We develop a new fuzzy arithmetic framework for efficient possibilistic uncertainty quantification. The considered application is an edge detection task with the goal to identify interfaces of blurred images. In our case, these represent realisations of composite materials with possibly very many inclusions. The proposed algorithm can be seen as computational homogenisation and results in a parameter dependent representation of composite structures. For this, many samples for a linear elasticity problem have to be computed, which is significantly sped up by a highly accurate low-rank tensor surrogate. To ensure the continuity of the underlying effective material tensor map, an appropriate diffeomorphism is constructed to generate a family o...
The present study is concerned with a numerical prediction of uncertainties in the macroscopic mecha...
Design of new materials is quite a difficult task owing to various time and length scales and affili...
We apply a derivative-free optimization method based on novel low-rank tensor methods to the problem...
We develop a new fuzzy arithmetic framework for efficient possibilistic uncertainty quantification. ...
Computational uncertainty quantication in a probabilistic setting is a special case of a parametric ...
The quantification of uncertainty in composite structures has intuitively significant threat to ensu...
The propagation of uncertainty in composite structures possesses significant computational challenge...
The quantification of uncertainty in composite structures has intuitively significant threat to ensu...
International audienceIn this paper, we consider the probabilistic modeling of media exhibiting unce...
Part 2: UQ TheoryInternational audienceComputational uncertainty quantification in a probabilistic s...
Uncertainties in the macroscopic response of heterogeneous materials result from two sources: the na...
This article presents a non-probabilistic fuzzy based multi-scale uncertainty propagation framework ...
AbstractThis paper discusses evaluation of influence of microscopic uncertainty on a homogenized mac...
International audienceThis paper presents the computational stochastic homogenization of a heterogen...
In recent years, machine learning (ML) tools have been applied to the broad majority of scientific f...
The present study is concerned with a numerical prediction of uncertainties in the macroscopic mecha...
Design of new materials is quite a difficult task owing to various time and length scales and affili...
We apply a derivative-free optimization method based on novel low-rank tensor methods to the problem...
We develop a new fuzzy arithmetic framework for efficient possibilistic uncertainty quantification. ...
Computational uncertainty quantication in a probabilistic setting is a special case of a parametric ...
The quantification of uncertainty in composite structures has intuitively significant threat to ensu...
The propagation of uncertainty in composite structures possesses significant computational challenge...
The quantification of uncertainty in composite structures has intuitively significant threat to ensu...
International audienceIn this paper, we consider the probabilistic modeling of media exhibiting unce...
Part 2: UQ TheoryInternational audienceComputational uncertainty quantification in a probabilistic s...
Uncertainties in the macroscopic response of heterogeneous materials result from two sources: the na...
This article presents a non-probabilistic fuzzy based multi-scale uncertainty propagation framework ...
AbstractThis paper discusses evaluation of influence of microscopic uncertainty on a homogenized mac...
International audienceThis paper presents the computational stochastic homogenization of a heterogen...
In recent years, machine learning (ML) tools have been applied to the broad majority of scientific f...
The present study is concerned with a numerical prediction of uncertainties in the macroscopic mecha...
Design of new materials is quite a difficult task owing to various time and length scales and affili...
We apply a derivative-free optimization method based on novel low-rank tensor methods to the problem...