Abstract

Abstract. River discharge plays an important role in earth's water cycle, but it is difficult to estimate due to un-gauged rivers, human activities and measurement errors. One approach is based on the observed flux and a simple annual water balance model (ignoring human processes) for un-gauged rivers, but it only provides annual mean values which is insufficient for oceanic modelings. Another way is by forcing a land surface model (LSM) with atmospheric conditions. It provides daily values but with uncertainties associated with the models. We use data assimilation techniques by merging the modeled river discharges by the ORCHIDEE (without human processes currently) LSM and the observations from the Global Runoff Data Centre (GRDC) to obtain optimized discharges over the entire basin. The “model systematic errors” and “human impacts” (dam operation, irrigation, etc.) are taken into account by an optimization parameter x (with annual variation), which is applied to correct model intermediate variable runoff and drainage over each sub-watershed. The method is illustrated over the Iberian Peninsula with 27 GRDC stations over the period 1979–1989. ORCHIDEE represents a realistic discharge over the north of the Iberian Peninsula with small model systematic errors, while the model overestimates discharges by 30–150 % over the south and northeast regions where the blue water footprint is large. The normalized bias has been significantly reduced to less than 30 % after assimilation, and the assimilation result is not sensitive to assimilation strategies. This method also corrects the discharge bias for the basins without observations assimilated by extrapolating the correction from adjacent basins. The “correction” increases the interannual variability in river discharge because of the fluctuation of water usage. The E (P−E) of GLEAM (Global Land Evaporation Amsterdam Model, v3.1a) is lower (higher) than the bias-corrected value, which could be due to the different P forcing and probably the missing processes in the GLEAM model.

Highlights

  • River discharge is an essential component of the earth’s water cycles, which can be used as an indicator of the hydrological cycle intensification (Munier et al, 2012)

  • The diagnostics at each Global Runoff Data Centre (GRDC) station are spread to the entire upstream basin which contributes to the errors in discharge downstream

  • The spatial pattern of the absolute bias in river discharge varies with the atmospheric forcing

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Summary

Introduction

River discharge is an essential component of the earth’s water cycles, which can be used as an indicator of the hydrological cycle intensification (Munier et al, 2012). It is important for water resources management, climate studies and ecosystem health over land (Syed et al, 2010; Sichangi et al, 2016) and for providing freshwater inflow to ocean (Dai and Trenberth, 2002). As the ocean models with high spatial resolution (e.g., < 10 km) demonstrate better skills than coarse resolution model (Bricheno et al, 2014; Wang et al, 2018), there is a requirement of high-resolution fresh water fluxes. It is of great interest to estimate largescale river discharge over the long-term at high temporal and spatial resolutions and low uncertainty

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