The Simplex-Stochastic Collocation (SSC) method is a robust tool used to propagate uncertain input distributions through a computer code. However, it becomes prohibitively expensive for problems with dimensions higher than 5. The main purpose of this paper is to identify bottlenecks, and to improve upon this bad scalability. In order to do so, we propose an alternative interpolation stencil technique based upon the Set-Covering problem, and we integrate the SSC method in the High-Dimensional Model-Reduction framework. In addition, we address the issue of ill-conditioned sample matrices, and we present an analytical map to facilitate uniformly-distributed simplex sampling
Abstract. Recently there has been a growing interest in designing efficient methods for the so-lutio...
The important task of evaluating the impact of random parameters on the output of stochastic ordinar...
This work describes the convergence analysis of a Smolyak-type sparse grid stochastic collocation me...
International audienceThe Simplex-Stochastic Collocation (SSC) method is a robust tool used to propa...
Multi-element uncertainty quantification approaches can robustly resolve the high sensitivities caus...
htmlabstractSubcell resolution has been used in the Finite Volume Method (FVM) to obtain accurate ap...
The file attached to this record is the author's final peer reviewed version. The Publisher's final ...
Abstract. Stochastic collocation methods for approximating the solution of partial differential equa...
We are developing an adaptive sparse grid library tailored for emerg-ing architectures that will all...
Surrogate models for computational simulations are inexpensive input-output approx-imations that all...
Stochastic gradient Markov chain Monte Carlo (SGMCMC) has become a popular method for scalable Bayes...
In many applications of science and engineering, time-or resource-demanding simulation models are of...
In this article, we propose an efficient approach for inverting computationally expensive cumulative...
The sparse grid stochastic collocation method is a new method for solving partial differential equa...
This thesis proposes new analysis tools for simulation models in the presence of data. To achieve a ...
Abstract. Recently there has been a growing interest in designing efficient methods for the so-lutio...
The important task of evaluating the impact of random parameters on the output of stochastic ordinar...
This work describes the convergence analysis of a Smolyak-type sparse grid stochastic collocation me...
International audienceThe Simplex-Stochastic Collocation (SSC) method is a robust tool used to propa...
Multi-element uncertainty quantification approaches can robustly resolve the high sensitivities caus...
htmlabstractSubcell resolution has been used in the Finite Volume Method (FVM) to obtain accurate ap...
The file attached to this record is the author's final peer reviewed version. The Publisher's final ...
Abstract. Stochastic collocation methods for approximating the solution of partial differential equa...
We are developing an adaptive sparse grid library tailored for emerg-ing architectures that will all...
Surrogate models for computational simulations are inexpensive input-output approx-imations that all...
Stochastic gradient Markov chain Monte Carlo (SGMCMC) has become a popular method for scalable Bayes...
In many applications of science and engineering, time-or resource-demanding simulation models are of...
In this article, we propose an efficient approach for inverting computationally expensive cumulative...
The sparse grid stochastic collocation method is a new method for solving partial differential equa...
This thesis proposes new analysis tools for simulation models in the presence of data. To achieve a ...
Abstract. Recently there has been a growing interest in designing efficient methods for the so-lutio...
The important task of evaluating the impact of random parameters on the output of stochastic ordinar...
This work describes the convergence analysis of a Smolyak-type sparse grid stochastic collocation me...