International audienceGeostatistical simulations are used to perform a global sensitivity analysis on a model Y = f(X1 ... Xk) where one of the model inputs Xi is a continuous 2D-field. Geostatistics allow specifying uncertainty on Xi with a spatial covariance model and generating random realizations of Xi. These random realizations are used to propagate uncertainty through model f and estimate global sensitivity indices. Focusing on variance-based global sensitivity analysis (GSA), we assess in this paper how sensitivity indices vary with covariance parameters (range, sill, nugget). Results give a better understanding on how and when to use geostatistical simulations for sensitivity analysis of spatially distributed models
International audienceAlthough simulation models of geographical systems in general and agent-based ...
This paper introduces an integrated Uncertainty and Sensitivity Analysis (US-A) approach for Spatial...
Variance-based global sensitivity analysis is used to study how the variability of the output of a n...
International audienceGeostatistical simulations are used to perform a global sensitivity analysis o...
Geostatistical simulations are used to perform a global sensitivity analysis on a model Y = f(X1... ...
International audienceVariance-based global sensitivity analysis (GSA) aims at studying how uncertai...
Variance-based global sensitivity analysis (GSA) is used to study how the variance of the output of ...
Sensitivity analysis involves determining the contribution of individual input factors to uncertaint...
[Departement_IRSTEA]Territoires [TR1_IRSTEA]SYNERGIEInternational audienceComplex spatial models are...
Sensitivity analysis involves determining the contribution of individual input factors to uncertaint...
International audienceVariance-based Sobol' global sensitivity analysis (GSA) was initially designed...
L'analyse de sensibilité globale basée sur la variance permet de hiérarchiser les sources d'incertit...
There are many approaches to geostatistical simulation that can be used to generate realizations of ...
International audienceAlthough simulation models of geographical systems in general and agent-based ...
This paper introduces an integrated Uncertainty and Sensitivity Analysis (US-A) approach for Spatial...
Variance-based global sensitivity analysis is used to study how the variability of the output of a n...
International audienceGeostatistical simulations are used to perform a global sensitivity analysis o...
Geostatistical simulations are used to perform a global sensitivity analysis on a model Y = f(X1... ...
International audienceVariance-based global sensitivity analysis (GSA) aims at studying how uncertai...
Variance-based global sensitivity analysis (GSA) is used to study how the variance of the output of ...
Sensitivity analysis involves determining the contribution of individual input factors to uncertaint...
[Departement_IRSTEA]Territoires [TR1_IRSTEA]SYNERGIEInternational audienceComplex spatial models are...
Sensitivity analysis involves determining the contribution of individual input factors to uncertaint...
International audienceVariance-based Sobol' global sensitivity analysis (GSA) was initially designed...
L'analyse de sensibilité globale basée sur la variance permet de hiérarchiser les sources d'incertit...
There are many approaches to geostatistical simulation that can be used to generate realizations of ...
International audienceAlthough simulation models of geographical systems in general and agent-based ...
This paper introduces an integrated Uncertainty and Sensitivity Analysis (US-A) approach for Spatial...
Variance-based global sensitivity analysis is used to study how the variability of the output of a n...