This is the published version. Copyright American Geophysical Union[1] A new stochastic approach proposed by Zhang and Lu (2004), called the Karhunen-Loeve decomposition-based moment equation (KLME), has been extended to solving nonlinear, unconfined flow problems in randomly heterogeneous aquifers. This approach is on the basis of an innovative combination of Karhunen-Loeve decomposition, polynomial expansion, and perturbation methods. The random log-transformed hydraulic conductivity field (lnKS) is first expanded into a series in terms of orthogonal Gaussian standard random variables with their coefficients obtained as the eigenvalues and eigenfunctions of the covariance function of lnKS. Next, head h is decomposed as a perturbation expa...
This paper presents non-intrusive, efficient stochastic approaches for predicting uncertainties asso...
It is accepted that digital models simplify the physical reality that is the object of the modeling....
Groundwater flow models are usually subject to uncertainty as a consequence of the random representa...
This is the published version. Copyright American Geophysical Union[1] A new stochastic approach pro...
In this study, the KLME approach, a moment-equation approach based on the Karhunen-Loeve decompositi...
This is the published version. Copyright American Geophysical Union[1] A new approach has been devel...
A new approach has been developed for solving solute transport problems in randomly heterogeneous me...
Subsurface formations are of large scales and are inherently heterogeneous at a multiplicity of sca...
A stochastic approach to conditional simulation of flow in randomly heterogeneous media is proposed ...
In this paper we develop a Stochastic Collocation Method (SCM) for flow in randomly heterogeneous po...
In this study, we present an efficient approach, called the probabilistic collocation method (PCM), ...
We leverage on information theory to assess the fidelity of approximated numerical stochastic ground...
Non-local stochastic moment equations are used successfully to analyze groundwater flow in randomly ...
In this dissertation, we focus on the uncertainty quantification problems where the goal is to sampl...
Abstract. In this paper we develop a Stochastic Collocation Method (SCM) for flow in randomly hetero...
This paper presents non-intrusive, efficient stochastic approaches for predicting uncertainties asso...
It is accepted that digital models simplify the physical reality that is the object of the modeling....
Groundwater flow models are usually subject to uncertainty as a consequence of the random representa...
This is the published version. Copyright American Geophysical Union[1] A new stochastic approach pro...
In this study, the KLME approach, a moment-equation approach based on the Karhunen-Loeve decompositi...
This is the published version. Copyright American Geophysical Union[1] A new approach has been devel...
A new approach has been developed for solving solute transport problems in randomly heterogeneous me...
Subsurface formations are of large scales and are inherently heterogeneous at a multiplicity of sca...
A stochastic approach to conditional simulation of flow in randomly heterogeneous media is proposed ...
In this paper we develop a Stochastic Collocation Method (SCM) for flow in randomly heterogeneous po...
In this study, we present an efficient approach, called the probabilistic collocation method (PCM), ...
We leverage on information theory to assess the fidelity of approximated numerical stochastic ground...
Non-local stochastic moment equations are used successfully to analyze groundwater flow in randomly ...
In this dissertation, we focus on the uncertainty quantification problems where the goal is to sampl...
Abstract. In this paper we develop a Stochastic Collocation Method (SCM) for flow in randomly hetero...
This paper presents non-intrusive, efficient stochastic approaches for predicting uncertainties asso...
It is accepted that digital models simplify the physical reality that is the object of the modeling....
Groundwater flow models are usually subject to uncertainty as a consequence of the random representa...