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Fluctuating Arctic Sea ice thickness changes estimated by an in situ learned and empirically forced neural network model

January 1, 2008

Sea ice thickness (SIT) is a key parameter of scientific interest because understanding the natural spatiotemporal variability of ice thickness is critical for improving global climate models. In this paper, changes in Arctic SIT during 1982-2003 are examined using a neural network (NN) algorithm trained with in situ submarine ice draft and surface drilling data. For each month of the study period, the NN individually estimated SIT of each ice-covered pixel (25-km resolution) based on seven geophysical parameters (four shortwave and longwave radiative fluxes, surface air temperature, ice drift velocity, and ice divergence/convergence) that were cumulatively summed at each monthly position along the pixel's previous 3-yr drift track (or less if the ice was

Publication Year 2008
Title Fluctuating Arctic Sea ice thickness changes estimated by an in situ learned and empirically forced neural network model
DOI 10.1175/2007JCLI1787.1
Authors G. I. Belchansky, David C. Douglas, Nikita G. Platonov
Publication Type Article
Publication Subtype Journal Article
Series Title Journal of Climate
Index ID 70031764
Record Source USGS Publications Warehouse
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