Complex environmental models typically require global sensitivity analysis (GSA) to account for non-linearities and parametric interactions. However, variance-based GSA is highly computationally expensive. While different screening methods can estimate GSA results, these techniques typically impose restrictions on sampling methods and input types. As an alternative, this work evaluates two decision tree-based methods to approximate GSA results: random forests, and Extra-Trees. These techniques are applicable with common sampling methods, and continuous or categorical inputs. The tree-based methods are compared to reference Sobol GSA and Morris screening techniques, for three cases: an Ishigami-Homma function, a H1N1 pandemic model, and the ...
Computer models are increasingly used to simulate and predict the behaviour of forest systems. Uncer...
A recent approach to surrogate modelling, called dynamic trees, uses regression trees to partition t...
In 1991 Morris proposed an effective screening sensitivity measure to identify the few important fac...
Complex environmental models typically require global sensitivity analysis (GSA) to account for non-...
International audienceGlobal sensitivity analysis has a key role to play in the design and parameter...
International audienceA new method named cluster-based GSA is proposed to enhance the sensitivity an...
Environmental models involve inherent uncertainties, the understanding of which is required for use ...
Global sensitivity analysis (GSA) is a valuable tool for filtering out non-influential model inputs....
AbstractWe address two critical choices in Global Sensitivity Analysis (GSA): the choice of the samp...
An understanding on the exposure to environmental factors aggravating global disease burden can aid ...
We address two critical choices in Global Sensitivity Analysis (GSA): the choice of the sample size ...
Complex Environmental Systems Models (CESMs) have been developed and applied as vital tools to tackl...
Dynamical earth and environmental systems models are typically computationally intensive and highly ...
AbstractVariance-based approaches are widely used for Global Sensitivity Analysis (GSA) of environme...
Sensitivity analysis (SA) of environmental models is inefficient when there are large numbers of inp...
Computer models are increasingly used to simulate and predict the behaviour of forest systems. Uncer...
A recent approach to surrogate modelling, called dynamic trees, uses regression trees to partition t...
In 1991 Morris proposed an effective screening sensitivity measure to identify the few important fac...
Complex environmental models typically require global sensitivity analysis (GSA) to account for non-...
International audienceGlobal sensitivity analysis has a key role to play in the design and parameter...
International audienceA new method named cluster-based GSA is proposed to enhance the sensitivity an...
Environmental models involve inherent uncertainties, the understanding of which is required for use ...
Global sensitivity analysis (GSA) is a valuable tool for filtering out non-influential model inputs....
AbstractWe address two critical choices in Global Sensitivity Analysis (GSA): the choice of the samp...
An understanding on the exposure to environmental factors aggravating global disease burden can aid ...
We address two critical choices in Global Sensitivity Analysis (GSA): the choice of the sample size ...
Complex Environmental Systems Models (CESMs) have been developed and applied as vital tools to tackl...
Dynamical earth and environmental systems models are typically computationally intensive and highly ...
AbstractVariance-based approaches are widely used for Global Sensitivity Analysis (GSA) of environme...
Sensitivity analysis (SA) of environmental models is inefficient when there are large numbers of inp...
Computer models are increasingly used to simulate and predict the behaviour of forest systems. Uncer...
A recent approach to surrogate modelling, called dynamic trees, uses regression trees to partition t...
In 1991 Morris proposed an effective screening sensitivity measure to identify the few important fac...