Should Sea-Ice Modeling Tools Designed for Climate Research Be Used for Short-Term Forecasting?
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Steffen Tietsche | Jean-François Lemieux | Thierry Fichefet | Richard Allard | Martin Vancoppenolle | Elizabeth Hunke | Philippe Blain | Ed Blockley | Daniel Feltham | Gilles Garric | Robert Grumbine | Till Rasmussen | Mads Ribergaard | Andrew Roberts | Axel Schweiger | Bruno Tremblay | Jinlun Zhang | T. Fichefet | Jinlun Zhang | R. Grumbine | R. Allard | S. Tietsche | E. Hunke | J. Lemieux | D. Feltham | M. Vancoppenolle | G. Garric | E. Blockley | B. Tremblay | A. Schweiger | M. Ribergaard | A. Roberts | T. Rasmussen | P. Blain
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