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A Physics Informed Stochastic Model for the Behavior of Particles in Rayleigh–Bénard Turbulence

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posted on 2023-04-25, 00:00 authored by Colin Denzel

The Pi Chamber generates moist turbulent Rayleigh-Benard flow in order to replicate steady-state cloud conditions. We take inspiration from this setup and consider a particle-laden, convectively-driven turbulent flow using direct numerical simulation (DNS). The aim of our study is to develop a simple stochastic model that can accurately describe the residence times of the particles in the flow, this time being determined by the complex competition between the gravitational settling of the particles, and the interaction of the particles with the turbulent structures in the flow. A simple conceptual picture underlies the stochastic model, namely that the particles take repeated trips between the top and bottom boundaries, driven by the convective cells that occur in Rayleigh-Benard turbulence, and that their residence times are determined by the time it takes to complete one of these trips, which varies from one trip to another, and the probability of falling out to the bottom boundary after each trip. Despite the simplicity of the model, it yields quantitatively accurate predictions of the distribution of the particle residence times in the flow. We independently vary the Stokes numbers and settling velocities in order to shed light on the independent roles that gravity and inertia play in governing these residence times.

History

Date Modified

2023-04-27

CIP Code

  • 14.1901

Research Director(s)

David H. Richter

Degree

  • Master of Science in Mechanical Engineering

Degree Level

  • Master's Thesis

Alternate Identifier

1377559255

OCLC Number

1377559255

Program Name

  • Aerospace and Mechanical Engineering

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