4.7 Article

An interval-parameter multi-stage stochastic programming model for water resources management under uncertainty

Journal

ADVANCES IN WATER RESOURCES
Volume 29, Issue 5, Pages 776-789

Publisher

ELSEVIER SCI LTD
DOI: 10.1016/j.advwatres.2005.07.008

Keywords

decision making; interval optimization; multi-stage; stochastic; policy; scenario uncertainty; water resources

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In this study, an interval-parameter multi-stage stochastic linear programming (INISLP) method has been developed for water resources decision making under uncertainty. The INISLP is a hybrid methodology of inexact optimization and multi-stage stochastic programming. It has three major advantages in comparison to the other optimization techniques. Firstly, it extends upon the existing multi-stage stochastic programming method by allowing uncertainties expressed as probability density functions and discrete intervals to be effectively incorporated within the optimization framework. Secondly, penalties are exercised with recourse against any infeasibility, which permits in-depth analyses of various policy scenarios that are associated with different levels of economic consequences when the promised water-allocation targets are violated. Thirdly, it cannot only handle uncertainties through constructing a set of scenarios that is representative for the universe of possible outcomes, but also reflect dynamic features of the system conditions through transactions at discrete points in time over the planning horizon. The developed IMSLP method is applied to a hypothetical case study of water resources management. The results are helpful for water resources managers in not only making decisions of water allocation but also gaining insight into the tradeoffs between environmental and economic objectives. (c) 2005 Elsevier Ltd. All rights reserved.

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