Seasonal predictability of extratropical storm tracks in GFDL's high-resolution climate prediction model

The seasonal predictability of extratropical storm tracks in the Geophysical Fluid Dynamics Laboratory’s (GFDL)'s high-resolution climate model has been investigated using an average predictability time analysis. The leading predictable components of extratropical storm tracks are the ENSO-related spatial patterns for both boreal winter and summer, and the second predictable components are mostly due to changes in external radiative forcing and multidecadal oceanic variability. These two predictable components for both seasons show significant correlation skill for all leads from 0 to 9 months, while the skill of predicting the boreal winter storm track is consistently higher than that of the austral winter. The predictable components of extratropical storm tracks are dynamically consistent with the predictable components of the upper troposphere jet flow for both seasons. Over the region with strong storm-track signals in North America, the model is able to predict the changes in statistics of extremes connected to storm-track changes (e.g., extreme low and high sea level pressure and extreme 2-m air temperature) in response to different ENSO phases. These results point toward the possibility of providing skillful seasonal predictions of the statistics of extratropical extremes over land using high-resolution coupled models.

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Author Yang, Xiaosong
Vecchi, Gabriel
Gudgel, Rich
Delworth, Thomas
Zhang, Shaoqing
Rosati, Anthony
Jia, Liwei
Stern, William
Wittenberg, Andrew
Kapnick, Sarah
Msadek, Rym
Underwood, Seth
Zeng, Fanrong
Anderson, Whit
Balaj, Venkatramani
Publisher UCAR/NCAR - Library
Publication Date 2015-05-01T00:00:00
Digital Object Identifier (DOI) Not Assigned
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Topic Category geoscientificInformation
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Metadata Date 2023-08-18T19:06:21.122269
Metadata Record Identifier edu.ucar.opensky::articles:16652
Metadata Language eng; USA
Suggested Citation Yang, Xiaosong, Vecchi, Gabriel, Gudgel, Rich, Delworth, Thomas, Zhang, Shaoqing, Rosati, Anthony, Jia, Liwei, Stern, William, Wittenberg, Andrew, Kapnick, Sarah, Msadek, Rym, Underwood, Seth, Zeng, Fanrong, Anderson, Whit, Balaj, Venkatramani. (2015). Seasonal predictability of extratropical storm tracks in GFDL's high-resolution climate prediction model. UCAR/NCAR - Library. http://n2t.net/ark:/85065/d7zp4795. Accessed 19 July 2025.

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