Comparing phase-space and phenomenological modeling approaches for Lagrangian particles settling in a turbulent boundary layer
Andrew P. Grace, David H. Richter, and Andrew D. Bragg

TL;DR
This paper compares phase-space and phenomenological models for inertial particle settling in turbulent boundary layers, using DNS data to evaluate and improve coarse-scale modeling approaches for atmospheric particle deposition.
Contribution
It demonstrates how phase space methods can evaluate and enhance phenomenological models for particle settling velocities in turbulence.
Findings
Phenomenological models rely on incomplete eddy-diffusivity closures.
Settling velocity enhancement varies with Stokes number and settling parameters.
Phase space methods provide detailed insights into particle-turbulence interactions.
Abstract
Under the right circumstances, inertial particles (such as sand or dust) settling through the atmospheric boundary layer can experience a net enhancement in their average settling velocity due to their inertia. Since this enhancement arises due to their interactions with the surrounding turbulence it must be modelled at coarse scales. Models for the enhanced settling velocity (or deposition) of the dispersed phase that find practical use in mesoscale weather models are often ad hoc or are built on phenomenological closure assumptions, meaning that the general deposition rate of particle is a key uncertainty. Instead of taking a phenomenological approach, exact phase space methods can be used to model the physical mechanisms responsible for the enhanced settling, and a more general parameterization of the enhanced settling of inertial particles can be built. In this work, we use direct…
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Taxonomy
TopicsAeolian processes and effects · Particle Dynamics in Fluid Flows · Atmospheric aerosols and clouds
