2006
DOI: 10.1111/j.1745-6584.2006.00176.x
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Simulation/Optimization Modeling for Robust Pumping Strategy Design

Abstract: A new simulation/optimization modeling approach is presented for addressing uncertain knowledge of aquifer parameters. The Robustness Enhancing Optimizer (REO) couples genetic algorithm and tabu search as optimizers and incorporates aquifer parameter sensitivity analysis to guide multiple-realization optimization. The REO maximizes strategy robustness for a pumping strategy that is optimal for a primary objective function (OF), such as cost. The more robust a strategy, the more likely it is to achieve manageme… Show more

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Cited by 17 publications
(4 citation statements)
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“…To overcome this problem, we combined mutual information theory and a genetic algorithm to minimize entropy. A variety of genetic algorithm approaches have been employed in the past to address hydrologic problems, such as groundwater remediation [ Kalwij and Peralta , ; Yan and Minsker , ; Chang et al ., ], reservoir operation [ Kerachian and Karamouz , ], groundwater level prediction [ Jha and Sahoo , ], and water quality [ Yeh et al ., ; Jalalkamali , ]. Our proposed method uses genetic algorithms to identify predictors with less redundancy and more relevance to modeling the desired output parameter.…”
Section: Introductionmentioning
confidence: 99%
“…To overcome this problem, we combined mutual information theory and a genetic algorithm to minimize entropy. A variety of genetic algorithm approaches have been employed in the past to address hydrologic problems, such as groundwater remediation [ Kalwij and Peralta , ; Yan and Minsker , ; Chang et al ., ], reservoir operation [ Kerachian and Karamouz , ], groundwater level prediction [ Jha and Sahoo , ], and water quality [ Yeh et al ., ; Jalalkamali , ]. Our proposed method uses genetic algorithms to identify predictors with less redundancy and more relevance to modeling the desired output parameter.…”
Section: Introductionmentioning
confidence: 99%
“…This entails solving an optimization problem simultaneously for multiple realizations having equal statistical probability of existence (Wagner and Gorelick 1989;Aly and Peralta 1999). More recently, the patented Robustness Enhancing Optimizer S-O technique maximizes the robustness of a computed optimal strategy without degrading the value of the primary economic or volumetric objective function (Kalwij and Peralta 2006). MCMO is a new, previously unreported, application that differs from the preceding in simultaneously optimizing for multiple realizations based upon different conceptual models of the physical system.…”
Section: Existing Multi-modeling Practicesmentioning
confidence: 98%
“…In that paradigm, calibrated models are ranked based on performance scores, facilitating the generation of ensemble-averaged predictions. In simulation-optimization applications, multimodel plausibility is more commonly treated as an issue of design reliability or robustness [14,25,47]. The resulting analysis focuses on identifying low-cost designs that are feasible with high frequency (e.g.…”
Section: Related Workmentioning
confidence: 99%