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  4. EM-earth: the ensemble meteorological dataset for planet earth
 
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EM-earth: the ensemble meteorological dataset for planet earth

Publikationstyp
Journal Article
Date Issued
2022-04-01
Sprache
English
Author(s)
Tang, Guoqiang  
Clark, Martyn P.  
Papalexiou, Simon Michael  
TORE-URI
https://hdl.handle.net/11420/57683
Journal
Bulletin of the American Meteorological Society  
Volume
103
Issue
4
Start Page
E996
End Page
E1018
Citation
Bulletin of the American Meteorological Society 103 (4): E996-E1018 (2022)
Publisher DOI
10.1175/BAMS-D-21-0106.1
Scopus ID
2-s2.0-85128310169
Publisher
ASM
Gridded meteorological estimates are essential for many applications. Most existing meteorological datasets are deterministic and have limitations in representing the inherent uncertainties from both the data and methodology used to create gridded products. We develop the Ensemble Meteorological Dataset for Planet Earth (EM-Earth) for precipitation, mean daily temperature, daily temperature range, and dewpoint temperature at 0.1° spatial resolution over global land areas from 1950 to 2019. EM-Earth provides hourly/daily deterministic estimates, and daily probabilistic estimates (25 ensemble members), to meet the diverse requirements of hydrometeorological applications. To produce EM-Earth, we first developed a station-based Serially Complete Earth (SC-Earth) dataset, which removes the temporal discontinuities in raw station observations. Then, we optimally merged SC-Earth station data and ERA5 estimates to generate EM-Earth deterministic estimates and their uncertainties. The EM-Earth ensemble members are produced by sampling from parametric probability distributions using spatiotemporally correlated random fields. The EM-Earth dataset is evaluated by leave-one-out validation, using independent evaluation stations, and comparing it with many widely used datasets. The results show that EM-Earth is better in Europe, North America, and Oceania than in Africa, Asia, and South America, mainly due to differences in the available stations and differences in climate conditions. Probabilistic spatial meteorological datasets are particularly valuable in regions with large meteorological uncertainties, where almost all existing deterministic datasets face great challenges in obtaining accurate estimates.
Subjects
Atmosphere | Data processing/distribution | Databases | Precipitation | Temperature
DDC Class
600: Technology
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