Title of article
Hydrological data assimilation with the Ensemble Square-Root-Filter: Use of streamflow observations to update model states for real-time flash flood forecasting
Author/Authors
He Chena، نويسنده , , Dawen Yanga، نويسنده , , Yang Hongb، نويسنده , , c، نويسنده , , Jonathan J. Gourleyd، نويسنده , , Yu Zhangb، نويسنده , , c، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2013
Pages
12
From page
209
To page
220
Abstract
The objective of the study is to evaluate the potential of a data assimilation system for real-time flash flood forecasting over small watersheds by updating model states. To this end, the Ensemble Square-Root-Filter (EnSRF) based on the Ensemble Kalman Filter (EnKF) technique was coupled to a widely used conceptual rainfall-runoff model called HyMOD. Two small watersheds susceptible to flash flooding from America and China were selected in this study. The modeling and observational errors were considered in the framework of data assimilation, followed by an ensemble size sensitivity experiment. Once the appropriate model error and ensemble size was determined, a simulation study focused on the performance of a data assimilation system, based on the correlation between streamflow observation and model states, was conducted. The EnSRF method was implemented within HyMOD and results for flash flood forecasting were analyzed, where the calibrated streamflow simulation without state updating was treated as the benchmark or nature run. Results for twenty-four flash-flood events in total from the two watersheds indicated that the data assimilation approach effectively improved the predictions of peak flows and the hydrographs in general. This study demonstrated the benefit and efficiency of implementing data assimilation into a hydrological model to improve flash flood forecasting over small, instrumented basins with potential application to real-time alert systems.
Keywords
Data assimilation , Rainfall–runoff model , Ensemble Kalman filter , Ensemble Square-Root-Filter , Flash flood forecast
Journal title
Advances in Water Resources
Serial Year
2013
Journal title
Advances in Water Resources
Record number
1272770
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