Seasonal Forecasting of Precipitation, Temperature, and Snow Mass over the Western United States by Combining Ensemble Postprocessing with Empirical Ocean–Atmosphere Teleconnections
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Affiliation
Department of Hydrology and Atmospheric Sciences, The University of ArizonaIssue Date
2023-08-02Keywords
North AmericaPostprocessing
Probability forecasts/models/distribution
Seasonal forecasting
Snowpack
Superensembles
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American Meteorological SocietyCitation
Scheftic, W. D., X. Zeng, and M. A. Brunke, 2023: Seasonal Forecasting of Precipitation, Temperature, and Snow Mass over the Western United States by Combining Ensemble Postprocessing with Empirical Ocean–Atmosphere Teleconnections. Wea. Forecasting, 38, 1413–1427, https://doi.org/10.1175/WAF-D-22-0099.1.Journal
Weather and ForecastingRights
© 2023 American Meteorological Society.Collection Information
This item from the UA Faculty Publications collection is made available by the University of Arizona with support from the University of Arizona Libraries. If you have questions, please contact us at repository@u.library.arizona.edu.Abstract
Accurate and reliable seasonal forecasts are important for water and energy supply management. Recogniz-ing the important role of snow water equivalent (SWE) for water management, here we include the seasonal forecast of SWE in addition to precipitation (P) and 2-m temperature (T2m) over hydrologically defined regions of the western United States. A two-stage process is applied to seasonal predictions from two models (NCEP CFSv2 and ECMWF SEAS5) through 1) postprocessing to remove biases in the mean, variance, and ensemble spread and 2) further reducing the residual errors by linear regression using climate indices. The adjusted forecasts from the two models are combined to form a superensemble using weights based on their prior skill. The adjusted forecasts are consistently improved over raw model forecasts probabilistically for all variables and deterministically for SWE forecasts. Overall skill of the superensem-ble usually improves upon the skill of forecasts from individual models; however, the percentage of seasons and regions with increased skill was approximately the same as those with decreased skill relative to the top performing postprocessed individual model. Seasonal SWE has the highest prediction skill, followed by T2m, with P showing lower prediction skill. Persistence contributes strongly to the skill of SWE and moderately to the skill of T2m. Furthermore, a distinct seasonality in the skill is seen in SWE, with a higher skill from late spring through early summer. © 2023 American Meteorological Society.Note
6 month embargo; first 02 August 2023ISSN
0882-8156Version
Final Published Versionae974a485f413a2113503eed53cd6c53
10.1175/WAF-D-22-0099.1
