Efficient Drift Correction of Initialized Earth System Predictions

Ensemble Earth system model predictions initialized from states close to observations generally drift away from observed climatology and towards a biased model climatology over timescales from days to years. Estimation of drift, the change in forecast climatology with lead time, is essential for computing forecast anomalies that can be meaningfully compared with observed anomalies from the past and used with confidence to credibly anticipate weather pattern changes from weeks to decades in advance. Conventional methods for estimating drift rely on the availability of a large sample of reforecasts spanning at least two decades, but generating such comprehensive reforecast sets requires a significant investment of both human and computer resources. We show here that subseasonal to decadal forecast drift can be well estimated using minimal reforecast methods that target a predetermined climatological window, yielding forecast anomaly and skill verification metrics that closely match those obtained using standard (much more expensive) methods. Efficient and accurate forecast drift quantification facilitates prediction system experimentation with greatly reduced overhead.

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Temporal Range

  • Begin:  1959-01-01T0000+00
    End:  2023-12-31T2300+00

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Resource Type dataset
Temporal Range Begin 1959-01-01T0000+00
Temporal Range End 2023-12-31T2300+00
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Resource Format HDF5/NetCDF4
Standardized Resource Format NetCDF
Asset Size 79548.482 MB
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Resource Support Email datahelp@ucar.edu
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Distributor NSF NCAR Geoscience Data Exchange
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Metadata Contact Organization NSF NCAR Geoscience Data Exchange

Author Yeager, Stephen G.
Li, Yuanpu
Wu, Xian
Meehl, Gerald A.
Rosenbloom, Nan
Glanville, Anne A.
Richter, Jadwiga H.
Roekel, Luke Van
Hannah, Walter
Publisher NSF National Center for Atmospheric Research
Publication Date 2025-07-23
Digital Object Identifier (DOI) https://doi.org/10.5065/TZFD-NP04
Alternate Identifier d010074
Resource Version N/A
Topic Category climatologyMeteorologyAtmosphere
Progress completed
Metadata Date 2025-10-09T01:40:45Z
Metadata Record Identifier edu.ucar.gdex::d010074
Metadata Language eng; USA
Suggested Citation Yeager, Stephen G., Li, Yuanpu, Wu, Xian, Meehl, Gerald A., Rosenbloom, Nan, Glanville, Anne A., Richter, Jadwiga H., Roekel, Luke Van, Hannah, Walter. (2025). Efficient Drift Correction of Initialized Earth System Predictions. NSF National Center for Atmospheric Research. https://doi.org/10.5065/TZFD-NP04. Accessed 11 October 2025.

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