Model Biases in Simulating Extreme Sea Ice Loss Associated With the Record January 2022 Arctic Cyclone

Author:

Blanchard‐Wrigglesworth Edward1ORCID,Brenner Samuel2ORCID,Webster Melinda3ORCID,Horvat Chris2ORCID,Foss Øyvind4,Bitz Cecilia M.1ORCID

Affiliation:

1. Department of Atmospheric Sciences University of Washington Seattle WA USA

2. Brown University Providence RI USA

3. Applied Physics Lab University of Washington Seattle WA USA

4. Norwegian Polar Institute Tromsø Norway

Abstract

AbstractIn January 2022, the strongest Arctic cyclone on record resulted in a record weekly loss in sea ice cover in the Barents‐Kara‐Laptev seas. While ECMWF operational forecasts skillfully predicted the cyclone, the loss in sea ice was poorly predicted. We explore the ocean's response to the cyclone using observations from an Argo float that was profiling in the region, and investigate model biases in simulating the observed sea ice loss in a fully coupled GCM. The observations showed changes over the whole ocean column in the Barents Sea after the passage of the storm, cooling and mixing with enough implied heat release to melt roughly 1 m of sea ice. We replicate the observed cyclone in the GCM by nudging the model's winds to observations above the boundary layer. In these simulations, the associated loss of sea ice is only about 10%–15% of the observed loss, and the ocean exhibits very small changes in response to the cyclone. With the use of a simple 1‐D ice‐ocean model, we find that the overly strong ocean stratification in the GCM may be a significant source of model bias in its simulated response to the cyclone. However, even initialized with observed stratification profiles, the 1‐D model also underestimated mixing and sea ice melt relative to the observations.

Funder

National Aeronautics and Space Administration

Jet Propulsion Laboratory

Office of Naval Research

Schmidt Futures

Colorado Humanities

China Medical Board

Computational and Information Systems Laboratory

National Science Foundation

Publisher

American Geophysical Union (AGU)

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