Title of article
Bayesian analysis of input uncertainty in hydrological modeling: 2. Application
Author/Authors
Kuczera، George نويسنده , , Kavetski، Dmitri نويسنده , , Franks، Stewart W. نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2006
Pages
-3407
From page
3408
To page
0
Abstract
The Bayesian total error analysis (BATEA) methodology directly addresses both input and output errors in hydrological modeling, requiring the modeler to make explicit, rather than implicit, assumptions about the likely extent of data uncertainty. This study considers a BATEA assessment of two North American catchments: (1) French Broad River and (2) Potomac basins. It assesses the performance of the conceptual Variable Infiltration Capacity (VIC) model with and without accounting for input (precipitation) uncertainty. The results show the considerable effects of precipitation errors on the predicted hydrographs (especially the prediction limits) and on the calibrated parameters. In addition, the performance of BATEA in the presence of severe model errors is analyzed. While BATEA allows a very direct treatment of input uncertainty and yields some limited insight into model errors, it requires the specification of valid error models, which are currently poorly understood and require further work. Moreover, it leads to computationally challenging highly dimensional problems. For some types of models, including the VIC implemented using robust numerical methods, the computational cost of BATEA can be reduced using Newton-type methods.
Keywords
Parameter estimation , rainfall uncertainty , Rainfall-runoff models
Journal title
Water Resources Research
Serial Year
2006
Journal title
Water Resources Research
Record number
79510
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