A new classification of satellite-derived liquid water cloud regimes at cloud scale
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Published:2020-02-28
Issue:4
Volume:20
Page:2407-2418
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ISSN:1680-7324
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Container-title:Atmospheric Chemistry and Physics
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language:en
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Short-container-title:Atmos. Chem. Phys.
Author:
Unglaub Claudia, Block KarolineORCID, Mülmenstädt JohannesORCID, Sourdeval OdranORCID, Quaas JohannesORCID
Abstract
Abstract. Clouds are highly variable in time and space, affecting climate sensitivity and
climate change. To study and distinguish the different influences of clouds on
the climate system, it is useful to separate clouds into individual cloud
regimes. In this work we present a new cloud classification for liquid water
clouds at cloud scale defined using cloud parameters retrieved from combined
satellite measurements from CloudSat and CALIPSO. The idea is that cloud
heterogeneity is a measure that allows us to distinguish cumuliform and
stratiform clouds, and cloud-base height is a measure to distinguish cloud
altitude. The approach makes use of a newly developed cloud-base height
retrieval. Using three cloud-base
height intervals and two intervals of cloud-top variability as an inhomogeneity parameter
provides six new liquid cloud classes. The results show a smooth transition
between marine and continental clouds as well as between stratiform and
cumuliform clouds in different latitudes at the high spatial resolution of
about 20 km. Analysing the micro- and macrophysical cloud
parameters from
collocated combined MODIS, CloudSat and CALIPSO retrievals shows distinct
characteristics for each cloud regime that are in agreement with expectation
and literature. This demonstrates the usefulness of the classification.
Funder
European Research Council
Publisher
Copernicus GmbH
Subject
Atmospheric Science
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