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Optimal Design of Multitype Groundwater Monitoring Networks Using Easily Accessible Tools

机译:使用易于访问的工具对多种类型的地下水监测网络进行优化设计

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摘要

Monitoring networks are expensive to establish and to maintain. In this paper, we extend an existing data-worth estimation method from the suite of PEST utilities with a global optimization method for optimal sensor placement (called optimal design) in groundwater monitoring networks. Design optimization can include multiple simultaneous sensor locations and multiple sensor types. Both location and sensor type are treated simultaneously as decision variables. Our method combines linear uncertainty quantification and a modified genetic algorithm for discrete multilocation, multitype search. The efficiency of the global optimization is enhanced by an archive of past samples and parallel computing. We demonstrate our methodology for a groundwater monitoring network at the Steinlach experimental site, south-western Germany, which has been established to monitor rivergroundwater exchange processes. The target of optimization is the best possible exploration for minimum variance in predicting the mean travel time of the hyporheic exchange. Our results demonstrate that the information gain of monitoring network designs can be explored efficiently and with easily accessible tools prior to taking new field measurements or installing additional measurement points. The proposed methods proved to be efficient and can be applied for model-based optimal design of any type of monitoring network in approximately linear systems. Our key contributions are (1) the use of easy-to-implement tools for an otherwise complex task and (2) yet to consider data-worth interdependencies in simultaneous optimization of multiple sensor locations and sensor types.
机译:建立和维护监视网络非常昂贵。在本文中,我们将PEST实用程序套件中的现有数据价值估算方法扩展为用于地下水监测网络中传感器最佳放置(称为最佳设计)的全局优化方法。设计优化可以包括多个同时的传感器位置和多种传感器类型。位置和传感器类型同时被视为决策变量。我们的方法结合了线性不确定性量化和改进的遗传算法,用于离散多位置,多类型搜索。通过存档过去的样本和并行计算,可以提高全局优化的效率。我们在德国西南部的Steinlach实验场展示了用于地下水监测网络的方法论,该实验场已建立,用于监测河水与地下水的交换过程。优化的目标是在预测流变交换的平均行进时间时对最小方差的最佳探索。我们的结果表明,在进行新的现场测量或安装其他测量点之前,可以使用易于访问的工具有效地探索监视网络设计的信息增益。所提出的方法被证明是有效的,并且可以应用于近似线性系统中任何类型的监视网络的基于模型的优化设计。我们的主要贡献是(1)在其他复杂任务中使用易于实现的工具,以及(2)在同时优化多个传感器位置和传感器类型时尚未考虑数据价值的相互依赖性。

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  • 来源
    《Ground water》 |2016年第6期|861-870|共10页
  • 作者单位

    Tech Univ Dresden, Dept Hydrol, D-01069 Dresden, Germany|Univ Tubingen, Water & Earth Syst Sci WESS Competence Cluster, Inst Geosci, D-72076 Tubingen, Germany|Lincoln Agritech Ltd, Ruakura Res Ctr, Hamilton 3240, New Zealand;

    Univ Tubingen, Water & Earth Syst Sci WESS Competence Cluster, Inst Geosci, D-72076 Tubingen, Germany|Univ Stuttgart, Inst Modelling Hydraul & Environm Syst SimTech LS, D-70569 Stuttgart, Germany;

    Univ Tubingen, Water & Earth Syst Sci WESS Competence Cluster, Inst Geosci, D-72076 Tubingen, Germany|Univ Stuttgart, Inst Modelling Hydraul & Environm Syst SimTech LS, D-70569 Stuttgart, Germany;

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