Correction of CCI cloud data over the Swiss Alps using ground-based radiation measurements
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Published:2018-07-17
Issue:7
Volume:11
Page:4153-4170
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ISSN:1867-8548
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Container-title:Atmospheric Measurement Techniques
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language:en
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Short-container-title:Atmos. Meas. Tech.
Author:
Jeanneret Fanny,Martucci Giovanni,Pinnock Simon,Berne Alexis
Abstract
Abstract. The validation of long-term cloud data sets retrieved from
satellites is challenging due to their worldwide coverage going back as far
as the 1980s. A trustworthy reference cannot be found easily at every
location and every time. Mountainous regions present a particular problem
since ground-based measurements are sparse. Moreover, as retrievals from
passive satellite radiometers are difficult in winter due to the presence of
snow on the ground, it is particularly important to develop new ways to
evaluate and to correct satellite data sets over elevated areas. In winter for ground levels above 1000 m (a.s.l.) in Switzerland, the cloud
occurrence of the newly released cloud property data sets of the ESA Climate
Change Initiative Cloud_cci Project (Advanced Very High Resolution Radiometer afternoon
series (AVHRR-PM) and Moderate-Resolution Imaging Spectroradiometer (MODIS) Aqua series) is
132 to 217 % that of surface synoptic (SYNOP)
observations, corresponding to a rate of false cloud detections between 24 and 54 %. Furthermore, the overestimations
increase with the altitude of the sites and are associated with particular
retrieved cloud properties. In this study, a novel post-processing approach is proposed to reduce the
amount of false cloud detections in the satellite data sets. A combination of
ground-based downwelling longwave and shortwave radiation and temperature
measurements is used to provide independent validation of the cloud cover
over 41 locations in Switzerland. An agreement of 85 % is obtained when the
cloud cover is compared to surface synoptic observations (90 % within ± 1 okta difference). The validation data are then co-located with the satellite
observations, and a decision tree model is trained to automatically detect the
overestimations in the satellite cloud masks. Cross-validated results show
that 62±13 % of these overestimations can be identified by the model,
reducing the systematic error in the satellite data sets from 14.4±15.5 % to 4.3±2.8 %. The amount of errors is lower, and, importantly, their
distribution is more homogeneous as well. These corrections happen at the
cost of a global increase of 7±2 % of missed clouds. Using this model,
it is possible to significantly improve the cloud detection reliability in
elevated areas in the Cloud_cci AVHRR-PM and MODIS-Aqua products.
Publisher
Copernicus GmbH
Subject
Atmospheric Science
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