Title of article :
Parameter estimation in stochastic rainfall-runoff models
Author/Authors :
Harpa Jonsdottir، نويسنده , , Henrik Madsen، نويسنده , , Olafur Petur Palsson، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2006
Pages :
15
From page :
379
To page :
393
Abstract :
A parameter estimation method for stochastic rainfall-runoff models is presented. The model considered in the paper is a conceptual stochastic model, formulated in continuous-discrete state space form. The model is small and a fully automatic optimization is, therefore, possible for estimating all the parameters, including the noise terms. The parameter estimation method is a maximum likelihood method (ML) where the likelihood function is evaluated using a Kalman filter technique. The ML method estimates the parameters in a prediction error settings, i.e. the sum of squared prediction error is minimized. For a comparison the parameters are also estimated by an output error method, where the sum of squared simulation error is minimized. The former methodology is optimal for short-term prediction whereas the latter is optimal for simulations. Hence, depending on the purpose it is possible to select whether the parameter values are optimal for simulation or prediction. The data originates from Iceland and the model is designed for Icelandic conditions, including a snow routine for mountainous areas. The model demands only two input data series, precipitation and temperature and one output data series, the discharge. In spite of being based on relatively limited input information, the model performs well and the parameter estimation method is promising for future model development.
Keywords :
Parameter estimation , maximum likelihood , Rainfall-runoff model , Extended Kalman filter , Prediction and simulation , Conceptual stochastic model
Journal title :
Journal of Hydrology
Serial Year :
2006
Journal title :
Journal of Hydrology
Record number :
1098976
Link To Document :
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