International audienceMany mathematical models involve input parameters, which are not precisely known. Global sensitivity analysis aims to identify the parameters whose uncertainty has the largest impact on the variability of a quantity of interest. One of the statistical tools used to quantify the influence of each input variable on the quantity of interest are the Sobol' sensitivity indices. In this paper, we consider stochastic models described by stochastic differential equations (SDE). We focus the study on mean quantities, defined as the expectation with respect to the Wiener measure of a quantity of interest related to the solution of the SDE itself. Our approach is based on a Feynman-Kac representation of the quantity of interest, ...
Uncertainty quantification seeks to provide a quantitative means to understand complex systems that ...
This paper presents a methodology to quantify computationally the uncertainty in a class of differen...
In this paper, we present a formal quantification of uncertainty induced by numerical solutions of o...
We present a global sensitivity analysis that quantifies the impact of parameter uncertainty on mode...
International audienceThis paper is a first attempt to develop a numerical techniqueto analyze the s...
International audienceWe present a global sensitivity analysis that quantifies the impact of paramet...
Sobol sensitivity indices assess how the output of a given mathematical model is sensitive to its i...
It is interesting to analyze the parameter sensitivity of mathematical models that describe physical...
AbstractSensitivity analysis and uncertainty quantification are computationally expensive procedures...
In the field of computer experiments sensitivity analysis aims at quantifying the relative importanc...
International audienceGlobal sensitivity has mainly been analyzed in static models, though most phys...
In many fields, active research is currently focused on quantification and simulation of model uncer...
International audienceGlobal sensitivity analysis is now established as a powerful approach for dete...
International audienceMany phenomena are modeled by deterministic differential equations , whereas t...
In this talk we will study the generalized polynomial chaos-stochastic Galerkin (gPC-SG) approach to...
Uncertainty quantification seeks to provide a quantitative means to understand complex systems that ...
This paper presents a methodology to quantify computationally the uncertainty in a class of differen...
In this paper, we present a formal quantification of uncertainty induced by numerical solutions of o...
We present a global sensitivity analysis that quantifies the impact of parameter uncertainty on mode...
International audienceThis paper is a first attempt to develop a numerical techniqueto analyze the s...
International audienceWe present a global sensitivity analysis that quantifies the impact of paramet...
Sobol sensitivity indices assess how the output of a given mathematical model is sensitive to its i...
It is interesting to analyze the parameter sensitivity of mathematical models that describe physical...
AbstractSensitivity analysis and uncertainty quantification are computationally expensive procedures...
In the field of computer experiments sensitivity analysis aims at quantifying the relative importanc...
International audienceGlobal sensitivity has mainly been analyzed in static models, though most phys...
In many fields, active research is currently focused on quantification and simulation of model uncer...
International audienceGlobal sensitivity analysis is now established as a powerful approach for dete...
International audienceMany phenomena are modeled by deterministic differential equations , whereas t...
In this talk we will study the generalized polynomial chaos-stochastic Galerkin (gPC-SG) approach to...
Uncertainty quantification seeks to provide a quantitative means to understand complex systems that ...
This paper presents a methodology to quantify computationally the uncertainty in a class of differen...
In this paper, we present a formal quantification of uncertainty induced by numerical solutions of o...