Time‐series‐based ensemble model output statistics for temperature forecasts postprocessing

Author:

Jobst David1ORCID,Möller Annette2ORCID,Groß Jürgen1ORCID

Affiliation:

1. Institute of Mathematics and Applied Informatics University of Hildesheim Hildesheim Germany

2. Faculty of Business Administration and Economics Bielefeld University Bielefeld Germany

Abstract

AbstractThe uncertainty in numerical weather prediction models is nowadays quantified by the use of ensemble forecasts. Although these forecasts are continuously improved, they still suffer from systematic bias and dispersion errors. Statistical postprocessing methods, such as the ensemble model output statistics (EMOS), have been shown to substantially correct the forecasts. This work proposes an extension of EMOS in a time‐series framework. Besides taking account of seasonality and trend in the location and scale parameter of the predictive distribution, the autoregressive process in the mean forecast errors or the standardized forecast errors is considered. The models can be further extended by allowing generalized autoregressive conditional heteroscedasticity. Furthermore, it is outlined how to use these models for arbitrary forecast horizons. To illustrate the performance of the suggested EMOS models in time‐series fashion, we present a case study for the postprocessing of 2 m surface temperature forecasts using five different lead times and a set of observation stations in Germany. The results indicate that the time‐series EMOS extensions are able to significantly outperform the benchmark models EMOS and autoregressive EMOS (AR‐EMOS) in most of the lead time–station cases.

Funder

Deutsche Forschungsgemeinschaft

Publisher

Wiley

Reference63 articles.

1. On modelling and pricing weather derivatives;Alaton P.;Applied Mathematical Finance,2002

2. Arnold S. Walz E.‐M. Ziegel J.&Gneiting T.(2023)Decompositions of the mean continuous ranked probability score.https://doi.org/10.48550/arXiv.2311.14122

3. Statistical post‐processing of dual‐resolution ensemble forecasts;Baran S.;Quarterly Journal of the Royal Meteorological Society,2019

4. The volatility of temperature and pricing of weather derivatives;Benth J.Š.;Quantitative Finance,2007

5. Analysis and modelling of wind speed in New York;Benth J.Š.;Journal of Applied Statistics,2010

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