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首页> 外文期刊>International Journal of Water Resources and Environmental Engineering >A multi-objective optimization approach to groundwater management using genetic algorithm
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A multi-objective optimization approach to groundwater management using genetic algorithm

机译:基于遗传算法的地下水管理多目标优化方法

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摘要

Management of groundwater resources is very important for regions where freshwater supply is naturally limited. Long-term planning of groundwater usage requires method-based new decision support tools. These tools must be able to predict the change in the groundwater storage with sufficient accuracy, and must allow exploring management scenarios with respect to different criteria such as sustainability and cost. So, a multi-objective optimization algorithm is used for groundwater management problem. In this paper, a genetic algorithm with two additional techniques, Pareto optimality ranking and fitness sharing, is applied to simultaneously maximize the pumping rate and minimize pumping cost. The methodology proposed has more Pareto optimal solutions. However, it is desirable to get, and to find the ones scattered uniformly over the Pareto frontier in order to provide a variety of compromise solutions to help the decision maker. A groundwater resources management model in which performed through a combined simulation-optimization model is used. This multi-objective genetic algorithm (MOGA) of optimization combines the modular three-dimensional finite-difference (MODFLOW) and genetic algorithm (GA). MOGA model is applied in El-Farafra oasis, Egypt to develop the maximum pumping rate and minimum operation cost as well as the prediction of the future changes in both pumping rate and pumping operation cost. It also makes a feasible solution in groundwater management. Finally, a compromise solution is presented from a set of Pareto optimal solutions.
机译:地下水资源管理对于淡水供应自然受限的地区非常重要。地下水使用的长期规划需要基于方法的新决策支持工具。这些工具必须能够以足够的精度预测地下水储量的变化,并且必须允许根据不同的标准(例如可持续性和成本)探索管理方案。因此,针对地下水管理问题采用了多目标优化算法。在本文中,采用了遗传算法和两种附加技术,即帕累托最优性排序和适应度共享,以同时最大化抽水率和最小化抽水成本。所提出的方法具有更多的帕累托最优解。但是,希望获得并找到均匀分布在帕累托边界上的那些,以便提供各种折衷解决方案来帮助决策者。使用地下水资源管理模型,该模型通过组合的模拟-优化模型执行。这种优化的多目标遗传算法(MOGA)将模块化的三维有限差分(MODFLOW)和遗传算法(GA)相结合。 MOGA模型应用于埃及的El-Farafra绿洲,以开发最大抽水率和最低运营成本,并预测抽水率和抽水运营成本的未来变化。这也为地下水管理提供了可行的解决方案。最后,从一组帕累托最优解中提出了折衷方案。

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