The Future of Sensitivity Analysis: An essential discipline for systems modeling and policy support

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 thi...

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Veröffentlicht in:Environmental modelling & software : with environment data news 2021-03, Vol.137, p.104954, Article 104954
Hauptverfasser: 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 H.A., Jakeman, John, Gupta, Hoshin, Melillo, Nicola, Rabitti, Giovanni, Chabridon, Vincent, Duan, Qingyun, Sun, Xifu, Smith, Stefán, Sheikholeslami, Razi, Hosseini, Nasim, Asadzadeh, Masoud, Puy, Arnald, Kucherenko, Sergei, Maier, Holger R.
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Sprache:eng
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Zusammenfassung: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. •Sensitivity analysis (SA) should be promoted as an independent discipline.•Several grand challenges hinder full realization of the benefits of SA.•The potential of SA for systems modeling & machine learning is untapped.•New prospects exist for SA to support uncertainty quantification & decision making.•Coordination rather than consensus is key to cross-fertilize new ideas.
ISSN:1364-8152
1873-6726
DOI:10.1016/j.envsoft.2020.104954