Title
Robust optimization of water infrastructure planning under deep uncertainty using metamodels.
Abstract
Water resources planning and design problems, such as the sequencing of water supply infrastructure, are often complicated by deep uncertainty, including changes in population dynamics and the impact of climate change. To handle such uncertainties, robustness can be used to assess system performance, but its calculation typically involves many scenarios and hence is computationally expensive. Consequently, robustness has usually not been included as a formal optimization objective, but is considered post-optimization. To address this shortcoming, an approach is developed that uses metamodels (surrogates of computationally expensive simulation models) to calculate robustness and other objectives. This enables robustness to be considered explicitly as an objective within a multi-objective optimization framework. The approach is demonstrated for a water-supply sources sequencing problem in Adelaide, South Australia. The results indicate the approach can identify optimal trade-offs between robustness, cost and environmental objectives, which would otherwise not have been possible using commonly available computational resources. Consideration of deep uncertainty in optimal water infrastructure sequencing.Inclusion of robustness as an objective within the optimization process.Use of ANN metamodels for estimating robustness under deep uncertainty.Illustration of proposed approach using the Adelaide water supply system in Australia.Proposed approach is efficient in identifying optimal trade-offs between robustness and other objectives.
Year
DOI
Venue
2017
10.1016/j.envsoft.2017.03.013
Environmental Modelling and Software
Keywords
Field
DocType
Deep uncertainty,Robustness,Metamodels,Water infrastructure sequencing,Multi-objective optimization
Population,Mathematical optimization,Climate change,Robust optimization,Computer science,Simulation modeling,Robustness (computer science),Multi-objective optimization,Water resources,Management science,Water supply
Journal
Volume
Issue
ISSN
93
C
1364-8152
Citations 
PageRank 
References 
6
0.56
12
Authors
5
Name
Order
Citations
PageRank
Eva H. Y. Beh1171.83
Feifei Zheng2333.13
Graeme C. Dandy344147.01
Holger R. Maier473872.97
Zoran Kapelan5867.02