In this work, a computationally efficient Bayesian framework for the reduction and characterization of parametric uncertainty in computationally demanding environmental 3-D numerical models has been developed. The framework is based on the combined application of the Stochastic Response Surface Method (SRSM, which generates accurate and computationally efficient statistically equivalent reduced models) and the Markov Chain Monte Carlo method. The application selected to demonstrate this framework involves steady state groundwater flow at the U.S. Department of Energy Savannah River Site General Separations Area, modeled using the Subsurface Flow And Contaminant Transport (FACT) code. Input parameter uncertainty, based initially on expert op...
Probabilistic risk assessment of groundwater contamination requires us to incorporate large and dive...
ABSTRACT Uncertainty estimation analysis has emerged as a fundamental study to understand the effect...
In the field of underground radioactive waste disposal, complex computer models are used to describe...
[1] A methodology to determine the uncertainty associated with the delineation of well capture zones...
A methodology to determine the uncertainty associated with the delineation of well capture zones in ...
We explore the way in which uncertain descriptions of aquifer heterogeneity and groundwater flow imp...
The characterization of flow in subsurface porous media is associated with high uncertainty. To bett...
Uncertainty analysis (UA) has received substantial attention in water resources during the last deca...
Models predicting the fate of water and dissolved chemicals in vegetated soils are required for a wi...
It is accepted that digital models simplify the physical reality that is the object of the modeling....
This paper presents a Bayesian Monte Carlo method for evaluating the uncertainty in the delineation ...
Abstract The typical modeling approach to groundwater management relies on the combination of optimi...
Groundwater is a major source of water supply, and aquifers form major storage reservoirs as well as...
Abstract: Throughout the last decades uncertainty analysis has become an essential part of environme...
We propose a framework that combines simulation optimization with Bayesian decision analysis to eval...
Probabilistic risk assessment of groundwater contamination requires us to incorporate large and dive...
ABSTRACT Uncertainty estimation analysis has emerged as a fundamental study to understand the effect...
In the field of underground radioactive waste disposal, complex computer models are used to describe...
[1] A methodology to determine the uncertainty associated with the delineation of well capture zones...
A methodology to determine the uncertainty associated with the delineation of well capture zones in ...
We explore the way in which uncertain descriptions of aquifer heterogeneity and groundwater flow imp...
The characterization of flow in subsurface porous media is associated with high uncertainty. To bett...
Uncertainty analysis (UA) has received substantial attention in water resources during the last deca...
Models predicting the fate of water and dissolved chemicals in vegetated soils are required for a wi...
It is accepted that digital models simplify the physical reality that is the object of the modeling....
This paper presents a Bayesian Monte Carlo method for evaluating the uncertainty in the delineation ...
Abstract The typical modeling approach to groundwater management relies on the combination of optimi...
Groundwater is a major source of water supply, and aquifers form major storage reservoirs as well as...
Abstract: Throughout the last decades uncertainty analysis has become an essential part of environme...
We propose a framework that combines simulation optimization with Bayesian decision analysis to eval...
Probabilistic risk assessment of groundwater contamination requires us to incorporate large and dive...
ABSTRACT Uncertainty estimation analysis has emerged as a fundamental study to understand the effect...
In the field of underground radioactive waste disposal, complex computer models are used to describe...