Uncertainty Quantification in Complex Simulation Models Using Ensemble Copula Coupling
Roman Schefzik, Thordis L. Thorarinsdottir, Tilmann Gneiting

TL;DR
This paper introduces ensemble copula coupling (ECC), a comprehensive framework for uncertainty quantification in complex, high-dimensional simulation models like weather forecasts, integrating ensemble generation, statistical postprocessing, and rank-based reordering.
Contribution
The paper proposes and reviews ECC, a novel multi-stage procedure that fuses ensemble simulation with statistical postprocessing and copula-based reordering to improve uncertainty quantification in complex models.
Findings
ECC effectively captures dependence structures in weather data.
The case study demonstrates improved forecast calibration and sharpness.
ECC variants adapt to different sampling and transformation methods.
Abstract
Critical decisions frequently rely on high-dimensional output from complex computer simulation models that show intricate cross-variable, spatial and temporal dependence structures, with weather and climate predictions being key examples. There is a strongly increasing recognition of the need for uncertainty quantification in such settings, for which we propose and review a general multi-stage procedure called ensemble copula coupling (ECC), proceeding as follows: 1. Generate a raw ensemble, consisting of multiple runs of the computer model that differ in the inputs or model parameters in suitable ways. 2. Apply statistical postprocessing techniques, such as Bayesian model averaging or nonhomogeneous regression, to correct for systematic errors in the raw ensemble, to obtain calibrated and sharp predictive distributions for each univariate output variable individually. 3. Draw a sample…
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