Analysis of diagnostic climate model cloud parameterisations using large-eddy simulations

Current climate models often predict fractional cloud cover on the basis of a diagnostic probability density function (PDF) describing the subgrid-scale variability of the total water specific humidity, qt, favouring schemes with limited complexity. Standard shapes are uniform or triangular PDFs the...

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Main Authors: Rosch, Jan, Heus, Thijs, Salzmann, Marc, Mülmenstädt, Johannes, Schlemmer, Linda, Quaas, Johannes
Other Authors: Universität Leipzig, Institut für Meterologie
Format: Article
Language:English
Published: Universitätsbibliothek Leipzig 2016
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Online Access:http://nbn-resolving.de/urn:nbn:de:bsz:15-qucosa-202452
http://nbn-resolving.de/urn:nbn:de:bsz:15-qucosa-202452
http://www.qucosa.de/fileadmin/data/qucosa/documents/20245/rosch_preprint_qjrms_2015.pdf
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spelling ndltd-DRESDEN-oai-qucosa.de-bsz-15-qucosa-2024522016-05-21T03:30:51Z Analysis of diagnostic climate model cloud parameterisations using large-eddy simulations Rosch, Jan Heus, Thijs Salzmann, Marc Mülmenstädt, Johannes Schlemmer, Linda Quaas, Johannes Wolkenparametrierung Klimamodellierung Large-Eddy Simulationen Wahrscheinlichkeitsdichtefunktion cloud parameterisation climate modelling large-eddy simulations total water specific humidity probability density function ddc:551 Current climate models often predict fractional cloud cover on the basis of a diagnostic probability density function (PDF) describing the subgrid-scale variability of the total water specific humidity, qt, favouring schemes with limited complexity. Standard shapes are uniform or triangular PDFs the width of which is assumed to scale with the gridbox mean qt or the grid-box mean saturation specific humidity, qs. In this study, the qt variability is analysed from large-eddy simulations for two stratocumulus, two shallow cumulus, and one deep convective cases. We find that in most cases, triangles are a better approximation to the simulated PDFs than uniform distributions. In two of the 24 slices examined, the actual distributions were so strongly skewed that the simple symmetric shapes could not capture the PDF at all. The distribution width for either shape scales acceptably well with both the mean value of qt and qs, the former being a slightly better choice. The qt variance is underestimated by the fitted PDFs, but overestimated by the existing parameterisations. While the cloud fraction is in general relatively well diagnosed from fitted or parameterised uniform or triangular PDFs, it fails to capture cases with small partial cloudiness, and in 10 – 30% of the cases misdiagnoses clouds in clear skies or vice-versa. The results suggest choosing a parameterisation with a triangular shape, where the distribution width would scale with the grid-box mean qt using a scaling factor of 0.076. This, however, is subject to the caveat that the reference simulations examined here were partly for rather small domains and driven by idealised boundary conditions. Universitätsbibliothek Leipzig Universität Leipzig, Institut für Meterologie Cleveland State University, Department of Physics Max-Planck-Institut für Meteorologie, Universität Leipzig, Institut für Meterologie 2016-04-28 doc-type:article application/pdf http://nbn-resolving.de/urn:nbn:de:bsz:15-qucosa-202452 urn:nbn:de:bsz:15-qucosa-202452 issn:0035-9009 http://www.qucosa.de/fileadmin/data/qucosa/documents/20245/rosch_preprint_qjrms_2015.pdf Journal of the Royal Meteorological Society (2015), 141, 691, Part B, S. 2199–2205 eng
collection NDLTD
language English
format Article
sources NDLTD
topic Wolkenparametrierung
Klimamodellierung
Large-Eddy Simulationen
Wahrscheinlichkeitsdichtefunktion
cloud parameterisation
climate modelling
large-eddy simulations
total water specific humidity
probability density function
ddc:551
spellingShingle Wolkenparametrierung
Klimamodellierung
Large-Eddy Simulationen
Wahrscheinlichkeitsdichtefunktion
cloud parameterisation
climate modelling
large-eddy simulations
total water specific humidity
probability density function
ddc:551
Rosch, Jan
Heus, Thijs
Salzmann, Marc
Mülmenstädt, Johannes
Schlemmer, Linda
Quaas, Johannes
Analysis of diagnostic climate model cloud parameterisations using large-eddy simulations
description Current climate models often predict fractional cloud cover on the basis of a diagnostic probability density function (PDF) describing the subgrid-scale variability of the total water specific humidity, qt, favouring schemes with limited complexity. Standard shapes are uniform or triangular PDFs the width of which is assumed to scale with the gridbox mean qt or the grid-box mean saturation specific humidity, qs. In this study, the qt variability is analysed from large-eddy simulations for two stratocumulus, two shallow cumulus, and one deep convective cases. We find that in most cases, triangles are a better approximation to the simulated PDFs than uniform distributions. In two of the 24 slices examined, the actual distributions were so strongly skewed that the simple symmetric shapes could not capture the PDF at all. The distribution width for either shape scales acceptably well with both the mean value of qt and qs, the former being a slightly better choice. The qt variance is underestimated by the fitted PDFs, but overestimated by the existing parameterisations. While the cloud fraction is in general relatively well diagnosed from fitted or parameterised uniform or triangular PDFs, it fails to capture cases with small partial cloudiness, and in 10 – 30% of the cases misdiagnoses clouds in clear skies or vice-versa. The results suggest choosing a parameterisation with a triangular shape, where the distribution width would scale with the grid-box mean qt using a scaling factor of 0.076. This, however, is subject to the caveat that the reference simulations examined here were partly for rather small domains and driven by idealised boundary conditions.
author2 Universität Leipzig, Institut für Meterologie
author_facet Universität Leipzig, Institut für Meterologie
Rosch, Jan
Heus, Thijs
Salzmann, Marc
Mülmenstädt, Johannes
Schlemmer, Linda
Quaas, Johannes
author Rosch, Jan
Heus, Thijs
Salzmann, Marc
Mülmenstädt, Johannes
Schlemmer, Linda
Quaas, Johannes
author_sort Rosch, Jan
title Analysis of diagnostic climate model cloud parameterisations using large-eddy simulations
title_short Analysis of diagnostic climate model cloud parameterisations using large-eddy simulations
title_full Analysis of diagnostic climate model cloud parameterisations using large-eddy simulations
title_fullStr Analysis of diagnostic climate model cloud parameterisations using large-eddy simulations
title_full_unstemmed Analysis of diagnostic climate model cloud parameterisations using large-eddy simulations
title_sort analysis of diagnostic climate model cloud parameterisations using large-eddy simulations
publisher Universitätsbibliothek Leipzig
publishDate 2016
url http://nbn-resolving.de/urn:nbn:de:bsz:15-qucosa-202452
http://nbn-resolving.de/urn:nbn:de:bsz:15-qucosa-202452
http://www.qucosa.de/fileadmin/data/qucosa/documents/20245/rosch_preprint_qjrms_2015.pdf
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