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Comparison of genetic algorithms with other methods for the ambient groundwater monitoring network planning

机译:遗传算法与其他方法用于地下水地下水监测网络规划的比较

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摘要

This work concentrates on the ambient groundwater monitoring network design. This kind of planning largely concerns itself with constructing a flexible and efficient monitoring network. This study presents a novel procedure that combines genetic algorithms (GAs) with geostatistical theory. The proposed method is compared to other methods that also integrate geostatistical theory with other optimization schemes, including the sequential design method (SDM), branch and bound method (BBM) and non-linear programming method (NPM). These methods are implemented and applied to a simplified field case. The findings indicate that the SDM technique provides a computationally efficient solution for a preliminary study. On the other hand, the multiple choices given by the GAs provide decision-makers with flexibility to consider factors that geostatistics can not.
机译:这项工作集中于周围地下水监测网络的设计。这种计划主要涉及构建灵活高效的监控网络。这项研究提出了一种新颖的程序,将遗传算法(GA)与地统计理论相结合。将该方法与其他将地统计学理论与其他优化方案相结合的方法进行了比较,包括顺序设计方法(SDM),分支定界方法(BBM)和非线性规划方法(NPM)。这些方法已实现并应用于简化的现场案例。研究结果表明,SDM技术为初步研究提供了计算有效的解决方案。另一方面,GA给出的多种选择使决策者可以灵活地考虑地质统计学无法考虑的因素。

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