Parameterizing deep convection using the assumed probability density function method

Due to their coarse horizontal resolution, present-day climate models must parameterize deep convection. This paper presents single-column simulations of deep convection using a probability density function (PDF) parameterization. The PDF parameterization predicts the PDF of subgrid variability of t...

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Main Authors: R. L. Storer, B. M. Griffin, J. Höft, J. K. Weber, E. Raut, V. E. Larson, M. Wang, P. J. Rasch
Format: Article
Language:English
Published: Copernicus Publications 2015-01-01
Series:Geoscientific Model Development
Online Access:http://www.geosci-model-dev.net/8/1/2015/gmd-8-1-2015.pdf
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spelling doaj-fb517b4ffdf14f0d92ea2d14aaeaaa1b2020-11-24T23:35:35ZengCopernicus PublicationsGeoscientific Model Development1991-959X1991-96032015-01-018111910.5194/gmd-8-1-2015Parameterizing deep convection using the assumed probability density function methodR. L. Storer0B. M. Griffin1J. Höft2J. K. Weber3E. Raut4V. E. Larson5M. Wang6P. J. Rasch7University of Wisconsin &ndash; Milwaukee, Department of Mathematical Sciences, Milwaukee, WI, USAUniversity of Wisconsin &ndash; Milwaukee, Department of Mathematical Sciences, Milwaukee, WI, USAUniversity of Wisconsin &ndash; Milwaukee, Department of Mathematical Sciences, Milwaukee, WI, USAUniversity of Wisconsin &ndash; Milwaukee, Department of Mathematical Sciences, Milwaukee, WI, USAUniversity of Wisconsin &ndash; Milwaukee, Department of Mathematical Sciences, Milwaukee, WI, USAUniversity of Wisconsin &ndash; Milwaukee, Department of Mathematical Sciences, Milwaukee, WI, USAPacific Northwest National Laboratory, Richland, WA, USAPacific Northwest National Laboratory, Richland, WA, USADue to their coarse horizontal resolution, present-day climate models must parameterize deep convection. This paper presents single-column simulations of deep convection using a probability density function (PDF) parameterization. The PDF parameterization predicts the PDF of subgrid variability of turbulence, clouds, and hydrometeors. That variability is interfaced to a prognostic microphysics scheme using a Monte Carlo sampling method. <br><br> The PDF parameterization is used to simulate tropical deep convection, the transition from shallow to deep convection over land, and midlatitude deep convection. These parameterized single-column simulations are compared with 3-D reference simulations. The agreement is satisfactory except when the convective forcing is weak. <br><br> The same PDF parameterization is also used to simulate shallow cumulus and stratocumulus layers. The PDF method is sufficiently general to adequately simulate these five deep, shallow, and stratiform cloud cases with a single equation set. This raises hopes that it may be possible in the future, with further refinements at coarse time step and grid spacing, to parameterize all cloud types in a large-scale model in a unified way.http://www.geosci-model-dev.net/8/1/2015/gmd-8-1-2015.pdf
collection DOAJ
language English
format Article
sources DOAJ
author R. L. Storer
B. M. Griffin
J. Höft
J. K. Weber
E. Raut
V. E. Larson
M. Wang
P. J. Rasch
spellingShingle R. L. Storer
B. M. Griffin
J. Höft
J. K. Weber
E. Raut
V. E. Larson
M. Wang
P. J. Rasch
Parameterizing deep convection using the assumed probability density function method
Geoscientific Model Development
author_facet R. L. Storer
B. M. Griffin
J. Höft
J. K. Weber
E. Raut
V. E. Larson
M. Wang
P. J. Rasch
author_sort R. L. Storer
title Parameterizing deep convection using the assumed probability density function method
title_short Parameterizing deep convection using the assumed probability density function method
title_full Parameterizing deep convection using the assumed probability density function method
title_fullStr Parameterizing deep convection using the assumed probability density function method
title_full_unstemmed Parameterizing deep convection using the assumed probability density function method
title_sort parameterizing deep convection using the assumed probability density function method
publisher Copernicus Publications
series Geoscientific Model Development
issn 1991-959X
1991-9603
publishDate 2015-01-01
description Due to their coarse horizontal resolution, present-day climate models must parameterize deep convection. This paper presents single-column simulations of deep convection using a probability density function (PDF) parameterization. The PDF parameterization predicts the PDF of subgrid variability of turbulence, clouds, and hydrometeors. That variability is interfaced to a prognostic microphysics scheme using a Monte Carlo sampling method. <br><br> The PDF parameterization is used to simulate tropical deep convection, the transition from shallow to deep convection over land, and midlatitude deep convection. These parameterized single-column simulations are compared with 3-D reference simulations. The agreement is satisfactory except when the convective forcing is weak. <br><br> The same PDF parameterization is also used to simulate shallow cumulus and stratocumulus layers. The PDF method is sufficiently general to adequately simulate these five deep, shallow, and stratiform cloud cases with a single equation set. This raises hopes that it may be possible in the future, with further refinements at coarse time step and grid spacing, to parameterize all cloud types in a large-scale model in a unified way.
url http://www.geosci-model-dev.net/8/1/2015/gmd-8-1-2015.pdf
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