Arctic Mission Benefit Analysis: impact of sea ice thickness, freeboard, and snow depth products on sea ice forecast performance
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Frank Kauker | Thomas Kaminski | Michael Karcher | Hajo Eicken | Robert Ricker | Michael Voßbeck | Stefan Hendricks | Helmuth Haak | Laura Niederdrenk | Ola Gråbak | S. Hendricks | M. Voßbeck | T. Kaminski | M. Karcher | F. Kauker | H. Haak | R. Ricker | H. Eicken | L. Niederdrenk | O. Gråbak | L. Toudal Pedersen | Leif Toudal Pedersen
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