Uncertainty in parameters is present in many risk assessment problems and leads to uncertainty in model predictions. In this work, we introduce a global sensitivity indicator which looks at the influence of input uncertainty on the entire output distribution without reference to a specific moment of the output (moment independence) and which can be defined also in the presence of correlations among the parameters. We discuss its mathematical properties and highlight the differences between the present indicator, variance-based uncertainty importance measures and a moment independent sensitivity indicator previously introduced in the literature. Numerical results are discussed with application to the probabilistic risk assessment model on wh...
This article presents new sensitivity measures in reliability-oriented global sensitivity analysis. ...
Purpose: This paper defines a model to evaluate the uncertainty in performance indicators (PIs) base...
International audienceComputational models are intensively used in engineering for risk analysis or ...
Uncertainty importance measures are quantitative tools aiming at identifying the contribution of un...
In probabilistic risk assessment, attention is often focused on the expected value of a risk metric....
In a quantitative model with uncertain inputs, the uncertainty of the output can be summarized by a ...
In a quantitative model with uncertain inputs, the uncertainty of the output can be summarized by a ...
International audienceWe present a global sensitivity analysis that quantifies the impact of paramet...
This paper discusses application and results of global sensitivity analysis techniques to probabilis...
We present a global sensitivity analysis that quantifies the impact of parameter uncertainty on mode...
If there is uncertainty in the reliability (unreliability) of a system, it is necessary to know the ...
We propose a set of new indices to assist global sensitivity analysis in the presence of data allowi...
This chapter discusses the class of moment independent importance measures. This class comprises den...
AbstractIn Probabilistic Safety Assessment (PSA) of commercial nuclear power plants(Npps), there are...
Multi-indicator matrices represent a set of objects or alternatives characterized simultaneously by ...
This article presents new sensitivity measures in reliability-oriented global sensitivity analysis. ...
Purpose: This paper defines a model to evaluate the uncertainty in performance indicators (PIs) base...
International audienceComputational models are intensively used in engineering for risk analysis or ...
Uncertainty importance measures are quantitative tools aiming at identifying the contribution of un...
In probabilistic risk assessment, attention is often focused on the expected value of a risk metric....
In a quantitative model with uncertain inputs, the uncertainty of the output can be summarized by a ...
In a quantitative model with uncertain inputs, the uncertainty of the output can be summarized by a ...
International audienceWe present a global sensitivity analysis that quantifies the impact of paramet...
This paper discusses application and results of global sensitivity analysis techniques to probabilis...
We present a global sensitivity analysis that quantifies the impact of parameter uncertainty on mode...
If there is uncertainty in the reliability (unreliability) of a system, it is necessary to know the ...
We propose a set of new indices to assist global sensitivity analysis in the presence of data allowi...
This chapter discusses the class of moment independent importance measures. This class comprises den...
AbstractIn Probabilistic Safety Assessment (PSA) of commercial nuclear power plants(Npps), there are...
Multi-indicator matrices represent a set of objects or alternatives characterized simultaneously by ...
This article presents new sensitivity measures in reliability-oriented global sensitivity analysis. ...
Purpose: This paper defines a model to evaluate the uncertainty in performance indicators (PIs) base...
International audienceComputational models are intensively used in engineering for risk analysis or ...