International audiencePolynomial chaos expansions are frequently used by engineers and modellers for uncertainty and sensitivity analyses of computer models. They allow representing the input/output relations of computer models. Usually only a few terms are really relevant in such a representation. It is a challenge to infer the best sparse polynomial chaos expansion of a given model input/output data set. In the present article, sparse polynomial chaos expansions are investigated for global sensitivity analysis of computer model responses. A new Bayesian approach is proposed to perform this task, based on the Kashyap information criterion for model selection. The efficiency of the proposed algorithm is assessed on several benchmarks before...
This paper presents an efficient surrogate modeling strategy for the uncertainty quantification and ...
[Departement_IRSTEA]Eaux [TR1_IRSTEA]GEUSI [TR2_IRSTEA]ARCEAU [ADD1_IRSTEA]Hydrosystèmes et risques ...
International audienceGlobal sensitivity analysis is now established as a powerful approach for dete...
International audiencePolynomial chaos expansions are frequently used by engineers and modellers for...
Global reliability sensitivity analysis determines the effects of input uncertain parameters on the ...
International audienceGlobal sensitivity has mainly been analyzed in static models, though most phys...
International audienceIn this paper, we discuss the sensitivity analysis of model response when the ...
Polynomial chaos expansions (PCE) meta-model has been wildly used and investigated in the last d...
In the field of computer experiments sensitivity analysis aims at quantifying the relative importanc...
International audienceThe sparse polynomial chaos expansion (SPCE) methodology is an efficient appro...
International audienceWe present in this paper a new strategy based on the use of polynomial chaos e...
The challenges for non-intrusive methods for Polynomial Chaos modeling lie in the computational effi...
AbstractUncertainty in the model input parameters are to be taken into account in order to assess th...
Thesis (Ph.D.)--University of Washington, 2020Uncertainties exist in both physics-based and data-dri...
International audienceUncertainty quantification in computational mechanics has received much attent...
This paper presents an efficient surrogate modeling strategy for the uncertainty quantification and ...
[Departement_IRSTEA]Eaux [TR1_IRSTEA]GEUSI [TR2_IRSTEA]ARCEAU [ADD1_IRSTEA]Hydrosystèmes et risques ...
International audienceGlobal sensitivity analysis is now established as a powerful approach for dete...
International audiencePolynomial chaos expansions are frequently used by engineers and modellers for...
Global reliability sensitivity analysis determines the effects of input uncertain parameters on the ...
International audienceGlobal sensitivity has mainly been analyzed in static models, though most phys...
International audienceIn this paper, we discuss the sensitivity analysis of model response when the ...
Polynomial chaos expansions (PCE) meta-model has been wildly used and investigated in the last d...
In the field of computer experiments sensitivity analysis aims at quantifying the relative importanc...
International audienceThe sparse polynomial chaos expansion (SPCE) methodology is an efficient appro...
International audienceWe present in this paper a new strategy based on the use of polynomial chaos e...
The challenges for non-intrusive methods for Polynomial Chaos modeling lie in the computational effi...
AbstractUncertainty in the model input parameters are to be taken into account in order to assess th...
Thesis (Ph.D.)--University of Washington, 2020Uncertainties exist in both physics-based and data-dri...
International audienceUncertainty quantification in computational mechanics has received much attent...
This paper presents an efficient surrogate modeling strategy for the uncertainty quantification and ...
[Departement_IRSTEA]Eaux [TR1_IRSTEA]GEUSI [TR2_IRSTEA]ARCEAU [ADD1_IRSTEA]Hydrosystèmes et risques ...
International audienceGlobal sensitivity analysis is now established as a powerful approach for dete...