Assessing the Skill of Six CMIP6 Climate Models in Predicting Arctic Sea Ice to Narrow the Uncertainty in Projections of the September Ice-Free Arctic

Arctic sea ice is an important indicator and regulator of the state of the global climate. As global temperatures rise due to climate change, Arctic sea ice is undergoing unprecedented rapid melting, bringing vast physical and socio-economic implications for the global Earth system and its inhabitan...

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Main Author: Dyvik Henke, Ellen Charlotte
Other Authors: Huybers, Peter, Wofsy, Steven, Tziperman, Eli
Format: Thesis
Language:English
Published: 2022
Subjects:
Online Access:https://nrs.harvard.edu/URN-3:HUL.INSTREPOS:37371229
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spelling ftharvardudash:oai:dash.harvard.edu:1/37371229 2023-05-15T14:22:11+02:00 Assessing the Skill of Six CMIP6 Climate Models in Predicting Arctic Sea Ice to Narrow the Uncertainty in Projections of the September Ice-Free Arctic Dyvik Henke, Ellen Charlotte Huybers, Peter Wofsy, Steven Tziperman, Eli 2022 application/pdf https://nrs.harvard.edu/URN-3:HUL.INSTREPOS:37371229 en eng Dyvik Henke, Ellen Charlotte. 2021. Assessing the Skill of Six CMIP6 Climate Models in Predicting Arctic Sea Ice to Narrow the Uncertainty in Projections of the September Ice-Free Arctic. Bachelor's thesis, Harvard College. 28861949 https://nrs.harvard.edu/URN-3:HUL.INSTREPOS:37371229 orcid:0000-0001-7233-3267 Arctic Climate CMIP6 Sea-ice Climate change Thesis or Dissertation text 2022 ftharvardudash 2022-04-04T11:36:24Z Arctic sea ice is an important indicator and regulator of the state of the global climate. As global temperatures rise due to climate change, Arctic sea ice is undergoing unprecedented rapid melting, bringing vast physical and socio-economic implications for the global Earth system and its inhabitants. In this thesis, I aim to characterise the implications on Arctic sea ice of the SSP 5-8.5 “worst-case” high-emissions scenario, and to narrow the broad uncertainty in timing of summer sea-ice-free conditions by identifying models with higher relative predictive skill. I compare key spatial and temporal trends and EOF principal modes of variability of sea ice concentration (SIC) for both the historical and SSP 5-8.5 projections of six models, where the CanESM5 model emerges as the most likely to predict observed SIC. I find a statistically significant, almost 1:1, linear relationship between early and late predictive skill, based on a comparison of root-mean-square-error between observed and simulated SIC for early and late portions of the data. Given that historical predictive skill of CanESM5 translates to high predictive skill for future projections, we infer that summer sea-ice-free Arctic will likely follow the trajectory outlined in CanESM5 projections: September sea-ice free by 2033, with a narrower 5%-95% confidence interval of 2027-2039. These findings highlight the importance of taking concrete action on Paris Agreement 1.5ºC targets to avoid the realisation of the stark consequences of the SSP 5-8.5 trajectory. Thesis Arctic Arctic Climate change Sea ice Harvard University: DASH - Digital Access to Scholarship at Harvard Arctic
institution Open Polar
collection Harvard University: DASH - Digital Access to Scholarship at Harvard
op_collection_id ftharvardudash
language English
topic Arctic
Climate
CMIP6
Sea-ice
Climate change
spellingShingle Arctic
Climate
CMIP6
Sea-ice
Climate change
Dyvik Henke, Ellen Charlotte
Assessing the Skill of Six CMIP6 Climate Models in Predicting Arctic Sea Ice to Narrow the Uncertainty in Projections of the September Ice-Free Arctic
topic_facet Arctic
Climate
CMIP6
Sea-ice
Climate change
description Arctic sea ice is an important indicator and regulator of the state of the global climate. As global temperatures rise due to climate change, Arctic sea ice is undergoing unprecedented rapid melting, bringing vast physical and socio-economic implications for the global Earth system and its inhabitants. In this thesis, I aim to characterise the implications on Arctic sea ice of the SSP 5-8.5 “worst-case” high-emissions scenario, and to narrow the broad uncertainty in timing of summer sea-ice-free conditions by identifying models with higher relative predictive skill. I compare key spatial and temporal trends and EOF principal modes of variability of sea ice concentration (SIC) for both the historical and SSP 5-8.5 projections of six models, where the CanESM5 model emerges as the most likely to predict observed SIC. I find a statistically significant, almost 1:1, linear relationship between early and late predictive skill, based on a comparison of root-mean-square-error between observed and simulated SIC for early and late portions of the data. Given that historical predictive skill of CanESM5 translates to high predictive skill for future projections, we infer that summer sea-ice-free Arctic will likely follow the trajectory outlined in CanESM5 projections: September sea-ice free by 2033, with a narrower 5%-95% confidence interval of 2027-2039. These findings highlight the importance of taking concrete action on Paris Agreement 1.5ºC targets to avoid the realisation of the stark consequences of the SSP 5-8.5 trajectory.
author2 Huybers, Peter
Wofsy, Steven
Tziperman, Eli
format Thesis
author Dyvik Henke, Ellen Charlotte
author_facet Dyvik Henke, Ellen Charlotte
author_sort Dyvik Henke, Ellen Charlotte
title Assessing the Skill of Six CMIP6 Climate Models in Predicting Arctic Sea Ice to Narrow the Uncertainty in Projections of the September Ice-Free Arctic
title_short Assessing the Skill of Six CMIP6 Climate Models in Predicting Arctic Sea Ice to Narrow the Uncertainty in Projections of the September Ice-Free Arctic
title_full Assessing the Skill of Six CMIP6 Climate Models in Predicting Arctic Sea Ice to Narrow the Uncertainty in Projections of the September Ice-Free Arctic
title_fullStr Assessing the Skill of Six CMIP6 Climate Models in Predicting Arctic Sea Ice to Narrow the Uncertainty in Projections of the September Ice-Free Arctic
title_full_unstemmed Assessing the Skill of Six CMIP6 Climate Models in Predicting Arctic Sea Ice to Narrow the Uncertainty in Projections of the September Ice-Free Arctic
title_sort assessing the skill of six cmip6 climate models in predicting arctic sea ice to narrow the uncertainty in projections of the september ice-free arctic
publishDate 2022
url https://nrs.harvard.edu/URN-3:HUL.INSTREPOS:37371229
geographic Arctic
geographic_facet Arctic
genre Arctic
Arctic
Climate change
Sea ice
genre_facet Arctic
Arctic
Climate change
Sea ice
op_relation Dyvik Henke, Ellen Charlotte. 2021. Assessing the Skill of Six CMIP6 Climate Models in Predicting Arctic Sea Ice to Narrow the Uncertainty in Projections of the September Ice-Free Arctic. Bachelor's thesis, Harvard College.
28861949
https://nrs.harvard.edu/URN-3:HUL.INSTREPOS:37371229
orcid:0000-0001-7233-3267
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