Postprocessing ensemble forecasts of vertical temperature profiles

<p>Weather forecasts from ensemble prediction systems (EPS) are improved by statistical models trained on past EPS forecasts and their atmospheric observations. Recently these corrections have moved from being univariate to multivariate. The focus has been on (quasi-)horizontal atmospheric var...

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Main Authors: D. Schoenach, T. Simon, G. J. Mayr
Format: Article
Language:English
Published: Copernicus Publications 2020-05-01
Series:Advances in Statistical Climatology, Meteorology and Oceanography
Online Access:https://www.adv-stat-clim-meteorol-oceanogr.net/6/45/2020/ascmo-6-45-2020.pdf
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spelling doaj-f5847da5a5f44f53b0135a9354e96de62020-11-25T02:51:33ZengCopernicus PublicationsAdvances in Statistical Climatology, Meteorology and Oceanography2364-35792364-35872020-05-016456010.5194/ascmo-6-45-2020Postprocessing ensemble forecasts of vertical temperature profilesD. Schoenach0D. Schoenach1T. Simon2T. Simon3G. J. Mayr4Institute of Atmospheric and Cryospheric Sciences, University of Innsbruck, Innsbruck, AustriaFinnish Meteorological Institute, Helsinki, FinlandInstitute of Atmospheric and Cryospheric Sciences, University of Innsbruck, Innsbruck, AustriaDepartment of Statistics, University of Innsbruck, Innsbruck, AustriaInstitute of Atmospheric and Cryospheric Sciences, University of Innsbruck, Innsbruck, Austria<p>Weather forecasts from ensemble prediction systems (EPS) are improved by statistical models trained on past EPS forecasts and their atmospheric observations. Recently these corrections have moved from being univariate to multivariate. The focus has been on (quasi-)horizontal atmospheric variables. This paper extends the correction methods to EPS forecasts of vertical profiles in two steps. First univariate distributional regression methods correct the probability distributions separately at each vertical level. In the second step copula coupling re-installs the dependence among neighboring levels by using the rank order structure of the EPS forecasts. The method is applied to EPS data from the European Centre for Medium-Range Weather Forecasts (ECMWF) at model levels interpolated to four locations in Germany, from which radiosondes are released to measure profiles of temperature and other variables four times a day. A winter case study and a summer case study, respectively, exemplify that univariate postprocessing fails to preserve stable layers, which are crucial for many atmospheric processes. Quantile resampling and a resampling that preserves the relative distance between individual EPS members improve the calibration of the raw forecasts of the temperature profiles as shown by rank histograms. They also improve the multivariate metrics of energy score and variogram score and retain the stable layers. Improvements take place over all times of the day and all seasons. They are largest within the atmospheric boundary layer and for shorter lead times.</p>https://www.adv-stat-clim-meteorol-oceanogr.net/6/45/2020/ascmo-6-45-2020.pdf
collection DOAJ
language English
format Article
sources DOAJ
author D. Schoenach
D. Schoenach
T. Simon
T. Simon
G. J. Mayr
spellingShingle D. Schoenach
D. Schoenach
T. Simon
T. Simon
G. J. Mayr
Postprocessing ensemble forecasts of vertical temperature profiles
Advances in Statistical Climatology, Meteorology and Oceanography
author_facet D. Schoenach
D. Schoenach
T. Simon
T. Simon
G. J. Mayr
author_sort D. Schoenach
title Postprocessing ensemble forecasts of vertical temperature profiles
title_short Postprocessing ensemble forecasts of vertical temperature profiles
title_full Postprocessing ensemble forecasts of vertical temperature profiles
title_fullStr Postprocessing ensemble forecasts of vertical temperature profiles
title_full_unstemmed Postprocessing ensemble forecasts of vertical temperature profiles
title_sort postprocessing ensemble forecasts of vertical temperature profiles
publisher Copernicus Publications
series Advances in Statistical Climatology, Meteorology and Oceanography
issn 2364-3579
2364-3587
publishDate 2020-05-01
description <p>Weather forecasts from ensemble prediction systems (EPS) are improved by statistical models trained on past EPS forecasts and their atmospheric observations. Recently these corrections have moved from being univariate to multivariate. The focus has been on (quasi-)horizontal atmospheric variables. This paper extends the correction methods to EPS forecasts of vertical profiles in two steps. First univariate distributional regression methods correct the probability distributions separately at each vertical level. In the second step copula coupling re-installs the dependence among neighboring levels by using the rank order structure of the EPS forecasts. The method is applied to EPS data from the European Centre for Medium-Range Weather Forecasts (ECMWF) at model levels interpolated to four locations in Germany, from which radiosondes are released to measure profiles of temperature and other variables four times a day. A winter case study and a summer case study, respectively, exemplify that univariate postprocessing fails to preserve stable layers, which are crucial for many atmospheric processes. Quantile resampling and a resampling that preserves the relative distance between individual EPS members improve the calibration of the raw forecasts of the temperature profiles as shown by rank histograms. They also improve the multivariate metrics of energy score and variogram score and retain the stable layers. Improvements take place over all times of the day and all seasons. They are largest within the atmospheric boundary layer and for shorter lead times.</p>
url https://www.adv-stat-clim-meteorol-oceanogr.net/6/45/2020/ascmo-6-45-2020.pdf
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