Using Information-Gap Decision Theory for Water Resources Planning Under Severe Uncertainty

被引:0
|
作者
Brett Korteling
Suraje Dessai
Zoran Kapelan
机构
[1] University of Exeter,Geography, College of Life and Environmental Sciences
[2] University of Leeds,Sustainability Research Institute and ESRC Centre for Climate Change Economics and Policy, School of Earth and Environment
[3] University of Exeter,Engineering, College of Engineering, Mathematics and Physical Sciences
来源
Water Resources Management | 2013年 / 27卷
关键词
Water resources; Uncertainty; Climate change; Planning; Demand management; Info-Gap;
D O I
暂无
中图分类号
学科分类号
摘要
Water resource managers are required to develop comprehensive water resources plans based on severely uncertain information of the effects of climate change on local hydrology and future socio-economic changes on localised demand. In England and Wales, current water resources planning methodologies include a headroom estimation process separate from water resource simulation modelling. This process quantifies uncertainty based on only one point of an assumed range of deviations from the expected climate and projected demand 25 years into the future. This paper utilises an integrated method based on Information-Gap decision theory to quantitatively assess the robustness of various supply side and demand side management options over a broad range of plausible futures. Findings show that beyond the uncertainty range explored with the headroom method, a preference reversal can occur, i.e. some management options that underperform at lower uncertainties, outperform at higher levels of uncertainty. This study also shows that when 50 % or more of the population adopts demand side management, efficiency related measures and innovative options such as rainwater collection can perform equally well or better than some supply side options The additional use of Multi-Criteria Decision Analysis shifts the focus away from reservoir expansion options, that perform best in regards to water availability, to combined strategies that include innovative demand side management actions of rainwater collection and greywater reuse as well efficiency measures and additional regional transfers. This paper illustrates how an Information-Gap based approach can offer a comprehensive picture of potential supply/demand futures and a rich variety of information to support adaptive management of water systems under severe uncertainty.
引用
收藏
页码:1149 / 1172
页数:23
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