4.6 Article

Seasonal to interannual climate predictability in mid and high northern latitudes in a global coupled model

期刊

CLIMATE DYNAMICS
卷 32, 期 6, 页码 783-798

出版社

SPRINGER
DOI: 10.1007/s00382-008-0419-1

关键词

Predictability; Mid and high latitude climate; Seasonal to interannual variability; Global coupled atmosphere-ocean modeling; Coupled atmosphere-ocean-sea ice processes

资金

  1. Deutsche Forschungsgemeinschaft

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The upper limit of climate predictability in mid and high northern latitudes on seasonal to interannual time scales is investigated by performing two perfect ensemble experiments with the global coupled atmosphere-ocean-sea ice model ECHAM5/MPI-OM. The ensembles consist of six members and are initialized in January and July from different years of the model's 300-year control integration. The potential prognostic predictability is analyzed for a set of oceanic and atmospheric climate parameters. The predictability of the atmospheric circulation is small except for southeastern Europe, parts of North America and the North Pacific, where significant predictability occurs with a lead time of up to half a year. The predictability of 2 m air temperature shows a large land-sea contrast with highest predictabilities over the sub polar North Atlantic and North Pacific. A combination of relatively high persistence and advection of sea surface temperature anomalies into these areas leads to large predictability. Air temperature over Europe, parts of North America and Asia shows significant predictability of up to half a year in advance. Over the ice-covered Arctic, air temperature is not predictable at time scales exceeding 2 months. Sea ice thickness is highly predictable in the central Arctic mainly due to persistence and in the Labrador Sea due to dynamics. Surface salinity is highly predictable in the Arctic Ocean, northern North Atlantic and North Pacific for several years in advance. We compare the results to the predictability due to persistence and show the importance of dynamical processes for the predictability.

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