A framework for estimating global-scale river discharge by assimilating
satellite altimetry
Abstract
Understanding spatial and temporal variations in terrestrial waters is
key to assessing the global hydrological cycle. The future Surface Water
and Ocean Topography (SWOT) satellite mission will observe the elevation
and slope of surface waters at <100 m resolution. Methods for
incorporating SWOT measurements into river hydrodynamic models have been
developed to generate spatially and temporally continuous discharge
estimates. However, most of SWOT data assimilation studies have been
performed on a local scale. We developed a novel framework for
estimating river discharge on a global scale by incorporating SWOT
observations into the CaMa-Flood hydrodynamic model. The local ensemble
transform Kalman filter with adaptive local patches was used to
assimilate SWOT observations. We tested the framework using multi-model
runoff forcing and/or inaccurate model parameters represented by
corrupted Manning’s coefficient. Assimilation of virtual SWOT
observations considerably improved river discharge estimates for
continental-scale rivers at high latitudes (>50°) and also
downstream river reaches at low latitudes. High assimilation efficiency
in downstream river reaches was due to both local state correction and
the propagation of corrected hydrodynamic states from upstream river
reaches. Accurate global river discharge estimates were obtained
(Kling–Gupta efficiency [KGE] > 0.90) in river reaches
with > 270 accumulated overpasses per SWOT cycle when no
model error was assumed. Introducing model errors decreased this
accuracy (KGE ≈ 0.85). Therefore, improved hydrodynamic models are
essential for maximizing SWOT information. These synthetic experiments
showed where discharge estimates can be improved using SWOT
observations. Further advances are needed for data assimilation on
global-scale.