Title
Sensitivity analysis for decision-making using the MORE method—A Pareto approach
Abstract
Integrated Assessment Modelling (IAM) incorporates knowledge from different disciplines to provide an overarching assessment of the impact of different management decisions. The complex nature of these models, which often include non-linearities and feedback loops, requires special attention for sensitivity analysis. This is especially true when the models are used to form the basis of management decisions, where it is important to assess how sensitive the decisions being made are to changes in model parameters. This research proposes an extension to the Management Option Rank Equivalence (MORE) method of sensitivity analysis; a new method of sensitivity analysis developed specifically for use in IAM and decision-making. The extension proposes using a multi-objective Pareto optimal search to locate minimum combined parameter changes that result in a change in the preferred management option. It is demonstrated through a case study of the Namoi River, where results show that the extension to MORE is able to provide sensitivity information for individual parameters that takes into account simultaneous variations in all parameters. Furthermore, the increased sensitivities to individual parameters that are discovered when joint parameter variation is taken into account shows the importance of ensuring that any sensitivity analysis accounts for these changes.
Year
DOI
Venue
2009
10.1016/j.ress.2009.01.009
Reliability Engineering & System Safety
Keywords
DocType
Volume
Sensitivity analysis,Pareto optimization,Integrated assessment modelling,Decision-making
Journal
94
Issue
ISSN
Citations 
7
0951-8320
4
PageRank 
References 
Authors
0.55
3
3
Name
Order
Citations
PageRank
Jakin K. Ravalico140.55
Holger R. Maier273872.97
Graeme C. Dandy344147.01