Real-Time Data Assimilation for Operational Ensemble Streamflow Forecasting

Author:

Vrugt Jasper A.1,Gupta Hoshin V.2,Nualláin BreanndánÓ3,Bouten Willem4

Affiliation:

1. Earth and Environmental Sciences Division, Los Alamos National Laboratory, Los Alamos, New Mexico

2. Department of Hydrology and Water Resources, The University of Arizona, Tucson, Arizona

3. Department of Computational Science, University of Amsterdam, Amsterdam, Netherlands

4. Department of Physical Geography and Soil Science, University of Amsterdam, Amsterdam, Netherlands

Abstract

Abstract Operational flood forecasting requires that accurate estimates of the uncertainty associated with model-generated streamflow forecasts be provided along with the probable flow levels. This paper demonstrates a stochastic ensemble implementation of the Sacramento model used routinely by the National Weather Service for deterministic streamflow forecasting. The approach, the simultaneous optimization and data assimilation method (SODA), uses an ensemble Kalman filter (EnKF) for recursive state estimation allowing for treatment of streamflow data error, model structural error, and parameter uncertainty, while enabling implementation of the Sacramento model without major modification to its current structural form. Model parameters are estimated in batch using the shuffled complex evolution metropolis stochastic-ensemble optimization approach (SCEM-UA). The SODA approach was implemented using parallel computing to handle the increased computational requirements. Studies using data from the Leaf River, Mississippi, indicate that forecast performance improvements on the order of 30% to 50% can be realized even with a suboptimal implementation of the filter. Further, the SODA parameter estimates appear to be less biased, which may increase the prospects for finding useful regionalization relationships.

Publisher

American Meteorological Society

Subject

Atmospheric Science

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