Predictors and prediction skill for marine cold‐air outbreaks over the Barents Sea

Details

Ressource 1Download: Quart J Royal Meteoro Soc - 2021 - Polkova - Predictors and prediction skill for marine cold‐air outbreaks over the Barents.pdf (14787.13 [Ko])
State: Public
Version: Final published version
License: CC BY-NC-ND 4.0
Serval ID
serval:BIB_F02E007EE369
Type
Article: article from journal or magazin.
Collection
Publications
Title
Predictors and prediction skill for marine cold‐air outbreaks over the Barents Sea
Journal
Quarterly Journal of the Royal Meteorological Society
Author(s)
Polkova Iuliia, Afargan-Gerstman Hilla, Domeisen Daniela I. V., King Martin P., Ruggieri Paolo, Athanasiadis Panos, Dobrynin Mikhail, Aarnes Øivin, Kretschmer Marlene, Baehr Johanna
ISSN
0035-9009
1477-870X
Publication state
Published
Issued date
07/2021
Peer-reviewed
Oui
Volume
147
Number
738
Pages
2638-2656
Language
english
Abstract
Marine cold-air outbreaks (MCAOs) create conditions for hazardous maritime mesocyclones (polar lows) posing risks to marine infrastructure. For marine management, skilful predictions of MCAOs would be highly beneficial. For this reason, we investigate (a) the ability of a seasonal prediction system to predict MCAOs and (b) the possibilities to improve predictions through large-scale causal drivers. Our results show that the seasonal ensemble predictions have high prediction skill for MCAOs over the Nordic Seas for about 20 days starting from November initial conditions. To study causal drivers of MCAOs, we utilize a causal effect network approach applied to the atmospheric reanalysis ERA-Interim and identify local sea surface temperature and atmospheric circulation patterns over Scandinavia as valuable predictors. Prediction skill for MCAOs is further improved up to 40 days by including MCAO predictors in the analysis.
Keywords
Arctic climate, causal drivers, marine cold air outbreak, polar low, seasonal prediction
Web of science
Create date
10/10/2022 8:36
Last modification date
09/07/2024 16:24
Usage data