Structural reliability and stochastic finite element methods: State-of-the-art review and evidence-based comparison
Purpose This paper aims to provide a comprehensive review of uncertainty quantification
methods supported by evidence-based comparison studies. Uncertainties are widely …
methods supported by evidence-based comparison studies. Uncertainties are widely …
An adaptive hierarchical sparse grid collocation algorithm for the solution of stochastic differential equations
In recent years, there has been a growing interest in analyzing and quantifying the effects of
random inputs in the solution of ordinary/partial differential equations. To this end, the …
random inputs in the solution of ordinary/partial differential equations. To this end, the …
Stochastic finite element methods for partial differential equations with random input data
The quantification of probabilistic uncertainties in the outputs of physical, biological, and
social systems governed by partial differential equations with random inputs require, in …
social systems governed by partial differential equations with random inputs require, in …
A stochastic collocation method for elliptic partial differential equations with random input data
This work proposes and analyzes a stochastic collocation method for solving elliptic partial
differential equations with random coefficients and forcing terms. These input data are …
differential equations with random coefficients and forcing terms. These input data are …
Adaptive sparse polynomial chaos expansions for uncertainty propagation and sensitivity analysis
G Blatman - 2009 - inis.iaea.org
Mathematical models are widely used in many science disciplines, such as physics, biology
and meteorology. They are aimed at better understanding and explaining real-world …
and meteorology. They are aimed at better understanding and explaining real-world …
Time-dependent generalized polynomial chaos
Generalized polynomial chaos (gPC) has non-uniform convergence and tends to break
down for long-time integration. The reason is that the probability density distribution (PDF) of …
down for long-time integration. The reason is that the probability density distribution (PDF) of …
Multi-element probabilistic collocation method in high dimensions
We combine multi-element polynomial chaos with analysis of variance (ANOVA) functional
decomposition to enhance the convergence rate of polynomial chaos in high dimensions …
decomposition to enhance the convergence rate of polynomial chaos in high dimensions …
Adaptive-sparse polynomial chaos expansion for reliability analysis and design of complex engineering systems
This paper presents an adaptive-sparse polynomial chaos expansion (adaptive-sparse
PCE) method for performing engineering reliability analysis and design. The proposed …
PCE) method for performing engineering reliability analysis and design. The proposed …
Multi-output local Gaussian process regression: Applications to uncertainty quantification
We develop an efficient, Bayesian Uncertainty Quantification framework using a novel treed
Gaussian process model. The tree is adaptively constructed using information conveyed by …
Gaussian process model. The tree is adaptively constructed using information conveyed by …
STOCHASTIC COLLOCATION ALGORITHMS USING 𝓁1-MINIMIZATION
The idea of 𝓁 1-minimization is the basis of the widely adopted compressive sensing
method for function approximation. In this paper, we extend its application to high …
method for function approximation. In this paper, we extend its application to high …