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Reliability of Semiarid Flash Flood Modeling Using Bayesian Framework

Author:
Mohsen Pourreza-Bilondi
,
S. Zahra Samadi
,
Ali-Mohammad Akhoond-Ali
,
بیژن قهرمان
,
Bijan Ghahraman
Year
: 2016
Abstract: A case study examining Bayesian techniques for assessing parameter and predictive uncertainty of semiarid flash flood events is

presented here. The focus is on testing a fully distributed rainfall-runoff model (i.e., AFFDEF) linked with Markov chain Monte Carlo

(MCMC) samplers to simulate four semiarid flash flood events with varying rainfall durations (<24 h) and amounts (>20 mm). MCMC

samplers showed consistent behaviors with the a priori assumption and successfully improved performances on complex and multivariate

search problems of semiarid flood simulation over the Abol-Abbas watershed, Iran. Analysis suggests that parameters associated with infiltration and interception capacity along with the contributing area threshold for the digital river network were the key model parameters

and were more influential on the shape and volume of the flood hydrograph. Model predictive uncertainty was heavily dominated by error

and bias in the soil water storage capacity, which reflects inadequate representation of the upper soil zone processes in the AFFDEF distributed model. Overall, the modeling results revealed that a fat-tailed Gaussian distribution using the standard least-squares (SLS) error

assumption yielded improved estimates of parameter and predictive uncertainty for the semiarid flood events. This case study emphasizes

the importance of proper statistical representation of the residual error distribution as a basis to improve parameter and predictive

uncertainty. DOI: 10.1061/(ASCE)HE.1943-5584.0001482.
URI: http://libsearch.um.ac.ir:80/fum/handle/fum/3358954
Keyword(s): Flash flood modeling,Parameter and predictive uncertainty,Markov chain Monte Carlo sampler,Semiarid watershed
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    Reliability of Semiarid Flash Flood Modeling Using Bayesian Framework

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contributor authorMohsen Pourreza-Bilondien
contributor authorS. Zahra Samadien
contributor authorAli-Mohammad Akhoond-Alien
contributor authorبیژن قهرمانen
contributor authorBijan Ghahramanfa
date accessioned2020-06-06T13:32:16Z
date available2020-06-06T13:32:16Z
date issued2016
identifier urihttp://libsearch.um.ac.ir:80/fum/handle/fum/3358954
description abstractA case study examining Bayesian techniques for assessing parameter and predictive uncertainty of semiarid flash flood events is

presented here. The focus is on testing a fully distributed rainfall-runoff model (i.e., AFFDEF) linked with Markov chain Monte Carlo

(MCMC) samplers to simulate four semiarid flash flood events with varying rainfall durations (<24 h) and amounts (>20 mm). MCMC

samplers showed consistent behaviors with the a priori assumption and successfully improved performances on complex and multivariate

search problems of semiarid flood simulation over the Abol-Abbas watershed, Iran. Analysis suggests that parameters associated with infiltration and interception capacity along with the contributing area threshold for the digital river network were the key model parameters

and were more influential on the shape and volume of the flood hydrograph. Model predictive uncertainty was heavily dominated by error

and bias in the soil water storage capacity, which reflects inadequate representation of the upper soil zone processes in the AFFDEF distributed model. Overall, the modeling results revealed that a fat-tailed Gaussian distribution using the standard least-squares (SLS) error

assumption yielded improved estimates of parameter and predictive uncertainty for the semiarid flood events. This case study emphasizes

the importance of proper statistical representation of the residual error distribution as a basis to improve parameter and predictive

uncertainty. DOI: 10.1061/(ASCE)HE.1943-5584.0001482.
en
languageEnglish
titleReliability of Semiarid Flash Flood Modeling Using Bayesian Frameworken
typeJournal Paper
contenttypeExternal Fulltext
subject keywordsFlash flood modelingen
subject keywordsParameter and predictive uncertaintyen
subject keywordsMarkov chain Monte Carlo sampleren
subject keywordsSemiarid watersheden
journal titleJournal of Hydrologic Engineering - ASCEfa
pages16-Jan
journal volume0
journal issue0
identifier linkhttps://profdoc.um.ac.ir/paper-abstract-1059715.html
identifier articleid1059715
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