Scripts and data for "Rarest rainfall events will see the greatest relative increase in magnitude under future climate change"
doi:10.4121/20531376.v1
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doi: 10.4121/20531376
doi: 10.4121/20531376
Datacite citation style:
Gruendemann, Gaby; van de Giesen, N.C. (Nick); Brunner, Lukas; van der Ent, R.J. (Ruud) (2022): Scripts and data for "Rarest rainfall events will see the greatest relative increase in magnitude under future climate change". Version 1. 4TU.ResearchData. dataset. https://doi.org/10.4121/20531376.v1
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Dataset
usage stats
833
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1
citations
537
downloads
geolocation
Global Domain
time coverage
-
licence
CC BY 4.0
This dataset contains the python scripts and data (netcdf and csv) to recreate the figures of the manuscript: Gründemann, GJ, van de Giesen, N, Brunner, L, and van der Ent, R (2022). Rarest rainfall events will have the greatest relative increase in magnitude under future climate change. Nature Communications Earth and Environment 3, 235. https://doi.org/10.1038/s43247-022-00558-8.
history
- 2022-12-23 first online, published, posted
publisher
4TU.ResearchData
format
csv, netcdf, python scripts
associated peer-reviewed publication
Rarest rainfall events will see the greatest relative increase in magnitude under future climate change
funding
- Transforming Weather Water data into value-added Information services for sustainable Growth in Africa (grant code 776691) [more info...] European Commission
- European Climate Prediction system (grant code 776613) [more info...] European Commission
- Unravelling the moisture sources in precipitation extremes worldwide (grant code 016.Veni.181.015) [more info...] Dutch Research Council
organizations
TU Delft, Faculty of Civil Engineering and Geosciences, Department of Water ManagementCentre for Hydrology, University of Saskatchewan
Institute for Atmospheric and Climate Service, ETH Zurich
Department of Meteorology and Geophysics, University of Vienna
DATA
files (3)
- 2,359 bytesMD5:
21424a7cc41e7c6ccb5717760233aece
README.txt - 402,923,783 bytesMD5:
a49243b0c8bffd0010a2aa3a52a39a74
Gruendemann_2022_data.zip - 8,892 bytesMD5:
c10d1659e7b8027665cb05ce651a21b3
Gruendemann_2022_scripts.zip -
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402,935,034 bytes unzipped