Robust global sensitivity analysis under deep uncertainty via scenario analysis

Date

2016

Authors

Gao, L.
Bryan, B.A.
Nolan, M.
Connor, J.D.
Song, X.
Zhao, G.

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Journal article

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Environmental Modelling & Software, 2016; 76:154-166

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Abstract

Complex social-ecological systems models typically need to consider deeply uncertain long run future conditions. The influence of this deep (i.e. incalculable, uncontrollable) uncertainty on model parameter sensitivities needs to be understood and robustly quantified to reliably inform investment in data collection and model refinement. Using a variance-based global sensitivity analysis method (eFAST), we produced comprehensive model diagnostics of a complex social-ecological systems model under deep uncertainty characterised by four global change scenarios. The uncertainty of the outputs, and the influence of input parameters differed substantially between scenarios. We then developed sensitivity indicators that were robust to this deep uncertainty using four criteria from decision theory. The proposed methods can increase our understanding of the effects of deep uncertainty on output uncertainty and parameter sensitivity, and incorporate the decision maker's risk preference into modelling-related activities to obtain greater resilience of decisions to surprise.

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Data source: Supplementary data, http://www.sciencedirect.com/science/article/pii/S136481521530092X#appd001

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Copyright 2015 Elsevier

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