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Data-Worth Assessment for a Three-Dimensional Optimal Design in Nonlinear Groundwater Systems

机译:非线性地下水系统三维优化设计的数据价值评估

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摘要

Groundwater model predictions are often uncertain due to inherent uncertainties in model input data. Monitored field data are commonly used to assess the performance of a model and reduce its prediction uncertainty. Given the high cost of data collection, it is imperative to identify the minimum number of required observation wells and to define the optimal locations of sampling points in space and depth. This study proposes a design methodology to optimize the number and location of additional observation wells that will effectively measure multiple hydrogeological parameters at different depths. For this purpose, we incorporated Bayesian model averaging and genetic algorithms into a linear data-worth analysis in order to conduct a three-dimensional location search for new sampling locations. We evaluated the methodology by applying it along a heterogeneous coastal aquifer with limited hydrogeological data that is experiencing salt water intrusion (SWI). The aim of the model was to identify the best locations for sampling head and salinity data, while reducing uncertainty when predicting multiple variables of SWI. The resulting optimal locations for new observation wells varied with the defined design constraints. The optimal design (OD) depended on the ratio of the start-up cost of the monitoring program and the installation cost of the first observation well. The proposed methodology can contribute toward reducing the uncertainties associated with predicting multiple variables in a groundwater system.
机译:由于模型输入数据的固有不确定性,地下水模型的预测通常是不确定的。监视的现场数据通常用于评估模型的性能并减少其预测不确定性。鉴于数据收集的高昂成本,必须确定所需观察井的最少数量,并确定空间和深度上采样点的最佳位置。这项研究提出了一种设计方法,以优化可有效测量不同深度的多个水文地质参数的附加观测井的数量和位置。为此,我们将贝叶斯模型平均和遗传算法纳入了线性数据有价值的分析中,以便对新的采样位置进行三维位置搜索。我们通过将其应用于沿海盐湖中具有有限水文地质数据且遭受盐水入侵(SWI)的非均质含水层来评估该方法。该模型的目的是确定采样头和盐度数据的最佳位置,同时减少预测SWI的多个变量时的不确定性。新观测井的最佳位置随定义的设计约束而变化。最佳设计(OD)取决于监控程序的启动成本与第一口观察井的安装成本之比。所提出的方法可以有助于减少与预测地下水系统中多个变量相关的不确定性。

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  • 来源
    《Ground water》 |2019年第4期|612-631|共20页
  • 作者单位

    Amer Univ Beirut Dept Civil & Environm Engn Bliss St POB 11-0236 Beirut 11072020 Lebanon;

    Aarhus Univ Dept Geosci DK-8000 Aarhus Denmark;

    Amer Univ Beirut Dept Civil & Environm Engn Bliss St POB 11-0236 Beirut 11072020 Lebanon|Univ Calif Davis Dept Land Air & Water Resources Davis CA 95616 USA;

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  • 正文语种 eng
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