An anatomy of Arctic sea ice forecast biases in the seasonal prediction system with EC-Earth

The quality of initial conditions (ICs) in climate predictions controls the level of skill. Both the use of the latest high-quality observations and of the most efficient assimilation method are of paramount importance. Technical challenges make it frequent to assimilate observational information in...

Full description

Bibliographic Details
Published in:Climate Dynamics
Main Authors: Cruz-García, Rubén, Ortega, Pablo, Guemas, Virginie, Acosta Navarro, Juan C., Massonnet, François, Doblas-Reyes, Francisco J.
Other Authors: UCL - SST/ELI/ELIC - Earth & Climate
Format: Article in Journal/Newspaper
Language:English
Published: Springer Science and Business Media LLC 2021
Subjects:
Online Access:http://hdl.handle.net/2078.1/253322
https://doi.org/10.1007/s00382-020-05560-4
id ftunistlouisbrus:oai:dial.uclouvain.be:boreal:253322
record_format openpolar
spelling ftunistlouisbrus:oai:dial.uclouvain.be:boreal:253322 2024-05-12T07:59:45+00:00 An anatomy of Arctic sea ice forecast biases in the seasonal prediction system with EC-Earth Cruz-García, Rubén Ortega, Pablo Guemas, Virginie Acosta Navarro, Juan C. Massonnet, François Doblas-Reyes, Francisco J. UCL - SST/ELI/ELIC - Earth & Climate 2021 http://hdl.handle.net/2078.1/253322 https://doi.org/10.1007/s00382-020-05560-4 eng eng Springer Science and Business Media LLC boreal:253322 http://hdl.handle.net/2078.1/253322 doi:10.1007/s00382-020-05560-4 urn:ISSN:0930-7575 urn:EISSN:1432-0894 info:eu-repo/semantics/openAccess Climate Dynamics, Vol. 56, no.5-6, p. 1799-1813 (2021) Atmospheric Science info:eu-repo/semantics/article 2021 ftunistlouisbrus https://doi.org/10.1007/s00382-020-05560-4 2024-04-18T17:15:15Z The quality of initial conditions (ICs) in climate predictions controls the level of skill. Both the use of the latest high-quality observations and of the most efficient assimilation method are of paramount importance. Technical challenges make it frequent to assimilate observational information independently in the various model components. Inconsistencies between the ICs obtained for the different model components can cause initialization shocks. In this study, we identify and quantify the contribution of the ICs inconsistency relative to the model inherent bias (in which the Arctic is generally too warm) to the development of sea ice concentration forecast biases in a seasonal prediction system with the EC-Earth general circulation model. We estimate that the ICs inconsistency dominates the development of forecast biases for as long as the first 24 (19) days of the forecasts initialized in May (November), while the development of model inherent bias dominates afterwards. The effect of ICs inconsistency is stronger in the Greenland Sea, in particular in November, and mostly associated to a mismatch between the sea ice and ocean ICs. In both May and November, the ICs inconsistency between the ocean and sea ice leads to sea ice melting, but it happens in November (May) in a context of sea ice expansion (shrinking). The ICs inconsistency tend to postpone (accelerate) the November (May) sea ice freezing (melting). Our findings suggest that the ICs inconsistency might have a larger impact than previously suspected. Detecting and filtering out this signal requires the use of high frequency data. Article in Journal/Newspaper Arctic Greenland Greenland Sea Sea ice DIAL@USL-B (Université Saint-Louis, Bruxelles) Arctic Greenland Climate Dynamics 56 5-6 1799 1813
institution Open Polar
collection DIAL@USL-B (Université Saint-Louis, Bruxelles)
op_collection_id ftunistlouisbrus
language English
topic Atmospheric Science
spellingShingle Atmospheric Science
Cruz-García, Rubén
Ortega, Pablo
Guemas, Virginie
Acosta Navarro, Juan C.
Massonnet, François
Doblas-Reyes, Francisco J.
An anatomy of Arctic sea ice forecast biases in the seasonal prediction system with EC-Earth
topic_facet Atmospheric Science
description The quality of initial conditions (ICs) in climate predictions controls the level of skill. Both the use of the latest high-quality observations and of the most efficient assimilation method are of paramount importance. Technical challenges make it frequent to assimilate observational information independently in the various model components. Inconsistencies between the ICs obtained for the different model components can cause initialization shocks. In this study, we identify and quantify the contribution of the ICs inconsistency relative to the model inherent bias (in which the Arctic is generally too warm) to the development of sea ice concentration forecast biases in a seasonal prediction system with the EC-Earth general circulation model. We estimate that the ICs inconsistency dominates the development of forecast biases for as long as the first 24 (19) days of the forecasts initialized in May (November), while the development of model inherent bias dominates afterwards. The effect of ICs inconsistency is stronger in the Greenland Sea, in particular in November, and mostly associated to a mismatch between the sea ice and ocean ICs. In both May and November, the ICs inconsistency between the ocean and sea ice leads to sea ice melting, but it happens in November (May) in a context of sea ice expansion (shrinking). The ICs inconsistency tend to postpone (accelerate) the November (May) sea ice freezing (melting). Our findings suggest that the ICs inconsistency might have a larger impact than previously suspected. Detecting and filtering out this signal requires the use of high frequency data.
author2 UCL - SST/ELI/ELIC - Earth & Climate
format Article in Journal/Newspaper
author Cruz-García, Rubén
Ortega, Pablo
Guemas, Virginie
Acosta Navarro, Juan C.
Massonnet, François
Doblas-Reyes, Francisco J.
author_facet Cruz-García, Rubén
Ortega, Pablo
Guemas, Virginie
Acosta Navarro, Juan C.
Massonnet, François
Doblas-Reyes, Francisco J.
author_sort Cruz-García, Rubén
title An anatomy of Arctic sea ice forecast biases in the seasonal prediction system with EC-Earth
title_short An anatomy of Arctic sea ice forecast biases in the seasonal prediction system with EC-Earth
title_full An anatomy of Arctic sea ice forecast biases in the seasonal prediction system with EC-Earth
title_fullStr An anatomy of Arctic sea ice forecast biases in the seasonal prediction system with EC-Earth
title_full_unstemmed An anatomy of Arctic sea ice forecast biases in the seasonal prediction system with EC-Earth
title_sort anatomy of arctic sea ice forecast biases in the seasonal prediction system with ec-earth
publisher Springer Science and Business Media LLC
publishDate 2021
url http://hdl.handle.net/2078.1/253322
https://doi.org/10.1007/s00382-020-05560-4
geographic Arctic
Greenland
geographic_facet Arctic
Greenland
genre Arctic
Greenland
Greenland Sea
Sea ice
genre_facet Arctic
Greenland
Greenland Sea
Sea ice
op_source Climate Dynamics, Vol. 56, no.5-6, p. 1799-1813 (2021)
op_relation boreal:253322
http://hdl.handle.net/2078.1/253322
doi:10.1007/s00382-020-05560-4
urn:ISSN:0930-7575
urn:EISSN:1432-0894
op_rights info:eu-repo/semantics/openAccess
op_doi https://doi.org/10.1007/s00382-020-05560-4
container_title Climate Dynamics
container_volume 56
container_issue 5-6
container_start_page 1799
op_container_end_page 1813
_version_ 1798841356329680896