Quantifying sources of subseasonal prediction skill in CESM2

Subseasonal prediction fills the gap between weather forecasts and seasonal outlooks. There is evidence that predictability on subseasonal timescales comes from a combination of atmosphere, land, and ocean initial conditions. Predictability from the land is often attributed to slowly varying changes in soil moisture and snowpack, while predictability from the ocean is attributed to sources such as the El Nino Southern Oscillation. Here we use a set of subseasonal reforecast experiments with CESM2 to quantify the respective roles of atmosphere, land, and ocean initial conditions on subseasonal prediction skill over land. These reveal that the majority of prediction skill for global surface temperature in weeks 3-4 comes from the atmosphere, while ocean initial conditions become important after week 4, especially in the Tropics. In the CESM2 subseasonal prediction system, the land initial state does not contribute to surface temperature prediction skill in weeks 3-6 and climatological land conditions lead to higher skill, disagreeing with our current understanding. However, land-atmosphere coupling is important in week 1. Subseasonal precipitation prediction skill also comes primarily from the atmospheric initial condition, except for the Tropics, where after week 4 the ocean state is more important.

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Author Richter, Jadwiga H.
Glanville, Anne A.
King, Teagan
Kumar, S.
Yeager, Stephen
Davis, Nicholas A.
Duan, Y.
Fowler, Megan
Jaye, Abigail B.
Edwards, James
Caron, Julie
Dirmeyer, P. A.
Danabasoglu, Gokhan
Oleson, Keith W.
Publisher UCAR/NCAR - Library
Publication Date 2024-03-04T00:00:00
Digital Object Identifier (DOI) Not Assigned
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Topic Category geoscientificInformation
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Metadata Date 2025-07-10T20:03:40.908351
Metadata Record Identifier edu.ucar.opensky::articles:27084
Metadata Language eng; USA
Suggested Citation Richter, Jadwiga H., Glanville, Anne A., King, Teagan, Kumar, S., Yeager, Stephen, Davis, Nicholas A., Duan, Y., Fowler, Megan, Jaye, Abigail B., Edwards, James, Caron, Julie, Dirmeyer, P. A., Danabasoglu, Gokhan, Oleson, Keith W.. (2024). Quantifying sources of subseasonal prediction skill in CESM2. UCAR/NCAR - Library. https://n2t.org/ark:/85065/d7251pc2. Accessed 12 August 2025.

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