2013
DOI: 10.1002/wrcr.20169
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Assimilation of stream discharge for flood forecasting: The benefits of accounting for routing time lags

Abstract: [1] General filtering approaches in hydrologic data assimilation, such as the ensemble Kalman filter (EnKF), are based on the assumption that uncertainty of the current background prediction can be reduced by correcting errors in the state variables at the same time step. However, this assumption may not be valid when assimilating stream discharge into hydrological models to correct soil moisture storage due to the time lag between the soil moisture and the discharge. In this paper, we explore the utility of a… Show more

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Cited by 50 publications
(51 citation statements)
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“…Localization not only provides better results, but also reduces the computational cost, as only a section of the full state is used within the filter. Similar localization approaches have been reported in hydrological models with discharge involved (Li et al, 2013) as well as in other models (e.g. Kang et al, 2011).…”
Section: Discussionsupporting
confidence: 80%
“…Localization not only provides better results, but also reduces the computational cost, as only a section of the full state is used within the filter. Similar localization approaches have been reported in hydrological models with discharge involved (Li et al, 2013) as well as in other models (e.g. Kang et al, 2011).…”
Section: Discussionsupporting
confidence: 80%
“…The ensemble Kalman smoother (EnKS) is a common example of an asynchronous method (e.g. Evensen and Van Leeuwen, 2000;Dunne and Entekhabi, 2006;Crow and Ryu, 2009;Li et al, 2013). The EnKS extends the EnKF by introducing additional information by propagating the contribution of future measurements backward in time.…”
Section: Introductionmentioning
confidence: 99%
“…Adaptive localization is not only easily implemented in the ETKF, it also automatically ensures that the cross-process correlation is localized differently than the intra-process correlation, making it particularly suitable for data assimilation in coupled surfacesubsurface models. Others have encountered the problem with cross-process correlation, notably Zupanski (2013), Li et al (2013) and Wanders et al (2014), although no definitive solution to the problem has been presented. Adaptive localization, such as the method applied in this study, may be one possible solution.…”
Section: Discussionmentioning
confidence: 99%