Post-processing methods are nowadays widely used for limiting the impact of errors in ensemble forecast of meteorological variables. Ensemble model output statistics are an easy-to-apply technique for post-processing, based on a linear regression model. In this paper we use an ensemble model output statistic for the forecast of daily maximum temperatures in Veneto. We calculate estimative and calibrated predictive distributions for a time period of three years. We then compare the different predictive distributions by means of the log-score, the continuous ranked probability score and the coverage of the corresponding predictive quantiles. We show that the calibrated approach improves on the estimative ones as regards both mean scores and ...
Abstract — A post-processing method is presented, that is aimed at enhancing the value of ensemble f...
International audienceAbstract. Statistical post-processing of ensemble forecasts, from simple linea...
International audienceMeteorological ensemble members are a collection of scenarios for future weath...
Post-processing methods are nowadays widely used for limiting the impact of errors in ensemble fore...
Post-processing methods are nowadays widely used for limiting the impact of errors in ensemble forec...
The past fifteen years have witnessed a radical change in the practice of weather forecasting, in th...
Möller AC, Groß J. Probabilistic temperature forecasting based on an ensemble autoregressive modific...
Understanding changes in the frequency, severity, and seasonality of daily temperature extremes is i...
Weather predictions are uncertain by nature. This uncertainty is dynamically assessed by a finite se...
International audienceAbstract Ensembles used for probabilistic weather forecasting tend to be biase...
Ensemble prediction systems typically show positive spread-error correlation, but they are subject t...
We develop post-processing approaches based on linear regression that make ensemble forecasts more r...
Abstract — A post-processing method is presented, that is aimed at enhancing the value of ensemble f...
International audienceAbstract. Statistical post-processing of ensemble forecasts, from simple linea...
International audienceMeteorological ensemble members are a collection of scenarios for future weath...
Post-processing methods are nowadays widely used for limiting the impact of errors in ensemble fore...
Post-processing methods are nowadays widely used for limiting the impact of errors in ensemble forec...
The past fifteen years have witnessed a radical change in the practice of weather forecasting, in th...
Möller AC, Groß J. Probabilistic temperature forecasting based on an ensemble autoregressive modific...
Understanding changes in the frequency, severity, and seasonality of daily temperature extremes is i...
Weather predictions are uncertain by nature. This uncertainty is dynamically assessed by a finite se...
International audienceAbstract Ensembles used for probabilistic weather forecasting tend to be biase...
Ensemble prediction systems typically show positive spread-error correlation, but they are subject t...
We develop post-processing approaches based on linear regression that make ensemble forecasts more r...
Abstract — A post-processing method is presented, that is aimed at enhancing the value of ensemble f...
International audienceAbstract. Statistical post-processing of ensemble forecasts, from simple linea...
International audienceMeteorological ensemble members are a collection of scenarios for future weath...