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Global Reconstruction of Naturalized River Flows at 2.94 Million Reaches.
Lin, Peirong; Pan, Ming; Beck, Hylke E; Yang, Yuan; Yamazaki, Dai; Frasson, Renato; David, Cédric H; Durand, Michael; Pavelsky, Tamlin M; Allen, George H; Gleason, Colin J; Wood, Eric F.
Afiliación
  • Lin P; Department of Civil and Environmental Engineering Princeton University Princeton NJ USA.
  • Pan M; Department of Civil and Environmental Engineering Princeton University Princeton NJ USA.
  • Beck HE; Department of Civil and Environmental Engineering Princeton University Princeton NJ USA.
  • Yang Y; Department of Civil and Environmental Engineering Princeton University Princeton NJ USA.
  • Yamazaki D; State Key Laboratory of Hydroscience and Engineering, Department of Hydraulic Engineering Tsinghua University Beijing China.
  • Frasson R; Institute of Industrial Science The University of Tokyo Tokyo Japan.
  • David CH; School of Earth Sciences The Ohio State University Columbus OH USA.
  • Durand M; Jet Propulsion Laboratory California Institute of Technology Pasadena CA USA.
  • Pavelsky TM; School of Earth Sciences The Ohio State University Columbus OH USA.
  • Allen GH; Department of Geological Sciences University of North Carolina at Chapel Hill Chapel Hill NC USA.
  • Gleason CJ; Department of Geography Texas A&M University College Station TX USA.
  • Wood EF; Department of Civil and Environmental Engineering University of Massachusetts Amherst Amherst MA USA.
Water Resour Res ; 55(8): 6499-6516, 2019 Aug.
Article en En | MEDLINE | ID: mdl-31762499
ABSTRACT
Spatiotemporally continuous global river discharge estimates across the full spectrum of stream orders are vital to a range of hydrologic applications, yet they remain poorly constrained. Here we present a carefully designed modeling effort (Variable Infiltration Capacity land surface model and Routing Application for Parallel computatIon of Discharge river routing model) to estimate global river discharge at very high resolutions. The precipitation forcing is from a recently published 0.1° global product that optimally merged gauge-, reanalysis-, and satellite-based data. To constrain runoff simulations, we use a set of machine learning-derived, global runoff characteristics maps (i.e., runoff at various exceedance probability percentiles) for grid-by-grid model calibration and bias correction. To support spaceborne discharge studies, the river flowlines are defined at their true geometry and location as much as possible-approximately 2.94 million vector flowlines (median length 6.8 km) and unit catchments are derived from a high-accuracy global digital elevation model at 3-arcsec resolution (~90 m), which serves as the underlying hydrography for river routing. Our 35-year daily and monthly model simulations are evaluated against over 14,000 gauges globally. Among them, 35% (64%) have a percentage bias within ±20% (±50%), and 29% (62%) have a monthly Kling-Gupta Efficiency ≥0.6 (0.2), showing data robustness at the scale the model is assessed. This reconstructed discharge record can be used as a priori information for the Surface Water and Ocean Topography satellite mission's discharge product, thus named "Global Reach-level A priori Discharge Estimates for Surface Water and Ocean Topography". It can also be used in other hydrologic applications requiring spatially explicit estimates of global river flows.

Texto completo: 1 Bases de datos: MEDLINE Tipo de estudio: Prognostic_studies Idioma: En Revista: Water Resour Res Año: 2019 Tipo del documento: Article

Texto completo: 1 Bases de datos: MEDLINE Tipo de estudio: Prognostic_studies Idioma: En Revista: Water Resour Res Año: 2019 Tipo del documento: Article