Uncertainty in Ecohydrological Modeling in an Arid Region Determined with Bayesian Methods.

In arid regions, water resources are a key forcing factor in ecosystem circulation, and soil moisture is the critical link that constrains plant and animal life on the soil surface and underground. Simulation of soil moisture in arid ecosystems is inherently difficult due to high variability. We ass...

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Main Authors: Junjun Yang, Zhibin He, Jun Du, Longfei Chen, Xi Zhu
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2016-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC4786118?pdf=render
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spelling doaj-decff040dae24638bccfa3ae4ac9103d2020-11-25T01:43:06ZengPublic Library of Science (PLoS)PLoS ONE1932-62032016-01-01113e015128310.1371/journal.pone.0151283Uncertainty in Ecohydrological Modeling in an Arid Region Determined with Bayesian Methods.Junjun YangZhibin HeJun DuLongfei ChenXi ZhuIn arid regions, water resources are a key forcing factor in ecosystem circulation, and soil moisture is the critical link that constrains plant and animal life on the soil surface and underground. Simulation of soil moisture in arid ecosystems is inherently difficult due to high variability. We assessed the applicability of the process-oriented CoupModel for forecasting of soil water relations in arid regions. We used vertical soil moisture profiling for model calibration. We determined that model-structural uncertainty constituted the largest error; the model did not capture the extremes of low soil moisture in the desert-oasis ecotone (DOE), particularly below 40 cm soil depth. Our results showed that total uncertainty in soil moisture prediction was improved when input and output data, parameter value array, and structure errors were characterized explicitly. Bayesian analysis was applied with prior information to reduce uncertainty. The need to provide independent descriptions of uncertainty analysis (UA) in the input and output data was demonstrated. Application of soil moisture simulation in arid regions will be useful for dune-stabilization and revegetation efforts in the DOE.http://europepmc.org/articles/PMC4786118?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Junjun Yang
Zhibin He
Jun Du
Longfei Chen
Xi Zhu
spellingShingle Junjun Yang
Zhibin He
Jun Du
Longfei Chen
Xi Zhu
Uncertainty in Ecohydrological Modeling in an Arid Region Determined with Bayesian Methods.
PLoS ONE
author_facet Junjun Yang
Zhibin He
Jun Du
Longfei Chen
Xi Zhu
author_sort Junjun Yang
title Uncertainty in Ecohydrological Modeling in an Arid Region Determined with Bayesian Methods.
title_short Uncertainty in Ecohydrological Modeling in an Arid Region Determined with Bayesian Methods.
title_full Uncertainty in Ecohydrological Modeling in an Arid Region Determined with Bayesian Methods.
title_fullStr Uncertainty in Ecohydrological Modeling in an Arid Region Determined with Bayesian Methods.
title_full_unstemmed Uncertainty in Ecohydrological Modeling in an Arid Region Determined with Bayesian Methods.
title_sort uncertainty in ecohydrological modeling in an arid region determined with bayesian methods.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2016-01-01
description In arid regions, water resources are a key forcing factor in ecosystem circulation, and soil moisture is the critical link that constrains plant and animal life on the soil surface and underground. Simulation of soil moisture in arid ecosystems is inherently difficult due to high variability. We assessed the applicability of the process-oriented CoupModel for forecasting of soil water relations in arid regions. We used vertical soil moisture profiling for model calibration. We determined that model-structural uncertainty constituted the largest error; the model did not capture the extremes of low soil moisture in the desert-oasis ecotone (DOE), particularly below 40 cm soil depth. Our results showed that total uncertainty in soil moisture prediction was improved when input and output data, parameter value array, and structure errors were characterized explicitly. Bayesian analysis was applied with prior information to reduce uncertainty. The need to provide independent descriptions of uncertainty analysis (UA) in the input and output data was demonstrated. Application of soil moisture simulation in arid regions will be useful for dune-stabilization and revegetation efforts in the DOE.
url http://europepmc.org/articles/PMC4786118?pdf=render
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AT zhibinhe uncertaintyinecohydrologicalmodelinginanaridregiondeterminedwithbayesianmethods
AT jundu uncertaintyinecohydrologicalmodelinginanaridregiondeterminedwithbayesianmethods
AT longfeichen uncertaintyinecohydrologicalmodelinginanaridregiondeterminedwithbayesianmethods
AT xizhu uncertaintyinecohydrologicalmodelinginanaridregiondeterminedwithbayesianmethods
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