Mid-Range Streamflow Forecasts Based on Climate Modeling -- Statistical Correction and Evaluation

Mid-range streamflow predictions are extremely important for managing water resources. The ability to provide mid-range (three to six months) streamflow forecasts enables considerable improvements in water resources system operations. The skill and economic value of such forecasts are of great inter...

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Veröffentlicht in:Journal of the American Water Resources Association 2009-04, Vol.45 (2), p.355-368
Hauptverfasser: Ryu, Jae H, Palmer, Richard N, Jeong, Sangman
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creator Ryu, Jae H
Palmer, Richard N
Jeong, Sangman
description Mid-range streamflow predictions are extremely important for managing water resources. The ability to provide mid-range (three to six months) streamflow forecasts enables considerable improvements in water resources system operations. The skill and economic value of such forecasts are of great interest. In this research, output from a general circulation model (GCM) is used to generate hydrologic input for mid-range streamflow forecasts. Statistical procedures including: (1) transformation, (2) correction, (3) observation of ensemble average, (4) improvement of forecast, and (5) forecast skill test are conducted to minimize the error associated with different spatial resolution between the large-scale GCM and the finer-scale hydrologic model and to improve forecast skills. The accuracy of a streamflow forecast generated using a hydrologic model forced with GCM output for the basin was evaluated by forecast skill scores associated with the set of streamflow forecast values in a categorical forecast. Despite the generally low forecast skill score exhibited by the climate forecasting approach, precipitation forecast skill clearly improves when a conditional forecast is performed during the East Asia summer monsoon, June through August.
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subjects accuracy
basins
climate models
climate variability
Earth sciences
Earth, ocean, space
Exact sciences and technology
hydrologic models
Hydrology. Hydrogeology
methodology
monsoon
monsoon season
precipitation
prediction
statistical models
stream flow
streamflow forecast
water management
Water resources
title Mid-Range Streamflow Forecasts Based on Climate Modeling -- Statistical Correction and Evaluation
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