2024
DOI: 10.5194/tc-18-2161-2024
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Improving short-term sea ice concentration forecasts using deep learning

Cyril Palerme,
Thomas Lavergne,
Jozef Rusin
et al.

Abstract: Abstract. Reliable short-term sea ice forecasts are needed to support maritime operations in polar regions. While sea ice forecasts produced by physically based models still have limited accuracy, statistical post-processing techniques can be applied to reduce forecast errors. In this study, post-processing methods based on supervised machine learning have been developed for improving the skill of sea ice concentration forecasts from the TOPAZ4 prediction system for lead times from 1 to 10 d. The deep learning… Show more

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