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Article Dans Une Revue Journal of the Royal Statistical Society: Series C Applied Statistics Année : 2015

Combining the Bayesian processor of output with Bayesian model averaging for reliable ensemble forecasting

Résumé

Weather predictions are uncertain by nature. This uncertainty is dynamically assessed by a finite set of trajectories, called ensemble members. Unfortunately, ensemble prediction systems underestimate the uncertainty and thus are unreliable. Statistical approaches are proposed to post-process ensemble forecasts, including Bayesian model averaging and the Bayesian processor of output. We develop a methodology, called the Bayesian processor of ensemble members, from a hierarchical model and combining the two aforementioned frameworks to calibrate ensemble forecasts. The Bayesian processor of ensemble members is compared with Bayesian model averaging and the Bayesian processor of output by calibrating surface temperature forecasting over eight stations in the province of Quebec (Canada). Results show that ensemble forecast skill is improved by the method developed.

Dates et versions

hal-01197654 , version 1 (11-09-2015)

Identifiants

Citer

Ronaud Marty, V. Fortin, H. Kuswanto, A. -C. Favre, Éric Parent. Combining the Bayesian processor of output with Bayesian model averaging for reliable ensemble forecasting. Journal of the Royal Statistical Society: Series C Applied Statistics, 2015, 64 (1), pp.75-92. ⟨10.1111/rssc.12062⟩. ⟨hal-01197654⟩
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