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Global-scale evaluation of precipitation datasets for hydrological modelling

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posted on 2025-03-04, 14:11 authored by Solomon H. Gebrechorkos, Julian Leyland, Simon J. Dadson, Sagy Cohen, Louise Slater, Michel Wortmann, Philip J. Ashworth, Georgina L. Bennett, Richard Boothroyd, Hannah Cloke, Pauline Delorme, Helen Griffith, Richard Hardy, Laurence Hawker, Stuart McLelland, Jeffrey Neal, Andrew Nicholas, Andrew J. Tatem, Ellie Vahidi, Yinxue Liu, Justin Sheffield, Dan ParsonsDan Parsons, Stephen E. Darby
Precipitation is the most important driver of the hydrological cycle, but it is challenging to estimate it over large scales from satellites and models. Here, we assessed the performance of six global and quasi-global high-resolution precipitation datasets (European Centre for Medium-Range Weather Forecasts (ECMWF) Reanalysis version 5 (ERA5), Climate Hazards group Infrared Precipitation with Stations version 2.0 (CHIRPS), Multi-Source Weighted-Ensemble Precipitation version 2.80 (MSWEP), TerraClimate (TERRA), Climate Prediction Centre Unified version 1.0 (CPCU), and Precipitation Estimation from Remotely Sensed Information using Artificial Neural Networks-Cloud Classification System-Climate Data Record (PERSIANN-CCS-CDR, hereafter PERCCDR) for hydrological modelling globally and quasi-globally. We forced the WBMsed global hydrological model with the precipitation datasets to simulate river discharge from 1983 to 2019 and evaluated the predicted discharge against 1825 hydrological stations worldwide, using a range of statistical methods. The results show large differences in the accuracy of discharge predictions when using different precipitation input datasets. Based on evaluation at annual, monthly, and daily timescales, MSWEP followed by ERA5 demonstrated a higher correlation (CC) and Kling-Gupta efficiency (KGE) than other datasets for more than 50 % of the stations, whilst ERA5 was the second-highest-performing dataset, and it showed the highest error and bias for about 20 % of the stations. PERCCDR is the least-well-performing dataset, with a bias of up to 99 % and a normalised root mean square error of up to 247 %. PERCCDR only show a higher KGE and CC than the other products for less than 10 % of the stations. Even though MSWEP provided the highest performance overall, our analysis reveals high spatial variability, meaning that it is important to consider other datasets in areas where MSWEP showed a lower performance. The results of this study provide guidance on the selection of precipitation datasets for modelling river discharge for a basin, region, or climatic zone as there is no single best precipitation dataset globally. Finally, the large discrepancy in the performance of the datasets in different parts of the world highlights the need to improve global precipitation data products.

Funding

THE EVOLUTION OF GLOBAL FLOOD HAZARD AND RISK [EVOFLOOD]

Natural Environment Research Council

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Hydro-JULES: Next generation land surface and hydrological prediction

Natural Environment Research Council

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The Foreign, Commonwealth and Development Office (grant no. 201880)

History

School

  • Social Sciences and Humanities

Published in

Hydrology and Earth System Sciences

Volume

28

Issue

14

Pages

3099 - 3118

Publisher

Copernicus Publications on behalf of the European Geosciences Union

Version

  • VoR (Version of Record)

Rights holder

© The Authors

Publisher statement

This work is distributed under the Creative Commons Attribution 4.0 License.

Acceptance date

2024-05-29

Publication date

2024-07-17

Copyright date

2024

ISSN

1027-5606

eISSN

1607-7938

Language

  • en

Depositor

Mrs Gretta Cole, impersonating Prof Dan Parsons. Deposit date: 22 August 2024