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Portland State University

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2012

Streamflow -- Forecasting

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Full-Text Articles in Engineering

Examining The Effectiveness And Robustness Of Sequential Data Assimilation Methods For Quantification Of Uncertainty In Hydrologic Forecasting, Caleb Matthew Dechant, Hamid Moradkhani Apr 2012

Examining The Effectiveness And Robustness Of Sequential Data Assimilation Methods For Quantification Of Uncertainty In Hydrologic Forecasting, Caleb Matthew Dechant, Hamid Moradkhani

Civil and Environmental Engineering Faculty Publications and Presentations

In hydrologic modeling, state-parameter estimation using data assimilation techniques is increasing in popularity. Several studies, using both the ensemble Kalman filter (EnKF) and the particle filter (PF) to estimate both model states and parameters have been published in recent years. Though there is increasing interest and a growing literature in this area, relatively little research has been presented to examine the effectiveness and robustness of these methods to estimate uncertainty. This study suggests that state-parameter estimation studies need to provide a more rigorous testing of these techniques than has previously been presented. With this in mind, this paper presents a …