Title of article :
A Bayesian combination method of flood models: Principles and application results
Author/Authors :
Markus Niggli، نويسنده , , André Musy، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2005
Pages :
18
From page :
110
To page :
127
Abstract :
Instead of attempting to find the “best” flood estimation method, we propose a Bayesian methodology that combines several existing models. A common problem with flood estimation is that no single model performs better than the others for all types of catchments and under all circumstances. Moreover, if complementary, each model captures only a part of the information available for prediction. A combination seems therefore a logical approach. In this paper, we propose a Bayesian solution: a prior density of the “true” flood quantile for a given return period is updated using successive likelihood functions, involving at each step a different flood estimation model. The implementation is straightforward in the normal-linear case, where both the prior density and the likelihood functions are normally distributed and where the relationship between the modelʹs estimates and the “true” values of the flood quantile is linear. This can be generally achieved with an appropriate transformation of the flood quantiles. The parameters of each likelihood function are either estimated judgmentally or by linear regression, using a joint sample of observed quantiles and the corresponding model estimation. Under the above-mentioned assumptions, the posterior distribution is normal with expectancy being a linear combination of the prior estimate and the different models’ estimates. In order to show the potential of the combination method, an example with three different flood estimation methods for Western Switzerland is presented. The resulting combination is an interesting tool giving preference to different models, depending on the catchment size and on the availability of flood data at the site of interest. Moreover, it provides a posterior variance of the quantity of interest that is as small or smaller than the one of the “best” single model.
Keywords :
Bayes theorem , Flood regionalization , Weighted least square regression , Combining models
Journal title :
Agricultural Water Management
Serial Year :
2005
Journal title :
Agricultural Water Management
Record number :
1322518
Link To Document :
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