Approaches to optimal aquifer management and intelligent control in a multiresolutional decision support system

被引:0
|
作者
Shlomo Orr
Alexander M. Meystel
机构
[1] MRDS Inc.,ECE Department
[2] Drexel University,undefined
来源
Hydrogeology Journal | 2005年 / 13卷
关键词
Genetic Algorithm; Hydraulic Conductivity; Artificial Neural Network; Monte Carlo Simulation; Pareto Front;
D O I
暂无
中图分类号
学科分类号
摘要
Despite remarkable new developments in stochastic hydrology and adaptations of advanced methods from operations research, stochastic control, and artificial intelligence, solutions of complex real-world problems in hydrogeology have been quite limited. The main reason is the ultimate reliance on first-principle models that lead to complex, distributed-parameter partial differential equations (PDE) on a given scale. While the addition of uncertainty, and hence, stochasticity or randomness has increased insight and highlighted important relationships between uncertainty, reliability, risk, and their effect on the cost function, it has also (a) introduced additional complexity that results in prohibitive computer power even for just a single uncertain/random parameter; and (b) led to the recognition in our inability to assess the full uncertainty even when including all uncertain parameters. A paradigm shift is introduced: an adaptation of new methods of intelligent control that will relax the dependency on rigid, computer-intensive, stochastic PDE, and will shift the emphasis to a goal-oriented, flexible, adaptive, multiresolutional decision support system (MRDS) with strong unsupervised learning (oriented towards anticipation rather than prediction) and highly efficient optimization capability, which could provide the needed solutions of real-world aquifer management problems. The article highlights the links between past developments and future optimization/planning/control of hydrogeologic systems.
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页码:223 / 246
页数:23
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