B. Adams, L. Bauman, W. Bohnhoff, K. Dalbey, J. Eddy et al., Dakota: A multilevel parallel object-oriented framework for design optimization, parameter estimation, uncertainty quantification, and sensitivity analysis. Version 5.4 User's Manual, 2013.

D. Adler, C. Gläser, O. Nenadic, J. Oehlschlägel, and W. Zucchini, ff: Memory-Efficient Storage of Large Data on Disk and Fast Access Functions, 2014.

K. Alden, M. Read, J. Timmis, P. S. Andrews, H. Veiga-fernandes et al., Spartan: A comprehensive tool for understanding uncertainty in simulations of biological systems, PLoS Computational Biology, vol.9, issue.2, 2013.

K. Alden, M. Read, P. Andrews, J. Timmis, H. Veiga-fernandes et al., Simulation Parameter Analysis R Toolkit ApplicatioN, 2015.

M. Baudin, A. Dutfoy, B. Iooss, and A. Popelin, Open TURNS: An industrial software for uncertainty quantification in simulation, 2015.
URL : https://hal.archives-ouvertes.fr/hal-01107849

J. Brock, C. Caupp, and H. Runke, Evaluation of Water Quality Using DSSAM III Under Various Conditions of Nutrient Loadings from Municipal Wastewater and Agricultural Sources, Comparison of Simulated Water Quality Conditions with Truckee River Water Quality Standards from McCarran to Pyramid Lake. Executive Summary. Bureau of Water Quality Planning

J. Cariboni, D. Gatelli, R. Liska, and A. Saltelli, The role of sensitivity analysis in ecological modelling, Special Issue on Ecological Informatics: Biologically-Inspired Machine Learning, vol.203, issue.1-2, pp.167-182, 2007.

R. , lhs: Latin Hypercube Samples, 2012.

J. M. Chambers, Software for Data Analysis: Programming with R, 2008.

J. M. Chambers, Object-oriented programming, functional programming and R, Statistical Science, vol.29, issue.2, pp.167-180, 2014.

B. Ciuffo, A. Miola, V. Punzo, and S. Sala, Dealing with Uncertainty in Sustainability Assessment: Report on the Application of Different Sensitivity Analysis Techniques to Fieldspecific Simulation Models. Publications Office, 2012.

E. De-rocquigny, N. Devictor, and S. Tarantola, Uncertainty in Industrial Practice: A Guide to Quantitative Uncertainty Management, 2008.

D. Dupuy, C. Helbert, and J. Franco, DiceDesign and DiceEval: Two R packages for design and analysis of computer experiments, Journal of Statistical Software, vol.65, issue.11, pp.1-38, 2015.
URL : https://hal.archives-ouvertes.fr/hal-02065877

R. Faivre-;-faivre, R. Iooss, B. Mahévas, S. Makowski, D. Monod et al., Analyse de sensibilité et exploration de modèles. Applications aux modèles environnementaux, Savoir Faire. Quae, 2013.

R. Faivre, D. Makowski, J. Wang, H. Richard, and H. Monod, Analyse de sensibilité et exploration de modèles. Applications aux modèles environnementaux, 2013.

M. Fowler, UML Distilled: A Brief Guide to the Standard Object Modeling Language, 2003.

J. Helton, J. Johnson, C. Sallaberry, and C. Storlie, Survey of sampling-based methods for uncertainty and sensitivity analysis, Reliability Engineering and System Safety, vol.91, pp.1175-1209, 2006.

G. M. Hornberger and R. C. Spear, An approach to the preliminary analysis of environmental systems, Journal of Environmental Management, vol.12, pp.7-18, 1981.

T. Ishigami and T. Homma, An importance quantification technique in uncertainty analysis for computer models, International Symposium on Uncertainity Modelling and Analysis (ISUMA'90), 1990.

, Joint Research Centre. SimLab. Software, 2006.

M. Lamboni, H. Monod, and C. Bidot, multisensi: Multivariate Sensitivity Analysis, 2015.

M. Leclaire and R. Reuillon, OpenMole: OPEN MOdeL Experiment. Open-Source Software, 2014.

P. Lynch, The origins of computer weather prediction and climate modeling, Journal of Computational Physics, vol.227, issue.7, pp.3431-3444, 2008.

S. Marino, I. B. Hogue, C. J. Ray, and D. E. Kirschner, A methodology for performing global uncertainty and sensitivity analysis in systems biology, Journal of Theoretical Biology, vol.254, issue.1, pp.178-196, 2008.

H. Monod, A. Bouvier, and A. Kobilinsky, planor: Generation of Regular Factorial Designs, 2015.
URL : https://hal.archives-ouvertes.fr/hal-01608446

N. Munier-jolain, B. Chauvel, and J. Gasquez, Long-term modelling of weed control strategies: Analysis of threshold-based options for weed species with contrasted competitive abilities, Weed Research, vol.42, pp.107-122, 2002.

J. Papaix, S. Touzeau, H. Monod, and C. Lannou, Can epidemic control be achieved by altering landscape connectivity in agricultural systems?, Ecological Modelling, vol.284, pp.35-47, 2014.
URL : https://hal.archives-ouvertes.fr/hal-01099953

L. Pronzato and W. Müller, Design of computer experiments: Space filling and beyond, Statistics and Computing, vol.22, issue.3, pp.681-701, 2012.
URL : https://hal.archives-ouvertes.fr/hal-00685876

G. Pujol, B. Iooss, and A. Janon, The sensitivity Package, 2015.

M. Read, P. S. Andrews, J. Timmis, and V. Kumar, Techniques for grounding agent-based simulations in the real domain: A case study in experimental autoimmune encephalomyelitis, Mathematical and Computer Modelling of Dynamical Systems, vol.18, issue.1, pp.67-86, 2012.

H. Richard, H. Monod, J. Wang, J. Couteau, N. Dumoulin et al., La boîte à outils Mexico: un environnement générique pour piloter l'exploration numérique de modèles, Savoir Faire. Quae, 2013.

Y. Richet, D. Ginsbourger, O. Roustant, and Y. Deville, A grid computing environment for design and analysis of computer experiments, The R User Conference, 2010.

Y. Richet, The Promethee project: A software environment for performing parametric computer simulations in dependability engineering, 2009.

J. S. Risbey, S. Lewandowsky, C. Langlais, D. P. Monselesan, T. J. O'kane et al., Wellestimated global surface warming in climate projections selected for ENSO phase, Nature Climate Change, vol.4, issue.9, pp.835-840, 2014.

A. Salinger, R. Pawlowski, J. Shadid, B. Van-bloemen, and . Waanders, Computational analysis and optimization of a chemical vapor deposition reactor with large-scale computing, Industrial and Engineering Chemistry Research, vol.43, issue.16, pp.4612-4623, 2004.

A. Saltelli, K. Chan, and E. M. Scott, , 2000.

A. Saltelli, M. Ratto, S. Tarantola, and C. , Sensitivity Analysis in Practice: A Guide to Assessing Scientific Models, 2005.

V. G. Weirs, J. R. Kamm, L. P. Swiler, S. Tarantola, M. Ratto et al., Sensitivity analysis techniques applied to a system of hyperbolic conservation laws, Reliability Engineering and System Safety, vol.107, pp.157-170, 2012.

J. Wang-maiage, D. Ur1404--inra, and . De-vilvert,

R. Faivre and M. Ur875--inra, Faivre@toulouse.inra.fr

H. , D. Saint-paul, and S. Agroparc, , p.84914