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10.5676/DWD/DECADAL-EPI-DE_V2022.01_QA

DOI for Scientific and Technical Data

Title

1- and 5-yearly anomalies and quality assessment of decadal climate predictions for Germany (EPISODES) version 2022.01

Subtitle

1- and 5-yearly anomalies and quality assessment of decadal climate predictions (MPI-ESM-LR) downscaled over Germany using the empirical-statistical downscaling method DWD-EPISODES version 2022

Citation

Pasternack, Alexander; Hoff, Amelie; Wehring, Sabrina; Pankatz, Klaus; Lorenz, Philip; Paxian, Andreas; Kreienkamp, Frank; Früh, Barbara (2023):
1- and 5-yearly anomalies and quality assessment of decadal climate predictions for Germany (EPISODES) version 2022.01
https://doi.org/10.5676/DWD/DECADAL-EPI-DE_V2022.01_QA

Creators

Pasternack, Alexander; Hoff, Amelie; Wehring, Sabrina; Pankatz, Klaus; Lorenz, Philip; Paxian, Andreas; Kreienkamp, Frank; Früh, Barbara

Publisher

Deutscher Wetterdienst (DWD, http://www.dwd.de/EN/)

Publication Year

2023

Summary

The 1- and 5-yearly anomalies (for years 1, 1-5, 3-7 and 6-10), the mean squared errors (mse) and the Pearson correlation coefficients (corr_pea) are calculated for the decadal climate predictions of the Max-Planck-Institute Earth System Model with Low-Resolution (MPI-ESM-LR) which are downscaled over Germany using the empirical-statistical downscaling method DWD-EPISODES version 2022. The 1- and 5-yearly anomalies and the corresponding quality measures are available on a Germany-wide grid of about 10 km x 10 km (regular 0.15° x 0.1° grid). The anomalies of the following variables are included in the data set: air temperature 2 m (daily mean: tasAnom, daily maximum: tasmaxAnom, daily minimum: tasminAnom), precipitation (prAnom), relative humidity 2 m (hursAnom), global radiation (rsdsAnom), sea level pressure (pslAnom), and wind speed 10 m (sfcWindAnom). The 1- and 5-yearly anomalies are calculated in comparison to the climate time period from 1991 to 2020.

The German Climate Forecast System is described by: Fröhlich, K., Dobrynin, M., Isensee, K. et al. (2021). The german climate forecast system: GCFS. Journal of Advances in Modeling Earth Systems, 13. DOI: 10.1029/2020MS002101. https://agupubs.onlinelibrary.wiley.com/doi/10.1029/2020MS002101.

The empirical-statistical downscaling method EPISODES version 2018 is described by: Kreienkamp, F., Paxian, A., Früh, B. et al. (2019). Evaluation of the empirical-statistical downscaling method EPISODES. Clim Dyn, 52, 991-1026. DOI: 10.1007/s00382-018-4276-2. https://link.springer.com/article/10.1007/s00382-018-4276-2. Kreienkamp, F., Lorenz, P., Geiger, T. (2020). Statistically Downscaled CMIP6 Projections Show Stronger Warming for Germany. Atmosphere 11, 1245. DOI: 10.3390/atmos11111245. https://www.mdpi.com/2073-4433/11/11/1245. The latest EPISODES version 2022 contains minor bug fixes and technical updates for climate predictions.

Along with the 1- and 5-yearly aggregated model forecast, the associated quality measures mse and corr_pea are also provided. These measures were calculated grid point-wise for the verification period from 1961 to 2020/ from 1966 to 2020 with an analogous 1-yearly/ 5-yearly temporal aggregation using data based on observations or reanalysis. The variables pr, tas, tasmin, tasmax, hurs and rsds were verified using the HYRAS operational observation (https://www.dwd.de/DE/leistungen/hyras/hyras.html). Regarding the verification of the variable sfcWind ERA5-LAND (https://confluence.ecmwf.int/display/CKB/ERA5-Land%3A+data+documentation) was used and for the remaining variable psl ERA5 (https://confluence.ecmwf.int/display/CKB/ERA5%3A+data+documentation) was used. For further technical information regarding the provided decadal climate predictions please visit https://esgf.dwd.de/projects/climatepredictionsde/decadal-epi-de-v2022-01.

Climate predictions should only be used considering the respective climate prediction skills and the recommended time aggregations. Please note that climate prediction skill generally increases if aggregated over time and space, and that the data only partly consider urban heat island effects. Please find figures of the climate prediction skills on a regular grid with 0.3° x 0.2° for Germany and further background information on climate predictions (e.g. on the recommended time aggregations) on https://www.dwd.de/climatepredictions. Please consider that the daily data on this ESGF node are not recalibrated and might differ from the statistically postprocessed (recalibrated) yearly decadal prediction data on the website cited above.

Version

V2022.01

Temporal Coverage

September 2023 to present

Temporal Resolution

Yearly and 5-yearly

Update Frequency

Yearly

Spatial Coverage

DE-015x01 (Germany on a regular 0.15° x 0.1° grid, approx. 10 km x 10 km)

Data Format

NetCDF4

Datasize

approx. 300 KB for the 1-yearly data and approx. 700 kB fpr the 5-yearly data.

Licence

The Deutscher Wetterdienst (DWD) is the producer of the data. The General Terms and Conditions of Business and Delivery apply for services provided by DWD
http://www.dwd.de/EN/service/terms/terms.html

Contact

Zentrales Klimabüro
Deutscher Wetterdienst
Frankfurter Straße 135
D-63067 Offenbach/Main
GERMANY
e-mail: klima.offenbach@dwd.de
Tel.: + 49 (0)69 / 8062-2912

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