Regional Low Flow Hydrology: Model Development and Evaluation
Low flows result from the interplay of climatic variability and catchment storage dynamics, but it is unclear which of these variables is more relevant for explaining low flow spatial patterns. Here, we develop a new conceptual model that integrates process‐based hydrological knowledge with statisti...
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Veröffentlicht in: | Water resources research 2024-02, Vol.60 (2), p.n/a |
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Sprache: | eng |
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Zusammenfassung: | Low flows result from the interplay of climatic variability and catchment storage dynamics, but it is unclear which of these variables is more relevant for explaining low flow spatial patterns. Here, we develop a new conceptual model that integrates process‐based hydrological knowledge with statistics and test it for 1,400 Brazilian catchments. Through comparative hydrology, we isolate the low flow generating mechanisms and estimate their components using linear model trees. The model explains 58% of the spatial variance in 7‐day minimum annual flows (Qmin) based on climate and catchment characteristics. The primary Qmin controls depend on the spatial scale of analysis. Catchment characteristics govern Qmin up to the continental scale (107 km2), where their relative importance matches that of climate. At subcontinental scales, catchment characteristics are twice as important as climate in predicting Qmin, suggesting that low flows are governed by the catchment's capacity to attenuate the climatic variability through water storage. Geological properties are the most important catchment characteristics, particularly bedrock type, lithology and topographic slope, determining streamflow recession rates in the dry season. Soil properties, primarily soil class and depth, are half as important as geology. Climate impacts Qmin mainly through mean annual rainfall minus evaporation, representing the potential groundwater recharge, while dry‐season length has the lowest impact. These results hold mainly for highly seasonal and snow‐free climates. Low flow hydrology that combines statistics with process understanding offers a promising framework for understanding regional low flow generating mechanisms and could support other estimation models than that presented here.
Plain Language Summary
Water availability in the dry season depends mainly on a combination of water storage, rainfall and evaporation variability between years. However, the relative importance of catchment characteristics and climatic variability for the regional patterns of low flows remains unclear. In this study, we develop a new method that takes advantage of machine learning and process‐based hydrology to shed light on the main controls of low flows in Brazilian rivers. We find that the relative importance of climate and catchment characteristics in generating low flows depends on the spatial scale of analysis. At local and regional scales, catchment characteristics are twice as important as clim |
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ISSN: | 0043-1397 1944-7973 |
DOI: | 10.1029/2023WR035063 |