COBASE: A new copula-based shuffling method for ensemble weather forecast postprocessing
Maurits Flos, Bastien Fran\c{c}ois, Irene Schicker, Kirien Whan, Elisa Perrone

TL;DR
COBASE is a new copula-based postprocessing method for ensemble weather forecasts that improves dependence structure calibration, outperforming traditional approaches and matching nonparametric methods in accuracy.
Contribution
Introduces COBASE, a copula-based framework that combines parametric modeling with a rank-shuffling mechanism for better dependence reconstruction in weather forecast postprocessing.
Findings
COBASE outperforms traditional copula methods like GCA.
COBASE achieves performance comparable to nonparametric methods such as SimSchaake and ECC.
Results are consistent across different regions and forecast variables.
Abstract
Weather predictions are often provided as ensembles generated by repeated runs of numerical weather prediction models. These forecasts typically exhibit bias and inaccurate dependence structures due to numerical and dispersion errors, requiring statistical postprocessing for improved precision. A common correction strategy is the two-step approach: first adjusting the univariate forecasts, then reconstructing the multivariate dependence. The second step is usually handled with nonparametric methods, which can underperform when historical data are limited. Parametric alternatives, such as the Gaussian Copula Approach (GCA), offer theoretical advantages but often produce poorly calibrated multivariate forecasts due to random sampling of the corrected univariate margins. In this work, we introduce COBASE, a novel copula-based postprocessing framework that preserves the flexibility of…
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