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Spatial Evolutionary Algorithm for Large-Scale Groundwater Management

机译:大型地下水管理的空间进化算法

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Large-scale groundwater management problems pose great computational challenges for decision making because of the spatial complexity and heterogeneity. This study describes a modeling framework to solve largescale groundwater management problems using a newly developed spatial evolutionary algorithm (SEA). This method incorporates spatial patterns of the hydrological conditions to facilitate the optimal search of spatial decision variables. The SEA employs a hierarchical tree structure to represent spatial variables in a more efficient way than the data structure used by a regular EA. Furthermore, special crossover, mutation and selection operators are designed in accordance with the tree representation. In this paper, the SEA was applied to searching for the maximum vegetation coverage associated with a distributed groundwater system in an arid region. Computational experiments demonstrate the efficiency of SEA for large-scale spatial optimization problems. The extension of this algorithm for other water resources management problems.
机译:由于空间复杂性和异质性,大规模地下水管理问题对决策产生了巨大的计算挑战。本研究描述了使用新开发的空间进化算法(SEA)解决大型地下水管理问题的建模框架。该方法包括水文条件的空间模式,以便于空间决策变量的最佳搜索。大海采用分层树结构,以比常规EA所使用的数据结构更有效的方式代表空间变量。此外,特殊的交叉,突变和选择操作员根据树形表示设计。在本文中,海洋应用于在干旱地区中寻找与分布地下水系统相关的最大植被覆盖。计算实验表明了海上大规模空间优化问题的效率。该算法对其他水资源管理问题的扩展。

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