Brian N. Bailey
University of Utah
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Featured researches published by Brian N. Bailey.
Boundary-Layer Meteorology | 2018
Brian N. Bailey; Rob Stoll; Eric R. Pardyjak
We present a theoretically consistent framework for modelling Lagrangian particle deposition in plant canopies. The primary focus is on describing the probability of particles encountering canopy elements (i.e., potential deposition), and provides a consistent means for including the effects of imperfect deposition through any appropriate sub-model for deposition efficiency. Some aspects of the framework draw upon an analogy to radiation propagation through a turbid medium with which to develop model theory. The present method is compared against one of the most commonly used heuristic Lagrangian frameworks, namely that originally developed by Legg and Powell (Agricultural Meteorology, 1979, Vol. 20, 47–67), which is shown to be theoretically inconsistent. A recommendation is made to discontinue the use of this heuristic approach in favour of the theoretically consistent framework developed herein, which is no more difficult to apply under equivalent assumptions. The proposed framework has the additional advantage that it can be applied to arbitrary canopy geometries given readily measurable parameters describing vegetation structure.
Boundary-Layer Meteorology | 2017
Brian N. Bailey
When Lagrangian stochastic models for turbulent dispersion are applied to complex atmospheric flows, some type of ad hoc intervention is almost always necessary to eliminate unphysical behaviour in the numerical solution. Here we discuss numerical strategies for solving the non-linear Langevin-based particle velocity evolution equation that eliminate such unphysical behaviour in both Reynolds-averaged and large-eddy simulation applications. Extremely large or ‘rogue’ particle velocities are caused when the numerical integration scheme becomes unstable. Such instabilities can be eliminated by using a sufficiently small integration timestep, or in cases where the required timestep is unrealistically small, an unconditionally stable implicit integration scheme can be used. When the generalized anisotropic turbulence model is used, it is critical that the input velocity covariance tensor be realizable, otherwise unphysical behaviour can become problematic regardless of the integration scheme or size of the timestep. A method is presented to ensure realizability, and thus eliminate such behaviour. It was also found that the numerical accuracy of the integration scheme determined the degree to which the second law of thermodynamics or ‘well-mixed condition’ was satisfied. Perhaps more importantly, it also determined the degree to which modelled Eulerian particle velocity statistics matched the specified Eulerian distributions (which is the ultimate goal of the numerical solution). It is recommended that future models be verified by not only checking the well-mixed condition, but perhaps more importantly by checking that computed Eulerian statistics match the Eulerian statistics specified as inputs.
ASME/STLE 2012 International Joint Tribology Conference, IJTC 2012 | 2012
Mingfeng Qiu; Brian N. Bailey; Rob Stoll; Bart Raeymaekers
The Navier-Stokes and compressible Reynolds equations are solved for gas lubricated textured parallel slider bearings under hydrodynamic lubrication for a range of realistic texture geometry parameters and operating conditions. The simplifying assumptions inherent in the Reynolds equation are validated by comparing simulation results to the solution of the Navier-Stokes equations. Using the Reynolds equation to describe shear driven gas flow in textured parallel slider bearings is justified for the range of parameters considered.Copyright
Boundary-Layer Meteorology | 2013
Brian N. Bailey; Rob Stoll
Agricultural and Forest Meteorology | 2016
Brian N. Bailey; Rob Stoll; Eric R. Pardyjak; Nathan E. Miller
Atmospheric Environment | 2014
Brian N. Bailey; Rob Stoll; Eric R. Pardyjak; Walter F. Mahaffee
Agricultural and Forest Meteorology | 2014
Brian N. Bailey; Matthew Overby; Peter Willemsen; Eric R. Pardyjak; Walter F. Mahaffee; Rob Stoll
Tribology International | 2014
Mingfeng Qiu; Brian N. Bailey; Rob Stoll; Bart Raeymaekers
Remote Sensing of Environment | 2017
Brian N. Bailey; Walter F. Mahaffee
Journal of Fluid Mechanics | 2016
Brian N. Bailey; Rob Stoll