FAO AGRIS - International System for Agricultural Science and Technology

Large-sample hydrology: recent progress, guidelines for new datasets and grand challenges

2020

Addor, Nans | Do, Hong X. | Alvarez-Garreton, Camila | Coxon, Gemma | Fowler, Keirnan | Mendoza, Pablo A.


Bibliographic information
Volume 65 Issue 5 Pagination 712 - 725 ISSN 2150-3435
Publisher
Elsevier B.V.
Other Subjects
Streamflow records; Cloud computing; Reproducibility of hydrological experiments; Data uncertainties; Anthropogenic activities; Human interventions; Data standardization
Language
English
Note
NA is supported by the Swiss National Science Foundation (fellowships P2ZHP2_161963 and P400P2_180791). HXD acknowledges support from the Australia Awards Scholarship (ST000HKE6), the University of Adelaide D R Stranks Fellowship and the University of Michigan Research Fellowship (grant number U064474). CAG is funded by FONDECYT postdoctoral grant no. 3170428 and the Center for Climate and Resilience Research (CR2, CONICYT/FONDAP/15110009). GC is supported by NERC MaRIUS: Managing the Risks, Impacts and Uncertainties of droughts and water Scarcity (grant NE/L010399/1). KF acknowledges the support of the Bureau of Meteorology, Australia (TP705654) and the Australian Research Council (LP170100598). PAM acknowledges support from FONDECYT postdoctoral grant No. 3170079 and CONICYT-PIA Project AFB180004.
Type
Journal Article; Text

2024-02-27
MODS
Data Provider
Lookup at Google Scholar
If you notice any incorrect information relating to this record, please contact us at [email protected]