Please use this identifier to cite or link to this item: http://hdl.handle.net/10609/147614
Title: The Future of Sensitivity Analysis: An essential discipline for systems modeling and policy support
Author: Razavi, Saman  
Jakeman, Anthony  
saltelli, andrea  
Prieur, Clémentine
Iooss, Bertrand  
Borgonovo, Emanuele  
Plischke, Elmar  
Lo Piano, Samuele  
Iwanaga, Takuya  
Becker, William
Tarantola, Stefano  
Guillaume, Joseph  
Jakeman, John  
Gupta, Hoshin  
Melillo, Nicola  
Rabitti, Giovanni
Chabridon, Vincent
Duan, Qingyun  
SUN, XIFU  
Smith, Stefan  
Sheikholeslami, Razi  
Hosseini, Nasim  
Asadzadeh, Masoud  
Puy, Arnald  
Kucherenko, Sergei  
Maier, Holger  
Others: University of Saskatchewan
The Australian National University
Universitat Oberta de Catalunya (UOC)
Université de Grenoble Alpes
EDF R&D, Département PRISME / SINCLAIR AI Laboratory
Bocconi University
Technische Universität Clausthal
University of Reading
University of Arizona
Università degli Studi di Pavia
Heriot-Watt University
Hohai University
University of Oxford
University of Manitoba
Princeton University
University of Bergen
Imperial College London
University of Adelaide
Citation: Razavi, S., Jakeman, A., Saltelli, A., Prieur, C., Iooss, B., Borgonovo, E., Plischke, E., Lo Piano, Samuele, Iwanaga, T., Becker, W., Tarantola, S., Guillaume, J., Jakeman, J., Gupta, H., Melillo, Nicola, Rabitti, G., Chabridon, V., Duan, Q., Sun, X., Smith, S., Sheikholeslami, R., Hosseini, N., Asadzadeh, M., Puy, A., Kucherenko, S. & Maier, H.R. (2021). The Future of Sensitivity Analysis: An essential discipline for systems modeling and policy support. Environmental Modelling & Software, 137, 1-22. doi: 10.1016/j.envsoft.2020.104954
Abstract: Sensitivity analysis (SA) is en route to becoming an integral part of mathematical modeling. The tremendous potential benefits of SA are, however, yet to be fully realized, both for advancing mechanistic and data-driven modeling of human and natural systems, and in support of decision making. In this perspective paper, a multidisciplinary group of researchers and practitioners revisit the current status of SA, and outline research challenges in regard to both theoretical frameworks and their applications to solve real-world problems. Six areas are discussed that warrant further attention, including (1) structuring and standardizing SA as a discipline, (2) realizing the untapped potential of SA for systems modeling, (3) addressing the computational burden of SA, (4) progressing SA in the context of machine learning, (5) clarifying the relationship and role of SA to uncertainty quantification, and (6) evolving the use of SA in support of decision making. An outlook for the future of SA is provided that underlines how SA must underpin a wide variety of activities to better serve science and society.
Keywords: sensitivity analysis
mathematical modeling
machine learning
uncertainty quantification
decision making
model validation and verification
model robustness
policy support
DOI: https://doi.org/10.1016/j.envsoft.2020.104954
Document type: info:eu-repo/semantics/article
Version: info:eu-repo/semantics/publishedVersion
Issue Date: 16-Jan-2021
Publication license: https://creativecommons.org/licenses/by/4.0/  
Appears in Collections:Articles cientÍfics
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