Combined SMAP–SMOS thin sea ice thickness retrieval
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Published:2019-02-28
Issue:2
Volume:13
Page:675-691
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ISSN:1994-0424
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Container-title:The Cryosphere
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language:en
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Short-container-title:The Cryosphere
Author:
Paţilea Cătălin, Heygster Georg, Huntemann Marcus, Spreen GunnarORCID
Abstract
Abstract. The spaceborne passive microwave sensors Soil Moisture Ocean Salinity (SMOS)
and Soil Moisture Active Passive (SMAP) provide brightness temperature data
in the L band (1.4 GHz). At this low frequency the atmosphere is close to
transparent and in polar regions the thickness of thin sea ice can be
derived. SMOS measurements cover a large incidence angle range, whereas SMAP
observes at a fixed 40∘ incidence angle. By using brightness
temperatures at a fixed incidence angle obtained directly (SMAP), or through
interpolation (SMOS), thin sea ice thickness retrieval is more consistent as
the incidence angle effects do not have to be taken into account. Here we
transfer a retrieval algorithm for the thickness of thin sea ice (up to 50 cm)
from SMOS data at 40 to 50∘ incidence angle to the fixed
incidence angle of SMAP. The SMOS brightness temperatures (TBs) at a given
incidence angle are estimated using empirical fit functions. SMAP TBs are
calibrated to SMOS to provide a merged SMOS–SMAP sea ice thickness
product. The new merged SMOS–SMAP thin ice thickness product was improved upon in
several ways compared to previous thin ice thickness retrievals. (i) The
combined product provides a better temporal and spatial coverage of the polar
regions due to the usage of two sensors. (ii) The radio frequency interference (RFI) filtering method was
improved, which results in higher data availability over both ocean and sea
ice areas. (iii) For the intercalibration between SMOS and SMAP brightness
temperatures the root mean square difference (RMSD) was reduced by 30 %
relative to a prior attempt. (iv) The algorithm presented here allows also
for separate retrieval from any of the two sensors, which makes the ice
thickness dataset more resistant against failure of one of the sensors. A new
way to estimate the uncertainty of ice thickness retrieval was implemented,
which is based on the brightness temperature sensitivities.
Publisher
Copernicus GmbH
Subject
Earth-Surface Processes,Water Science and Technology
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