Coupled problems with various combinations of multiple physics, scales, and domains are found in numerous areas of science and engineering. A key challenge in the formulation and implementation of corresponding coupled numerical models is to facilitate the communication of information across physics, scale, and domain interfaces, as well as between the iterations of solvers used for response computations. In a probabilistic context, any information that is to be communicated between subproblems or iterations should be characterized by an appropriate probabilistic representation. Although the number of sources of uncertainty can be expected to be large in most coupled problems, our contention is that exchanged probabilistic information ofte...
International audienceIn this paper we discuss about the features of a novel numerical method based ...
Workshop du projet ANR "Advanced methods using stochastic modeling in high dimension for uncertainty...
We investigate the low-dimensional structure of deterministic transformations between random variabl...
Coupled problems with various combinations of multiple physics, scales, and domains are found in num...
We present a computational framework based on stochastic expansion methods for the efficient propaga...
Uncertainty quantification of multiphysics systems represents numerous mathematical and computationa...
Uncertainty quantification of multiphysics systems represents numerous mathematical and computationa...
peer reviewedWe address the curse of dimensionality in methods for solving stochastic coupled proble...
This paper presents a probabilistic upscaling of mechanics models. A reduced-order probabilistic mod...
This paper presents a generic high dimensional model representation (HDMR) method for approximating ...
A plethora of computational techniques have been developed for computing quantities of interest in “...
A realistic analysis and design of physical systems must take into account uncertain-ties contribute...
We address an important research area in stochastic multiscale modeling, namely, the propagation of ...
This paper presents an improved dimension reduction (IDR) method for structural ran-dom field uncert...
Scientists and engineers use computer simulations to study relationships between a physical model's ...
International audienceIn this paper we discuss about the features of a novel numerical method based ...
Workshop du projet ANR "Advanced methods using stochastic modeling in high dimension for uncertainty...
We investigate the low-dimensional structure of deterministic transformations between random variabl...
Coupled problems with various combinations of multiple physics, scales, and domains are found in num...
We present a computational framework based on stochastic expansion methods for the efficient propaga...
Uncertainty quantification of multiphysics systems represents numerous mathematical and computationa...
Uncertainty quantification of multiphysics systems represents numerous mathematical and computationa...
peer reviewedWe address the curse of dimensionality in methods for solving stochastic coupled proble...
This paper presents a probabilistic upscaling of mechanics models. A reduced-order probabilistic mod...
This paper presents a generic high dimensional model representation (HDMR) method for approximating ...
A plethora of computational techniques have been developed for computing quantities of interest in “...
A realistic analysis and design of physical systems must take into account uncertain-ties contribute...
We address an important research area in stochastic multiscale modeling, namely, the propagation of ...
This paper presents an improved dimension reduction (IDR) method for structural ran-dom field uncert...
Scientists and engineers use computer simulations to study relationships between a physical model's ...
International audienceIn this paper we discuss about the features of a novel numerical method based ...
Workshop du projet ANR "Advanced methods using stochastic modeling in high dimension for uncertainty...
We investigate the low-dimensional structure of deterministic transformations between random variabl...