Predicting Summer Arctic Sea Ice Concentration Intraseasonal Variability Using a Vector Autoregressive Model

Recent Arctic sea ice changes have important societal and economic impacts and may lead to adverse effects on the Arctic ecosystem, weather, and climate. Understanding the predictability of Arctic sea ice melting is thus an important task. A vector autoregressive (VAR) model is evaluated for predict...

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Main Authors: Wang, Lei, Yuan, Xiaojun, Ting, Mingfang, Li, Cuihua
Format: Article in Journal/Newspaper
Language:English
Published: 2016
Subjects:
Online Access:https://doi.org/10.7916/x3fz-3t05
id ftcolumbiauniv:oai:academiccommons.columbia.edu:10.7916/x3fz-3t05
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spelling ftcolumbiauniv:oai:academiccommons.columbia.edu:10.7916/x3fz-3t05 2023-05-15T14:36:56+02:00 Predicting Summer Arctic Sea Ice Concentration Intraseasonal Variability Using a Vector Autoregressive Model Wang, Lei Yuan, Xiaojun Ting, Mingfang Li, Cuihua 2016 https://doi.org/10.7916/x3fz-3t05 English eng https://doi.org/10.7916/x3fz-3t05 Sea ice Climatic changes Climatology Regression analysis Articles 2016 ftcolumbiauniv https://doi.org/10.7916/x3fz-3t05 2022-01-29T23:21:24Z Recent Arctic sea ice changes have important societal and economic impacts and may lead to adverse effects on the Arctic ecosystem, weather, and climate. Understanding the predictability of Arctic sea ice melting is thus an important task. A vector autoregressive (VAR) model is evaluated for predicting the summertime (May–September) daily Arctic sea ice concentration on the intraseasonal time scale, using only the daily sea ice data and without direct information of the atmosphere and ocean. The intraseasonal forecast skill of Arctic sea ice is assessed using the 1979–2012 satellite data. The cross-validated forecast skill of the VAR model is found to be superior to both the anomaly persistence and damped anomaly persistence at lead times of ~20–60 days, especially over northern Eurasian marginal seas and the Beaufort Sea. The daily forecast of ice concentration also leads to predictions of ice-free dates and September mean sea ice extent. In addition to capturing the general seasonal melt of sea ice, the model is also able to capture the interannual variability of the melting, from partial melt of the marginal sea ice in the beginning of the period to almost a complete melt in the later years. While the detailed mechanism leading to the high predictability of intraseasonal sea ice concentration needs to be further examined, the study reveals for the first time that Arctic sea ice can be predicted statistically with reasonable skill at the intraseasonal time scales given the small signal-to-noise ratio of daily data. Article in Journal/Newspaper Arctic Beaufort Sea Sea ice Columbia University: Academic Commons Arctic
institution Open Polar
collection Columbia University: Academic Commons
op_collection_id ftcolumbiauniv
language English
topic Sea ice
Climatic changes
Climatology
Regression analysis
spellingShingle Sea ice
Climatic changes
Climatology
Regression analysis
Wang, Lei
Yuan, Xiaojun
Ting, Mingfang
Li, Cuihua
Predicting Summer Arctic Sea Ice Concentration Intraseasonal Variability Using a Vector Autoregressive Model
topic_facet Sea ice
Climatic changes
Climatology
Regression analysis
description Recent Arctic sea ice changes have important societal and economic impacts and may lead to adverse effects on the Arctic ecosystem, weather, and climate. Understanding the predictability of Arctic sea ice melting is thus an important task. A vector autoregressive (VAR) model is evaluated for predicting the summertime (May–September) daily Arctic sea ice concentration on the intraseasonal time scale, using only the daily sea ice data and without direct information of the atmosphere and ocean. The intraseasonal forecast skill of Arctic sea ice is assessed using the 1979–2012 satellite data. The cross-validated forecast skill of the VAR model is found to be superior to both the anomaly persistence and damped anomaly persistence at lead times of ~20–60 days, especially over northern Eurasian marginal seas and the Beaufort Sea. The daily forecast of ice concentration also leads to predictions of ice-free dates and September mean sea ice extent. In addition to capturing the general seasonal melt of sea ice, the model is also able to capture the interannual variability of the melting, from partial melt of the marginal sea ice in the beginning of the period to almost a complete melt in the later years. While the detailed mechanism leading to the high predictability of intraseasonal sea ice concentration needs to be further examined, the study reveals for the first time that Arctic sea ice can be predicted statistically with reasonable skill at the intraseasonal time scales given the small signal-to-noise ratio of daily data.
format Article in Journal/Newspaper
author Wang, Lei
Yuan, Xiaojun
Ting, Mingfang
Li, Cuihua
author_facet Wang, Lei
Yuan, Xiaojun
Ting, Mingfang
Li, Cuihua
author_sort Wang, Lei
title Predicting Summer Arctic Sea Ice Concentration Intraseasonal Variability Using a Vector Autoregressive Model
title_short Predicting Summer Arctic Sea Ice Concentration Intraseasonal Variability Using a Vector Autoregressive Model
title_full Predicting Summer Arctic Sea Ice Concentration Intraseasonal Variability Using a Vector Autoregressive Model
title_fullStr Predicting Summer Arctic Sea Ice Concentration Intraseasonal Variability Using a Vector Autoregressive Model
title_full_unstemmed Predicting Summer Arctic Sea Ice Concentration Intraseasonal Variability Using a Vector Autoregressive Model
title_sort predicting summer arctic sea ice concentration intraseasonal variability using a vector autoregressive model
publishDate 2016
url https://doi.org/10.7916/x3fz-3t05
geographic Arctic
geographic_facet Arctic
genre Arctic
Beaufort Sea
Sea ice
genre_facet Arctic
Beaufort Sea
Sea ice
op_relation https://doi.org/10.7916/x3fz-3t05
op_doi https://doi.org/10.7916/x3fz-3t05
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