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Accounting for Representativeness in the Verification of Ensemble Precipitation Forecasts

Spatial variability of precipitation is analyzed to characterize to what extent precipitation observed at a single location is representative of precipitation over a larger area. Characterization of precipitation representativeness is made in probabilistic terms using a parametric approach, namely,...

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Bibliographic Details
Published in:Monthly weather review 2020-05, Vol.148 (5), p.2049-2062
Main Authors: Ben Bouallegue, Zied, Haiden, Thomas, Weber, Nicholas J., Hamill, Thomas M., Richardson, David S.
Format: Article
Language:English
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Summary:Spatial variability of precipitation is analyzed to characterize to what extent precipitation observed at a single location is representative of precipitation over a larger area. Characterization of precipitation representativeness is made in probabilistic terms using a parametric approach, namely, by fitting a censored shifted gamma distribution to observation measurements. Parameters are estimated and analyzed for independent precipitation datasets, among which one is based on high-density gauge measurements. The results of this analysis serve as a basis for accounting for representativeness error in an ensemble verification process. Uncertainty associated with the scale mismatch between forecast and observation is accounted for by applying a perturbed-ensemble approach before the computation of scores. Verification results reveal a large impact of representativeness error on precipitation forecast reliability and skill estimates. The parametric model and estimated coefficients presented in this study could be used directly for forecast postprocessing to partly compensate for the limitation of any modeling system in terms of precipitation subgrid-scale variability.
ISSN:0027-0644
1520-0493
DOI:10.1175/MWR-D-19-0323.1