Journal of Water and Climate Change (Aug 2023)
Statistical refinement of the North American Multi-Model Ensemble precipitation forecasts over Karoon basin, Iran
Abstract
An effective postprocessing approach has been examined to improve the skill of North American Multi-Model Ensemble (NMME) precipitation forecasts in the Karoon basin, Iran. The Copula–Bayesian approach was used along with the Normal Kernel Density marginal distribution and the Kernel Copula function. This process creates more than one postprocessing precipitation value as results candidates (first pass). A similar process is used for a second pass to obtain preprocessed values based on the candidate inputs, which helps identify the most suitable postprocessed value. The application of the technique for order preference by similarity to the ideal solution method based on conditional probability distribution functions of the first and second passes leads to achieving final improved forecast data among the existing candidates. To validate the results, data from 1982–2010 and 2011–2018 were used for the calibration and forecast periods. The results show that while the GFDL and CFS2 models tend to overestimate precipitation, most other NMME models underestimate it. Postprocessing improves the accuracy of forecasts for most models by 20%–40%. Overall, the proposed Copula–Bayesian postprocessing approach could provide more reliable forecasts with higher spatial and temporal consistency, better detection of extreme precipitation values, and a significant reduction in uncertainties. HIGHLIGHTS The precipitation forecasts of Karoon river watershed in southwest Iran as a flood-prone area are investigated.; A new postprocessing approach is presented for North American Multi-Model Ensemble (NMME) precipitation estimations.; The proposed method is based on the Copula–Bayesian approach.; The method is desirable for detection of the extreme precipitation values.; Significant increases in forecast skill of improved NMME data are provided.;
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