Department of Statistics, University of California Berkeley, Berkeley, CA.
Department of Mathematics, Leuven Statistics Research Centre, KU Leuven, Leuven, Belgium.
Ground Water. 2023 Jul-Aug;61(4):563-573. doi: 10.1111/gwat.13261. Epub 2022 Oct 8.
Hydrogeological information about an aquifer is difficult and costly to obtain, yet essential for the efficient management of groundwater resources. Transferring information from sampled sites to a specific site of interest can provide information when site-specific data is lacking. Central to this approach is the notion of site similarity, which is necessary for determining relevant sites to include in the data transfer process. In this paper, we present a data-driven method for defining site similarity. We apply this method to selecting groups of similar sites from which to derive prior distributions for the Bayesian estimation of hydraulic conductivity measurements at sites of interest. We conclude that there is now a unique opportunity to combine hydrogeological expertise with data-driven methods to improve the predictive ability of stochastic hydrogeological models.
含水层的水文地质信息难以获取且成本高昂,但对于地下水资 源的有效管理至关重要。当缺乏特定地点的数据时,从采样地点转 移信息可以提供信息。这种方法的核心是地点相似性的概念,这是 确定要包含在数据传输过程中的相关地点所必需的。在本文中,我 们提出了一种基于数据的方法来定义地点相似性。我们应用这种方 法从相似地点中选择组,以从这些组中推导出贝叶斯估计水力传导 率测量的先验分布,这些组是感兴趣的地点。我们得出的结论是,现 在有一个独特的机会将水文地质专业知识与数据驱动方法相结合, 以提高随机水文地质模型的预测能力。