1] This paper presents a hybrid local-global sensitivity analysis method termed the Distributed Evaluation of Local Sensitivity Analysis (DELSA), which is used here to identify important and unimportant parameters and evaluate how model parameter importance changes as parameter values change. DELSA uses derivative-based “local” methods to obtain the distribution of parameter sensitivity across the parameter space, which promotes consideration of sensitivity analysis results in the context of simulated dynamics. This work presents DELSA, discusses how it relates to existing methods, and uses two hydrologic test cases to compare its performance with the popular global, variance-based Sobol' method. The first test case is a simple nonlinear re...
International audienceVariational methods are widely used for the analysis and control of computatio...
Global sensitivity analysis (GSA) is routinely used in academic setting to quantify the influence of...
Sensitivity analysis methods are useful tools as they allow robustness of model predictions to be ch...
1] This paper presents a hybrid local-global sensitivity analysis method termed the Distributed Eval...
This is the published version. Copyright 2014 American Geophysical UnionThis paper presents a hybrid...
Sensitivity analysis (SA) aims to identify the key parameters that affect model performance and it p...
In this work, we investigate methods for gaining greater insight from hydrological model runs conduc...
Diagnostics of hydrological models are pivotal for a better understanding of catchment functioning,...
Variational methods are widely used for the analysis and control of computationally intensive spatia...
Efficient sensitivity analysis, particularly for the global sensitivity analysis (GSA) to identify t...
In this work, we investigate methods for gaining greater insight from hydrological model runs conduc...
International audienceThe PESHMELBA model simulates water and pesticide transfers at the catchment s...
Hydrological models demand large numbers of input parameters, which are to be optimally identified f...
Variational methods are widely used for the analysis and control of computationally intensive spatia...
Global sensitivity analysis is a valuable tool in understanding flood inundation models and deriving...
International audienceVariational methods are widely used for the analysis and control of computatio...
Global sensitivity analysis (GSA) is routinely used in academic setting to quantify the influence of...
Sensitivity analysis methods are useful tools as they allow robustness of model predictions to be ch...
1] This paper presents a hybrid local-global sensitivity analysis method termed the Distributed Eval...
This is the published version. Copyright 2014 American Geophysical UnionThis paper presents a hybrid...
Sensitivity analysis (SA) aims to identify the key parameters that affect model performance and it p...
In this work, we investigate methods for gaining greater insight from hydrological model runs conduc...
Diagnostics of hydrological models are pivotal for a better understanding of catchment functioning,...
Variational methods are widely used for the analysis and control of computationally intensive spatia...
Efficient sensitivity analysis, particularly for the global sensitivity analysis (GSA) to identify t...
In this work, we investigate methods for gaining greater insight from hydrological model runs conduc...
International audienceThe PESHMELBA model simulates water and pesticide transfers at the catchment s...
Hydrological models demand large numbers of input parameters, which are to be optimally identified f...
Variational methods are widely used for the analysis and control of computationally intensive spatia...
Global sensitivity analysis is a valuable tool in understanding flood inundation models and deriving...
International audienceVariational methods are widely used for the analysis and control of computatio...
Global sensitivity analysis (GSA) is routinely used in academic setting to quantify the influence of...
Sensitivity analysis methods are useful tools as they allow robustness of model predictions to be ch...