Understanding the model representation of clouds based on visible and infrared satellite observations

<p>There is a rising interest in improving the representation of clouds in numerical weather prediction models. This will directly lead to improved radiation forecasts and, thus, to better predictions of the increasingly important production of photovoltaic power. Moreover, a more accurate rep...

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Main Authors: S. Geiss, L. Scheck, A. de Lozar, M. Weissmann
Format: Article
Language:English
Published: Copernicus Publications 2021-08-01
Series:Atmospheric Chemistry and Physics
Online Access:https://acp.copernicus.org/articles/21/12273/2021/acp-21-12273-2021.pdf
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spelling doaj-c544701bafa0491fbc768b319764dbf02021-08-17T03:41:59ZengCopernicus PublicationsAtmospheric Chemistry and Physics1680-73161680-73242021-08-0121122731229010.5194/acp-21-12273-2021Understanding the model representation of clouds based on visible and infrared satellite observationsS. Geiss0L. Scheck1L. Scheck2A. de Lozar3M. Weissmann4Hans Ertel Centre for Weather Research, Ludwig-Maximilians-Universität, Munich, GermanyHans Ertel Centre for Weather Research, Ludwig-Maximilians-Universität, Munich, GermanyDeutscher Wetterdienst, Offenbach, GermanyDeutscher Wetterdienst, Offenbach, GermanyInstitut für Meteorologie und Geophysik, Universität Wien, Vienna, Austria<p>There is a rising interest in improving the representation of clouds in numerical weather prediction models. This will directly lead to improved radiation forecasts and, thus, to better predictions of the increasingly important production of photovoltaic power. Moreover, a more accurate representation of clouds is crucial for assimilating cloud-affected observations, in particular high-resolution observations from instruments on geostationary satellites. These observations can also be used to diagnose systematic errors in the model clouds, which are influenced by multiple parameterisations with many, often not well-constrained, parameters. In this study, the benefits of using both visible and infrared satellite channels for this purpose are demonstrated. We focus on visible and infrared Meteosat SEVIRI (Spinning Enhanced Visible InfraRed Imager) images and their model equivalents computed from the output of the ICON-D2 (ICOsahedral Non-hydrostatic, development version based on version 2.6.1; <span class="cit" id="xref_altparen.1"><a href="#bib1.bibx57">Zängl et al.</a>, <a href="#bib1.bibx57">2015</a></span>) convection-permitting, limited area numerical weather prediction model using efficient forward operators. We analyse systematic deviations between observed and synthetic satellite images derived from semi-free hindcast simulations for a 30 d summer period with strong convection. Both visible and infrared satellite observations reveal significant deviations between the observations and model equivalents. The combination of infrared brightness temperature and visible reflectance facilitates the attribution of individual deviations to specific model shortcomings. Furthermore, we investigate the sensitivity of model-derived visible and infrared observation equivalents to modified model and visible forward operator settings to identify dominant error sources. Estimates of the uncertainty of the visible forward operator turned out to be sufficiently low; thus, it can be used to assess the impact of model modifications. Results obtained for various changes in the model settings reveal that model assumptions on subgrid-scale water clouds are the primary source of systematic deviations in the visible satellite images. Visible observations are, therefore, well-suited to constrain subgrid cloud settings. In contrast, infrared channels are much less sensitive to the subgrid clouds, but they can provide information on errors in the cloud-top height.</p>https://acp.copernicus.org/articles/21/12273/2021/acp-21-12273-2021.pdf
collection DOAJ
language English
format Article
sources DOAJ
author S. Geiss
L. Scheck
L. Scheck
A. de Lozar
M. Weissmann
spellingShingle S. Geiss
L. Scheck
L. Scheck
A. de Lozar
M. Weissmann
Understanding the model representation of clouds based on visible and infrared satellite observations
Atmospheric Chemistry and Physics
author_facet S. Geiss
L. Scheck
L. Scheck
A. de Lozar
M. Weissmann
author_sort S. Geiss
title Understanding the model representation of clouds based on visible and infrared satellite observations
title_short Understanding the model representation of clouds based on visible and infrared satellite observations
title_full Understanding the model representation of clouds based on visible and infrared satellite observations
title_fullStr Understanding the model representation of clouds based on visible and infrared satellite observations
title_full_unstemmed Understanding the model representation of clouds based on visible and infrared satellite observations
title_sort understanding the model representation of clouds based on visible and infrared satellite observations
publisher Copernicus Publications
series Atmospheric Chemistry and Physics
issn 1680-7316
1680-7324
publishDate 2021-08-01
description <p>There is a rising interest in improving the representation of clouds in numerical weather prediction models. This will directly lead to improved radiation forecasts and, thus, to better predictions of the increasingly important production of photovoltaic power. Moreover, a more accurate representation of clouds is crucial for assimilating cloud-affected observations, in particular high-resolution observations from instruments on geostationary satellites. These observations can also be used to diagnose systematic errors in the model clouds, which are influenced by multiple parameterisations with many, often not well-constrained, parameters. In this study, the benefits of using both visible and infrared satellite channels for this purpose are demonstrated. We focus on visible and infrared Meteosat SEVIRI (Spinning Enhanced Visible InfraRed Imager) images and their model equivalents computed from the output of the ICON-D2 (ICOsahedral Non-hydrostatic, development version based on version 2.6.1; <span class="cit" id="xref_altparen.1"><a href="#bib1.bibx57">Zängl et al.</a>, <a href="#bib1.bibx57">2015</a></span>) convection-permitting, limited area numerical weather prediction model using efficient forward operators. We analyse systematic deviations between observed and synthetic satellite images derived from semi-free hindcast simulations for a 30 d summer period with strong convection. Both visible and infrared satellite observations reveal significant deviations between the observations and model equivalents. The combination of infrared brightness temperature and visible reflectance facilitates the attribution of individual deviations to specific model shortcomings. Furthermore, we investigate the sensitivity of model-derived visible and infrared observation equivalents to modified model and visible forward operator settings to identify dominant error sources. Estimates of the uncertainty of the visible forward operator turned out to be sufficiently low; thus, it can be used to assess the impact of model modifications. Results obtained for various changes in the model settings reveal that model assumptions on subgrid-scale water clouds are the primary source of systematic deviations in the visible satellite images. Visible observations are, therefore, well-suited to constrain subgrid cloud settings. In contrast, infrared channels are much less sensitive to the subgrid clouds, but they can provide information on errors in the cloud-top height.</p>
url https://acp.copernicus.org/articles/21/12273/2021/acp-21-12273-2021.pdf
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