Satellite passive microwave sea-ice concentration data set intercomparison using Landsat data
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Published:2022-01-26
Issue:1
Volume:16
Page:349-378
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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:
Kern StefanORCID, Lavergne ThomasORCID, Pedersen Leif ToudalORCID, Tonboe Rasmus Tage, Bell Louisa, Meyer Maybritt, Zeigermann Luise
Abstract
Abstract. We report on results of an intercomparison of 10 global sea-ice
concentration (SIC) data products at 12.5 to 50.0 km grid resolution from
satellite passive microwave (PMW) observations. For this we use SIC
estimated from >350 images acquired in the visible–near-infrared frequency range by the joint National Aeronautics and Space
Administration (NASA) and United States Geological Survey (USGS) Landsat sensor
during the years 2003–2011 and 2013–2015. Conditions covered are late winter/early spring in the Northern Hemisphere and from late winter through fall
freeze-up in the Southern Hemisphere. Among the products investigated are
the four products of the European Organisation for the Exploitation of
Meteorological Satellites (EUMETSAT) Ocean and Sea Ice Satellite Application
Facility (OSI SAF) and European Space Agency (ESA) Climate Change Initiative
(CCI) algorithms SICCI-2 and OSI-450. We stress the importance to consider
intercomparison results across the entire SIC range instead of focusing on
overall mean differences and to take into account known biases in PMW SIC
products, e.g., for thin ice. We find superior linear agreement between PMW
SIC and Landsat SIC for the 25 and the 50 km SICCI-2 products in both
hemispheres. We discuss quantitatively various uncertainty sources of the
evaluation carried out. First, depending on the number of mixed ocean–ice
Landsat pixels classified erroneously as ice only, our Landsat SIC is found
to be biased high. This applies to some of our Southern Hemisphere data,
promotes an overly large fraction of Landsat SIC underestimation by PMW SIC
products, and renders PMW SIC products overestimating Landsat SIC
particularly problematic. Secondly, our main results are based on SIC data
truncated to the range 0 % to 100 %. We demonstrate using
non-truncated SIC values, where possible, can considerably improve linear
agreement between PMW and Landsat SIC. Thirdly, we investigate the impact of
filters often used to clean up the final products from spurious SIC over
open water due to weather effects and along coastlines due to land
spillover. Benefiting from the possibility to switch on or off certain
filters in the SICCI-2 and OSI-450 products, we quantify the impact land
spillover filtering can have on evaluation results as shown in this paper.
Funder
European Organization for the Exploitation of Meteorological Satellites European Space Agency
Publisher
Copernicus GmbH
Subject
Earth-Surface Processes,Water Science and Technology
Reference100 articles.
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