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Probabilistic flood forecasting for a mountainous headwater catchment using a nonparametric stochastic dynamic approach
Authors:Alexandre Cunha Costa  Axel Bronstert  David Kneis
Institution:1. University of Potsdam, Institute of Earth and Environmental Sciences , Karl-Liebknecht-Str. 24/25, D-14476 , Potsdam , Germany cunhacos@uni-potsdam.de;3. University of Potsdam, Institute of Earth and Environmental Sciences , Karl-Liebknecht-Str. 24/25, D-14476 , Potsdam , Germany
Abstract:Abstract

Hydrological models are commonly used to perform real-time runoff forecasting for flood warning. Their application requires catchment characteristics and precipitation series that are not always available. An alternative approach is nonparametric modelling based only on runoff series. However, the following questions arise: Can nonparametric models show reliable forecasting? Can they perform as reliably as hydrological models? We performed probabilistic forecasting one, two and three hours ahead for a runoff series, with the aim of ascribing a probability density function to predicted discharge using time series analysis based on stochastic dynamics theory. The derived dynamic terms were compared to a hydrological model, LARSIM. Our procedure was able to forecast within 95% confidence interval 1-, 2- and 3-h ahead discharge probability functions with about 1.40 m3/s of range and relative errors (%) in the range –30; 30]. The LARSIM model and the best nonparametric approaches gave similar results, but the range of relative errors was larger for the nonparametric approaches.

Editor D. Koutsoyiannis; Associate editor K. Hamed

Citation Costa, A.C., Bronstert, A. and Kneis, D., 2012. Probabilistic flood forecasting for a mountainous headwater catchment using a nonparametric stochastic dynamic approach. Hydrological Sciences Journal, 57 (1), 10–25.
Keywords:streamflow probabilistic forecasting  time series analysis  stochastic dynamical systems  parametric and nonparametric comparison
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