Uncertainty estimation of hydrological models using bayesian inference methods
Intensive investigations of hydrologic model calibration during the last two decades have resulted in a reasonably good understanding of the issues involved in the process of estimating the numerous parameters employed by these codes. Nevertheless, these classical "batch" calibration...
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ndltd-arizona.edu-oai-arizona.openrepository.com-10150-6268082018-02-28T03:00:41Z Uncertainty estimation of hydrological models using bayesian inference methods Thiemann, Michael Thiemann, Michael Sorooshian, Soroosh Sorooshian, Soroosh Intensive investigations of hydrologic model calibration during the last two decades have resulted in a reasonably good understanding of the issues involved in the process of estimating the numerous parameters employed by these codes. Nevertheless, these classical "batch" calibration approaches require substantial amounts of data to be stable, and the subsequent model forecasts do not usually represent the various imbedded uncertainties. Especially in the light of thousands of uncalibrated catchments in need of model simulations for streamflow predictions, a parameter estimation approach is required that is able to simultaneously perform model calibration and prediction without neglecting the substantial uncertainties in the computed forecasts. This thesis introduces the Bayesian Recursive Estimation scheme (BaRE), a method derived from Bayesian probability computation and adapted for the use in "on-line" hydrologic model calibration. The results of preliminary case studies are presented to illustrate the practicality of this simple and efficient approach. 1999 text Thesis-Reproduction (electronic) http://hdl.handle.net/10150/626808 http://arizona.openrepository.com/arizona/handle/10150/626808 en_US Copyright © is held by the author. Digital access to this material is made possible by the University Libraries, University of Arizona. Further transmission, reproduction or presentation (such as public display or performance) of protected items is prohibited except with permission of the author. The University of Arizona. |
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description |
Intensive investigations of hydrologic model calibration during the last two decades
have resulted in a reasonably good understanding of the issues involved in the process of
estimating the numerous parameters employed by these codes. Nevertheless, these
classical "batch" calibration approaches require substantial amounts of data to be stable,
and the subsequent model forecasts do not usually represent the various imbedded
uncertainties. Especially in the light of thousands of uncalibrated catchments in need of
model simulations for streamflow predictions, a parameter estimation approach is
required that is able to simultaneously perform model calibration and prediction without
neglecting the substantial uncertainties in the computed forecasts. This thesis introduces
the Bayesian Recursive Estimation scheme (BaRE), a method derived from Bayesian
probability computation and adapted for the use in "on-line" hydrologic model
calibration. The results of preliminary case studies are presented to illustrate the
practicality of this simple and efficient approach. |
author2 |
Sorooshian, Soroosh |
author_facet |
Sorooshian, Soroosh Thiemann, Michael Thiemann, Michael |
author |
Thiemann, Michael Thiemann, Michael |
spellingShingle |
Thiemann, Michael Thiemann, Michael Uncertainty estimation of hydrological models using bayesian inference methods |
author_sort |
Thiemann, Michael |
title |
Uncertainty estimation of hydrological models using bayesian inference methods |
title_short |
Uncertainty estimation of hydrological models using bayesian inference methods |
title_full |
Uncertainty estimation of hydrological models using bayesian inference methods |
title_fullStr |
Uncertainty estimation of hydrological models using bayesian inference methods |
title_full_unstemmed |
Uncertainty estimation of hydrological models using bayesian inference methods |
title_sort |
uncertainty estimation of hydrological models using bayesian inference methods |
publisher |
The University of Arizona. |
publishDate |
1999 |
url |
http://hdl.handle.net/10150/626808 http://arizona.openrepository.com/arizona/handle/10150/626808 |
work_keys_str_mv |
AT thiemannmichael uncertaintyestimationofhydrologicalmodelsusingbayesianinferencemethods AT thiemannmichael uncertaintyestimationofhydrologicalmodelsusingbayesianinferencemethods |
_version_ |
1718615132970418176 |