peer reviewedThis article is concerned with the identification of probabilistic characterizations of random variables and fields from experimental data. The data used for the identification consist of measurements of several realizations of the uncertain quantities that must be characterized. The random variables and fields are approximated by a polynomial chaos expansion, and the coefficients of this expansion are viewed as unknown parameters to be identified. It is shown how the Bayesian paradigm can be applied to formulate and solve the inverse problem. The estimated polynomial chaos coefficients are hereby themselves characterized as random variables whose probability density function is the Bayesian posterior. This allows to quantify t...
AbstractThe knowledge of uncertain parameter distributions is often required to investigate any typi...
International audienceThis paper deals with the experimental identification of the probabilistic rep...
International audienceLack of data and information for parameters is a serious problem for epidemiol...
International audienceThis article is concerned with the identification of probabilistic characteriz...
We present a fully deterministic approach to a probabilistic interpretation of inverse problems in w...
Keynote LectureInternational audienceWe propose an approach to solve the very challeging problem rel...
International audienceThis paper is devoted to the identification of Bayesian posteriors for the ran...
Workshop du projet ANR "Advanced methods using stochastic modeling in high dimension for uncertainty...
The present paper deals with the identification of probabilistic models of input variables using res...
Colloque avec actes et comité de lecture. Internationale.International audienceThe present paper dea...
In this paper we introduce polynomial chaos in the stochastic forward model used to solve the invers...
International audienceThis paper deals with the identification of probabilistic models of the random...
Polynomial chaos expansions are used to reduce the computational cost in the Bayesian solutions of i...
International audienceThis paper is devoted to the identification of high-dimension polynomial chaos...
This is the first part of a two-part article. A new computational approach for parameter estimation...
AbstractThe knowledge of uncertain parameter distributions is often required to investigate any typi...
International audienceThis paper deals with the experimental identification of the probabilistic rep...
International audienceLack of data and information for parameters is a serious problem for epidemiol...
International audienceThis article is concerned with the identification of probabilistic characteriz...
We present a fully deterministic approach to a probabilistic interpretation of inverse problems in w...
Keynote LectureInternational audienceWe propose an approach to solve the very challeging problem rel...
International audienceThis paper is devoted to the identification of Bayesian posteriors for the ran...
Workshop du projet ANR "Advanced methods using stochastic modeling in high dimension for uncertainty...
The present paper deals with the identification of probabilistic models of input variables using res...
Colloque avec actes et comité de lecture. Internationale.International audienceThe present paper dea...
In this paper we introduce polynomial chaos in the stochastic forward model used to solve the invers...
International audienceThis paper deals with the identification of probabilistic models of the random...
Polynomial chaos expansions are used to reduce the computational cost in the Bayesian solutions of i...
International audienceThis paper is devoted to the identification of high-dimension polynomial chaos...
This is the first part of a two-part article. A new computational approach for parameter estimation...
AbstractThe knowledge of uncertain parameter distributions is often required to investigate any typi...
International audienceThis paper deals with the experimental identification of the probabilistic rep...
International audienceLack of data and information for parameters is a serious problem for epidemiol...