Mechanisms of Regional Arctic Sea Ice Predictability in Two Dynamical Seasonal Forecast Systems

Mitchell Bushuk, Yongfei Zhang, Michael Winton, Bill Hurlin, Thomas Delworth, Feiyu Lu, Liwei Jia, Liping Zhang, William Cooke, Matthew Harrison, NATHANIEL C. JOHNSON, Sarah Kapnick, Colleen Mchugh, Hiroyuki Murakami, Anthony Rosati, Kai Chih Tseng, ANDREW T. WITTENBERG, Xiaosong Yang, Fanrong Zeng

Research output: Contribution to journalArticlepeer-review

25 Scopus citations

Abstract

Research over the past decade has demonstrated that dynamical forecast systems can skillfully predict pan- Arctic sea ice extent (SIE) on the seasonal time scale; however, there have been fewer assessments of prediction skill on user-relevant spatial scales. In this work, we evaluate regional Arctic SIE predictions made with the Forecast-Oriented Low Ocean Resolution (FLOR) and Seamless System for Prediction and Earth System Research (SPEAR_MED) dynamical seasonal forecast systems developed at the NOAA/Geophysical Fluid Dynamics Laboratory. Compared to FLOR, we find that the recently developed SPEAR_MED system displays improved skill in predicting regional detrended SIE anomalies, partially owing to improvements in sea ice concentration (SIC) and thickness (SIT) initial conditions. In both systems, winter SIE is skillfully predicted up to 11 months in advance, whereas summer minimum SIE predictions are limited by the Arctic spring predictability barrier, with typical skill horizons of roughly 4 months. We construct a parsimonious set of simple statistical prediction models to investigate the mechanisms of sea ice predictability in these systems. Three distinct predictability regimes are identified: a summer regime dominated by SIE and SIT anomaly persistence; a winter regime dominated by SIE and upper-ocean heat content (uOHC) anomaly persistence; and a combined regime in the Chukchi Sea, characterized by a trade-off between uOHC-based and SIT-based predictability that occurs as the sea ice edge position evolves seasonally. The combination of regional SIE, SIT, and uOHC predictors is able to reproduce the SIE skill of the dynamical models in nearly all regions, suggesting that these statistical predictors provide a stringent skill benchmark for assessing seasonal sea ice prediction systems.

Original languageEnglish
Pages (from-to)4207-4231
Number of pages25
JournalJournal of Climate
Volume35
Issue number13
DOIs
StatePublished - Jul 1 2022

Keywords

  • Arctic
  • Climate models
  • Climate variability
  • Data assimilation
  • Sea ice
  • Seasonal forecasting

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