Articles | Volume 28, issue 6
https://doi.org/10.5194/hess-28-1373-2024
https://doi.org/10.5194/hess-28-1373-2024
Technical note
 | 
26 Mar 2024
Technical note |  | 26 Mar 2024

Technical note: Testing the connection between hillslope-scale runoff fluctuations and streamflow hydrographs at the outlet of large river basins

Ricardo Mantilla, Morgan Fonley, and Nicolás Velásquez

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Cited articles

Ahmed, M. I., Stadnyk, T., Pietroniro, A., Awoye, H., Bajracharya, A., Mai, J., Tolson, B. A., Shen, H., Craig, J. R., Gervais, M., Sagan, K., Wruth, S., Koenig, K., Lilhare, R., Déry, S. J., Pokorny, S., Venema, H., Muhammad, A., and Taheri, M.: Learning from hydrological models' challenges: A case study from the Nelson basin model intercomparison project, J. Hydrol., 623, 129820, https://doi.org/10.1016/j.jhydrol.2023.129820, 2023. 
Akter, T., Quevauviller, P., Eisenreich, S. J., and Vaes, G.: Impacts of climate and land use changes on flood risk management for the Schijn River, Belgium, Environ. Sci. Policy, 89, 163–175, https://doi.org/10.1016/j.envsci.2018.07.002, 2018. 
Arnell, N. W. and Lloyd-Hughes, B.: The global-scale impacts of climate change on water resources and flooding under new climate and socio-economic scenarios, Climatic Change, 122, 127–140, https://doi.org/10.1007/s10584-013-0948-4, 2014. 
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Short summary
Hydrologists strive to “Be right for the right reasons” when modeling the hydrologic cycle; however, the datasets available to validate hydrological models are sparse, and in many cases, they comprise streamflow observations at the outlets of large catchments. In this work, we show that matching streamflow observations at the outlet of a large basin is not a reliable indicator of a correct description of the small-scale runoff processes.