We design a method called filter-based global sensitivity analysis (filterbased GSA) to analyze computer models with functional inputs. Understanding the impact of functional inputs is central in many applications like building energy or environmental studies. The present work is a step further in the analysis of the impact of functional inputs signal components on to model responses of interest. To perform filter-based GSA, the functional inputs are modified with filters in order to either enhance or suppress some components in the signal. The influence of filters on the model response is assessed by computing the Sobol’ indices of Boolean factors that trigger the filters application. Two relationships between these indices and the error r...
AbstractWe address two critical choices in Global Sensitivity Analysis (GSA): the choice of the samp...
Global sensitivity analysis (GSA) is a powerful approach in identifying which inputs or parameters ...
ABSTRACT. The complexity of numerical models and the large numbers of input factors result in comple...
This work is devoted to the analysis of models having functional inputs and is motivated by the inte...
This paper deals with global sensitivity analysis of computer model output. Given an independent inp...
International audienceThis paper deals with global sensitivity analysis of computer model output. Gi...
Motivated by an application in the realm of climate change economics,we develop and prove the mathem...
This chapter makes a review, in a complete methodological framework, of various global sensitivity a...
A novel practical method to conduct a Global Sensitivity Analysis (GSA) for computer models is propo...
A new method for sensitivity analysis of model output is introduced. It is based on the Fourier Ampl...
International audienceGlobal sensitivity analysis is used to quantify the influence of uncertain inp...
Parameter sensitivity analysis is a relatively well-developed field compared with function sensitivi...
When studying hydrological processes with a numerical model, global sensitivity analysis (GSA) is es...
The model-based system engineering approach consists of assembling subsystems together to model a co...
We present computational tools to analyse some key properties of DSGE models and address the followi...
AbstractWe address two critical choices in Global Sensitivity Analysis (GSA): the choice of the samp...
Global sensitivity analysis (GSA) is a powerful approach in identifying which inputs or parameters ...
ABSTRACT. The complexity of numerical models and the large numbers of input factors result in comple...
This work is devoted to the analysis of models having functional inputs and is motivated by the inte...
This paper deals with global sensitivity analysis of computer model output. Given an independent inp...
International audienceThis paper deals with global sensitivity analysis of computer model output. Gi...
Motivated by an application in the realm of climate change economics,we develop and prove the mathem...
This chapter makes a review, in a complete methodological framework, of various global sensitivity a...
A novel practical method to conduct a Global Sensitivity Analysis (GSA) for computer models is propo...
A new method for sensitivity analysis of model output is introduced. It is based on the Fourier Ampl...
International audienceGlobal sensitivity analysis is used to quantify the influence of uncertain inp...
Parameter sensitivity analysis is a relatively well-developed field compared with function sensitivi...
When studying hydrological processes with a numerical model, global sensitivity analysis (GSA) is es...
The model-based system engineering approach consists of assembling subsystems together to model a co...
We present computational tools to analyse some key properties of DSGE models and address the followi...
AbstractWe address two critical choices in Global Sensitivity Analysis (GSA): the choice of the samp...
Global sensitivity analysis (GSA) is a powerful approach in identifying which inputs or parameters ...
ABSTRACT. The complexity of numerical models and the large numbers of input factors result in comple...