| JOURNAL OF HYDROLOGY | 卷:544 |
| Developing and testing a global-scale regression model to quantify mean annual streamflow | |
| Article | |
| Barbarossa, Valerio1  Huijbregts, Mark A. J.1,2  Hendriks, A. Jan1  Beusen, Arthur H. W.3  Clavreul, Julie4  King, Henry4  Schipper, Aafke M.2  | |
| [1] Radboud Univ Nijmegen, Inst Water & Wetland Res, Dept Environm Sci, POB 9010, NL-6500 GL Nijmegen, Netherlands | |
| [2] PBL Netherlands Environm Assessment Agcy, Dept Nat & Rural Areas, POB 303, NL-3720 AH Bilthoven, Netherlands | |
| [3] PBL Netherlands Environm Assessment Agcy, Dept Informat Data & Methodol, POB 303, NL-3720 AH Bilthoven, Netherlands | |
| [4] Safety & Environm Assurance Ctr, Unilever R&D, Colworth Sci Pk, Sharnbrook MK44 1LQ, Beds, England | |
| 关键词: Mean annual discharge; River discharge; Global hydrology; Empirical modelling; Predictions in ungauged basins; Scaling relationships; Model comparison; PCR-GLOBWB; Spatial error model; | |
| DOI : 10.1016/j.jhydrol.2016.11.053 | |
| 来源: Elsevier | |
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【 摘 要 】
Quantifying mean annual flow of rivers (MAF) at ungauged sites is essential for assessments of global water supply, ecosystem integrity and water footprints. MAF can be quantified with spatially explicit process-based models, which might be overly time-consuming and data-intensive for this purpose, or with empirical regression models that predict MAF based on climate and catchment characteristics. Yet, regression models have mostly been developed at a regional scale and the extent to which they can be extrapolated to other regions is not known. In this study, we developed a global-scale regression model for MAF based on a dataset unprecedented in size, using observations of discharge and catchment characteristics from 1885 catchments worldwide, measuring between 2 and 10(6) km(2). In addition, we compared the performance of the regression model with the predictive ability of the spatially explicit global hydrological model PCR-GLOBWB by comparing results from both models to independent measurements. We obtained a regression model explaining 89% of the variance in MAF based on catchment area and catchment averaged mean annual precipitation and air temperature, slope and elevation. The regression model performed better than PCR-GLOBWB for the prediction of MAF, as root-mean-square error (RMSE) values were lower (0.29-0.38 compared to 0.49-0.57) and the modified index of agreement (d) was higher (0.80-0.83 compared to 0.72-0.75). Our regression model can be applied globally to estimate MAF at any point of the river network, thus providing a feasible alternative to spatially explicit process based global hydrological models. (C) 2016 Elsevier B.V. All rights reserved.
【 授权许可】
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| Files | Size | Format | View |
|---|---|---|---|
| 10_1016_j_jhydrol_2016_11_053.pdf | 1104KB |
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