Seasonal Arctic sea ice forecasting with probabilistic deep learning.

Journal: Nature Communications
Published:
Abstract

Anthropogenic warming has led to an unprecedented year-round reduction in Arctic sea ice extent. This has far-reaching consequences for indigenous and local communities, polar ecosystems, and global climate, motivating the need for accurate seasonal sea ice forecasts. While physics-based dynamical models can successfully forecast sea ice concentration several weeks ahead, they struggle to outperform simple statistical benchmarks at longer lead times. We present a probabilistic, deep learning sea ice forecasting system, IceNet. The system has been trained on climate simulations and observational data to forecast the next 6 months of monthly-averaged sea ice concentration maps. We show that IceNet advances the range of accurate sea ice forecasts, outperforming a state-of-the-art dynamical model in seasonal forecasts of summer sea ice, particularly for extreme sea ice events. This step-change in sea ice forecasting ability brings us closer to conservation tools that mitigate risks associated with rapid sea ice loss.

Authors
Tom Andersson, J Hosking, María Pérez Ortiz, Brooks Paige, Andrew Elliott, Chris Russell, Stephen Law, Daniel Jones, Jeremy Wilkinson, Tony Phillips, James Byrne, Steffen Tietsche, Beena Sarojini, Eduardo Blanchard Wrigglesworth, Yevgeny Aksenov, Rod Downie, Emily Shuckburgh