation modeling the joint PDF of turbulent velocity, frequency and
concentration of a passive scalar in geometrically complex configurations. An unstructured
Eulerian grid is employed to extract Eulerian statistics, to solve for quantities represented
at fixed locations of the domain and to track particles. All three aspects regarding the
grid make use of the finite element method. Compared to hybrid methods, the current
methodology is stand-alone, therefore it is consistent both numerically and at the level
of turbulence closure without the use of consistency conditions. Since both the turbulent
velocity and scalar concentration fields are represented in a stochastic way, the method
allows for a direct and close interaction between these fields, which is beneficial in computing
accurate scalar statistics.
Boundary conditions implemented along solid bodies are of the free-slip and no-slip type
without the need for ghost elements. Boundary layers at no-slip boundaries are either
fully resolved down to the viscous sublayer, explicitly modeling the high anisotropy and
inhomogeneity of the low-Reynolds-number wall region without damping or wall-functions
or specified via logarithmic wall-functions. As in moment closures and large eddy simulation,
these wall-treatments provide the usual trade-off between resolution and computational cost
as required by the given application.
Particular attention is focused on modeling the dispersion of passive scalars in inhomogeneous turbulent flows. Two different micromixing models are investigated that incorporate
the effect of small scale mixing on the transported scalar: the widely used interaction by
exchange with the mean and the interaction by exchange with the conditional mean model.
An adaptive algorithm to compute the velocity-conditioned scalar mean is proposed that
homogenizes the statistical error over the sample space with no assumption on the shape of
the underlying velocity PDF. The development also concentrates on a generally applicable
micromixing timescale for complex flow domains.
Several newly developed algorithms are described in detail that facilitate a stable numerical solution in arbitrarily complex flow geometries, including a stabilized mean-pressure
projection scheme, the estimation of conditional and unconditional Eulerian statistics and
their derivatives from stochastic particle fields employing finite element shapefunctions, particle tracking through unstructured grids, an efficient particle redistribution procedure and
techniques related to efficient random number generation.
The algorithm is validated and tested by computing three different turbulent flows: the
fully developed turbulent channel flow, a street canyon (or cavity) flow and the turbulent
wake behind a circular cylinder at a sub-critical Reynolds number.
The solver has been parallelized and optimized for shared memory and multi-core architectures using the OpenMP standard. Relevant aspects of performance and parallelism on
cache-based shared memory machines are discussed and presented in detail. The methodology shows great promise in the simulation of high-Reynolds-number incompressible inert
or reactive turbulent flows in realistic configurations. |
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