This paper presents an efficient surrogate modeling strategy for the uncertainty quantification and Bayesian calibration of a hydrological model. In particular, a process-based dynamical urban drainage simulator that predicts the discharge from a catchment area during a precipitation event is considered. The goal of the case study is to perform a global sensitivity analysis and to identify the unknown model parameters as well as the measurement and prediction errors. These objectives can only be achieved by cheapening the incurred computational costs, that is, lowering the number of necessary model runs. With this in mind, a regularity-exploiting metamodeling technique is proposed that enables fast uncertainty quantification. Principal comp...
We perform global sensitivity analysis (GSA) through polynomial chaos expansion (PCE) on a contamina...
Generalized polynomial chaos (gPC) expansions allow us to represent the solution of a stochastic sys...
A methodology is presented which can be used in the evaluation of parametric uncertainty in urban fl...
[Departement_IRSTEA]Eaux [TR1_IRSTEA]GEUSI [TR2_IRSTEA]ARCEAU [ADD1_IRSTEA]Hydrosystèmes et risques ...
An integrated framework is proposed for parametric uncertainty analysis in hydrological modeling usi...
International audiencePolynomial chaos expansions are frequently used by engineers and modellers for...
International audienceAssessing epistemic uncertainties is considered as a milestone for improving n...
<p>Polynomial chaos expansions provide an efficient and robust framework to analyze and quantify unc...
Reservoir simulations involve a large number of formation and fluid parameters, many of which are su...
We study parametric uncertainty propagation and quantification in hydrological models for the simula...
This study reports on the use the recently developed Differential Evolution Adaptative Metropolis al...
A methodology is presented which can be used in the evaluation of parametric uncertainty in urban fl...
Global sensitivity analysis (GSA) is routinely used in academic setting to quantify the influence of...
Assessing epistemic uncertainties is considered as a milestone for improving numerical predictions o...
We perform global sensitivity analysis (GSA) through polynomial chaos expansion (PCE) on a contamina...
Generalized polynomial chaos (gPC) expansions allow us to represent the solution of a stochastic sys...
A methodology is presented which can be used in the evaluation of parametric uncertainty in urban fl...
[Departement_IRSTEA]Eaux [TR1_IRSTEA]GEUSI [TR2_IRSTEA]ARCEAU [ADD1_IRSTEA]Hydrosystèmes et risques ...
An integrated framework is proposed for parametric uncertainty analysis in hydrological modeling usi...
International audiencePolynomial chaos expansions are frequently used by engineers and modellers for...
International audienceAssessing epistemic uncertainties is considered as a milestone for improving n...
<p>Polynomial chaos expansions provide an efficient and robust framework to analyze and quantify unc...
Reservoir simulations involve a large number of formation and fluid parameters, many of which are su...
We study parametric uncertainty propagation and quantification in hydrological models for the simula...
This study reports on the use the recently developed Differential Evolution Adaptative Metropolis al...
A methodology is presented which can be used in the evaluation of parametric uncertainty in urban fl...
Global sensitivity analysis (GSA) is routinely used in academic setting to quantify the influence of...
Assessing epistemic uncertainties is considered as a milestone for improving numerical predictions o...
We perform global sensitivity analysis (GSA) through polynomial chaos expansion (PCE) on a contamina...
Generalized polynomial chaos (gPC) expansions allow us to represent the solution of a stochastic sys...
A methodology is presented which can be used in the evaluation of parametric uncertainty in urban fl...