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Global sensitivity analysis for models with spatially dependent outputs
Marrel A., Iooss B., Jullien M., Laurent B., Volkova E.
Environmetrics 22 (2011) 383-397 - http://hal.archives-ouvertes.fr/hal-00430171
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Article in peer-reviewed journal
Mathematics/Statistics
Statistics/Statistics Theory
Global sensitivity analysis for models with spatially dependent outputs
Amandine Marrel () 1, Bertrand Iooss ( ) 2, 3, Michel Jullien 4, Beatrice Laurent 5, Elena Volkova 6
1:  IFP Energies Nouvelles (IFPEN)
IFP Energies Nouvelles
France
2:  GdR MASCOT-NUM ((Méthodes d'Analyse Stochastique des Codes et Traitements Numériques))
http://www.gdr-mascotnum.fr/doku.php
CNRS : GDR3179
France
3:  EDF R&D
EDF
France
4:  Laboratoire de Modélisation des Transferts dans l'Environnement
CEA
Cadarache, Saint Paul lez Durance
France
5:  Institut de Mathématiques de Toulouse (IMT)
Université Paul Sabatier [UPS] - Toulouse III – Université Toulouse le Mirail - Toulouse II – Université des Sciences Sociales - Toulouse I – Institut National des Sciences Appliquées (INSA) - Toulouse – CNRS : UMR5219
Bâtiment 1R3 118 route de Narbonne 31062 TOULOUSE CEDEX 4
France
6:  Institute of Nuclear Reactors
RRC Kurchatov Institute
Russian Federation
The global sensitivity analysis of a complex numerical model often calls for the estimation of variance-based importance measures, named Sobol' indices. Metamodel-based techniques have been developed in order to replace the cpu time-expensive computer code with an inexpensive mathematical function, which predicts the computer code output. The common metamodel-based sensitivity analysis methods are well-suited for computer codes with scalar outputs. However, in the environmental domain, as in many areas of application, the numerical model outputs are often spatial maps, which may also vary with time. In this paper, we introduce an innovative method to obtain a spatial map of Sobol' indices with a minimal number of numerical model computations. It is based upon the functional decomposition of the spatial output onto a wavelet basis and the metamodeling of the wavelet coefficients by the Gaussian process. An analytical example is presented to clarify the various steps of our methodology. This technique is then applied to a real hydrogeological case: for each model input variable, a spatial map of Sobol' indices is thus obtained.
English

Environmetrics
Publisher Wiley-Blackwell
ISSN 1180-4009 (eISSN : 1099-095X)
international
2011
22
383-397

Computer experiment – Gaussian process – metamodel – functional data – radionuclide migration

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