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Probabilistic assessment of spatial heterogeneity of natural background concentrations in large-scale groundwater bodies through Functional Geostatistics

机译:功能性地稳济机构在大型地下水体中自然背景浓度空间异质性的概率评价

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摘要

We propose and exemplify a framework to assess Natural Background Levels (NBLs) of target chemical species in large-scale groundwater bodies based on the context of Object Oriented Spatial Statistics. The approach enables one to fully exploit the richness of the information content embedded in the probability density function (PDF) of the variables of interest, as estimated from historical records of chemical observations. As such, the population of the entire distribution functions of NBL concentrations monitored across a network of monitoring boreholes across a given aquifer is considered as the object of the spatial analysis. Our approach starkly differs from previous studies which are mainly focused on the estimation of NBLs on the basis of the median or selected quantiles of chemical concentrations, thus resulting in information loss and limitations related to the need to invoke parametric assumptions to obtain further summary statistics in addition to those considered for the spatial analysis. Our work enables one to (ⅰ) assess spatial dependencies among observed PDFs of natural background concentrations, (ⅱ) provide spatially distributed kriging predictions of NBLs, as well as (ⅲ) yield a robust quantification of the ensuing uncertainty and probability of exceeding given threshold concentration values via stochastic simulation. We illustrate the approach by considering the (probabilistic) characterization of spatially variable NBLs of ammonium and arsenic detected at a monitoring network across a large scale confined groundwater body in Northern Italy.
机译:我们提出并举例说明了一个框架,以基于面向对象的空间统计的背景,在大型地下水体中评估目标化学品种的自然背景水平(NBL)。该方法使一个人能够充分利用嵌入在感兴趣的变量的概率密度函数(PDF)中的信息内容的丰富性,从化学观察的历史记录估计。因此,在给定含水层的监测钻孔网络上监测的NBL浓度的整个分布函数的群体被认为是空间分析的目的。我们的方法与以前的研究略有不同,主要集中在中位数或选定的化学浓度的中位数估计NBL,从而导致信息丢失和与需要援引参数假设以获得进一步的摘要统计数据的信息丢失和限制除了考虑空间分析的人。我们的作品使一至(Ⅰ)评估观察到的自然背景浓度的PDF之间的空间依赖性,(Ⅱ)提供NBL的空间分布的Kriging预测,以及(Ⅲ)产生随后的不确定度和超过给定阈值的稳健量化通过随机仿真浓度值。我们通过考虑(概率)表征在意大利北部的大规模狭窄的地下水体在监测网络中检测到的(概率)表征的(概率)表征铵和砷的氨基和砷。

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