2019
DOI: 10.1016/j.jhydrol.2019.124221
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Evaluating the spatial scaling effect of baseflow and baseflow nonpoint source pollution in a nested watershed

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Cited by 17 publications
(2 citation statements)
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“…It is worth noting that the weak explanatory power of elevation observed in this study may be attributed to the influence of spatial scale effects on identifying influential factors [65,66]. Shen et al [31] reported elevation as the predominant driver of spatial variance in the nutrient budget within the TGRA.…”
Section: Cost-effectiveness Of Bmp Scenariosmentioning
confidence: 62%
“…It is worth noting that the weak explanatory power of elevation observed in this study may be attributed to the influence of spatial scale effects on identifying influential factors [65,66]. Shen et al [31] reported elevation as the predominant driver of spatial variance in the nutrient budget within the TGRA.…”
Section: Cost-effectiveness Of Bmp Scenariosmentioning
confidence: 62%
“…It not only plays a critical role in maintaining the basic ecological function of a river (Shao et al, 2020; Stoelzle et al, 2020), ensuring access to safe water (Halford & Mayer, 2000) in the dry season, but is also a vital component of river runoff during the high‐flow period and storm runoff process (Donn et al, 2012). Baseflow quantification is one of the most common tasks in water resource assessment (Chen & Teegavarapu, 2020; Rumsey et al, 2015) and optimal allocation (Longobardi et al, 2016), non‐point source pollution quantification (Fisher et al, 2010; He & Lu, 2021; Schilling & Zhang, 2004; Zhu et al, 2019), control of river algal blooms and salinity (Lemley et al, 2020; Santhi et al, 2008), and watershed hydrological and water quality modelling (Zhang et al, 2017).…”
Section: Introductionmentioning
confidence: 99%