Revisiting the potential of melt pond fraction as a predictor for the seasonal Arctic sea ice extent minimum

The rapid change in Arctic sea ice in recent decades has led to a rising demand for seasonal sea ice prediction. A recent modeling study that employed a prognostic melt pond model in a stand-alone sea ice model found that September Arctic sea ice extent can be accurately predicted from the melt pond...

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Bibliographic Details
Published in:Environmental Research Letters
Main Authors: Jiping Liu, Mirong Song, Radley M Horton, Yongyun Hu
Format: Article in Journal/Newspaper
Language:English
Published: IOP Publishing 2015
Subjects:
Q
Online Access:https://doi.org/10.1088/1748-9326/10/5/054017
https://doaj.org/article/52ad759418aa4f42a56b33dae9cf2f3b
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Summary:The rapid change in Arctic sea ice in recent decades has led to a rising demand for seasonal sea ice prediction. A recent modeling study that employed a prognostic melt pond model in a stand-alone sea ice model found that September Arctic sea ice extent can be accurately predicted from the melt pond fraction in May. Here we show that satellite observations show no evidence of predictive skill in May. However, we find that a significantly strong relationship (high predictability) first emerges as the melt pond fraction is integrated from early May to late June, with a persistent strong relationship only occurring after late July. Our results highlight that late spring to mid summer melt pond information is required to improve the prediction skill of the seasonal sea ice minimum. Furthermore, satellite observations indicate a much higher percentage of melt pond formation in May than does the aforementioned model simulation, which points to the need to reconcile model simulations and observations, in order to better understand key mechanisms of melt pond formation and evolution and their influence on sea ice state.