In this work, we propose a new collocation method for uncertainty quantification in strongly nonlinear problems. Based on polynomial construction, the traditional probabilistic collocation method (PCM) approximates the model output response, which is a function of the random input parameter, from the Eulerian point of view in specific locations. In some cases, especially when the advection dominates, the model response has a strongly nonlinear profile with a discontinuous shock or large gradient. This nonlinearity in the space domain is then translated to nonlinearity in the random parametric domain, which causes nonphysical oscillation and inaccurate estimation using the traditional PCM. To address this issue, a new location-based transfor...
efficient uncertainty quantification in computational fluid dynamics. G.J.A. Loeven1,2 and H. Bijl3 ...
In this paper a Two Step approach with Chaos Collocation for efficient uncertainty quantification in...
We present a multilevel Monte Carlo (MLMC) method for the uncertainty quantification of variably sat...
The probabilistic collocation method (PCM) is widely used for uncertainty quantification and sensiti...
The probabilistic collocation method (PCM) has drawn wide attention for stochastic analysis recently...
The traditional probabilistic collocation method (PCM) uses either polynomial chaos expansion (PCE) ...
In this study, we present an efficient approach, called the probabilistic collocation method (PCM), ...
Abstract: The probabilistic collocation method (PCM) based on the Karhunen-Loevè expansion (KLE) and...
The characterization of flow in subsurface porous media is associated with high uncertainty. To bett...
We combine multi-element polynomial chaos with analysis of variance (ANOVA) functional decomposition...
A stochastic approach to conditional simulation of flow in randomly heterogeneous media is proposed ...
Owing to the spatial variability of the media properties, uncertainty quantification for subsurface ...
In this paper a Two-Step approach is presented for uncertainty quantification for expensive problems...
This paper deals with the computation of some statistics of the solutions of linear and non linear P...
Non-intrusive polynomial chaos expansion (PCE) and stochastic collocation (SC) meth-ods are attracti...
efficient uncertainty quantification in computational fluid dynamics. G.J.A. Loeven1,2 and H. Bijl3 ...
In this paper a Two Step approach with Chaos Collocation for efficient uncertainty quantification in...
We present a multilevel Monte Carlo (MLMC) method for the uncertainty quantification of variably sat...
The probabilistic collocation method (PCM) is widely used for uncertainty quantification and sensiti...
The probabilistic collocation method (PCM) has drawn wide attention for stochastic analysis recently...
The traditional probabilistic collocation method (PCM) uses either polynomial chaos expansion (PCE) ...
In this study, we present an efficient approach, called the probabilistic collocation method (PCM), ...
Abstract: The probabilistic collocation method (PCM) based on the Karhunen-Loevè expansion (KLE) and...
The characterization of flow in subsurface porous media is associated with high uncertainty. To bett...
We combine multi-element polynomial chaos with analysis of variance (ANOVA) functional decomposition...
A stochastic approach to conditional simulation of flow in randomly heterogeneous media is proposed ...
Owing to the spatial variability of the media properties, uncertainty quantification for subsurface ...
In this paper a Two-Step approach is presented for uncertainty quantification for expensive problems...
This paper deals with the computation of some statistics of the solutions of linear and non linear P...
Non-intrusive polynomial chaos expansion (PCE) and stochastic collocation (SC) meth-ods are attracti...
efficient uncertainty quantification in computational fluid dynamics. G.J.A. Loeven1,2 and H. Bijl3 ...
In this paper a Two Step approach with Chaos Collocation for efficient uncertainty quantification in...
We present a multilevel Monte Carlo (MLMC) method for the uncertainty quantification of variably sat...