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基于回归克里金法的地球成因氡潜能制图。

Mapping geogenic radon potential by regression kriging.

机构信息

Institute for Soil Sciences and Agricultural Chemistry, Centre for Agricultural Research, Hungarian Academy of Sciences, Department of Environmental Informatics, Herman Ottó út 15, 1022 Budapest, Hungary.

Department of Chemistry, Institute of Environmental Science, Szent István University, Páter Károly u. 1, Gödöllő 2100, Hungary.

出版信息

Sci Total Environ. 2016 Feb 15;544:883-91. doi: 10.1016/j.scitotenv.2015.11.175. Epub 2015 Dec 17.

Abstract

Radon ((222)Rn) gas is produced in the radioactive decay chain of uranium ((238)U) which is an element that is naturally present in soils. Radon is transported mainly by diffusion and convection mechanisms through the soil depending mainly on the physical and meteorological parameters of the soil and can enter and accumulate in buildings. Health risks originating from indoor radon concentration can be attributed to natural factors and is characterized by geogenic radon potential (GRP). Identification of areas with high health risks require spatial modeling, that is, mapping of radon risk. In addition to geology and meteorology, physical soil properties play a significant role in the determination of GRP. In order to compile a reliable GRP map for a model area in Central-Hungary, spatial auxiliary information representing GRP forming environmental factors were taken into account to support the spatial inference of the locally measured GRP values. Since the number of measured sites was limited, efficient spatial prediction methodologies were searched for to construct a reliable map for a larger area. Regression kriging (RK) was applied for the interpolation using spatially exhaustive auxiliary data on soil, geology, topography, land use and climate. RK divides the spatial inference into two parts. Firstly, the deterministic component of the target variable is determined by a regression model. The residuals of the multiple linear regression analysis represent the spatially varying but dependent stochastic component, which are interpolated by kriging. The final map is the sum of the two component predictions. Overall accuracy of the map was tested by Leave-One-Out Cross-Validation. Furthermore the spatial reliability of the resultant map is also estimated by the calculation of the 90% prediction interval of the local prediction values. The applicability of the applied method as well as that of the map is discussed briefly.

摘要

氡((222)Rn)气体是铀((238)U)放射性衰变链中产生的一种元素,它天然存在于土壤中。氡主要通过扩散和对流机制在土壤中迁移,主要取决于土壤的物理和气象参数,并且可以进入和积聚在建筑物中。室内氡浓度引起的健康风险可归因于自然因素,其特征为地球成因氡潜力(GRP)。高健康风险地区的识别需要空间建模,即氡风险图的绘制。除了地质学和气象学外,土壤物理性质在确定 GRP 方面也起着重要作用。为了为匈牙利中部的一个模型区域编制可靠的 GRP 图,考虑了代表 GRP 形成环境因素的空间辅助信息,以支持对局部测量的 GRP 值进行空间推断。由于测量点的数量有限,因此搜索了有效的空间预测方法,以便为更大的区域构建可靠的地图。回归克里金法(RK)用于使用土壤、地质、地形、土地利用和气候方面的空间详尽辅助数据进行插值。RK 将空间推断分为两部分。首先,通过回归模型确定目标变量的确定性分量。多元线性回归分析的残差代表空间变化但相关的随机分量,该随机分量由克里金插值进行插值。最终的地图是两个分量预测的总和。通过留出一个样本进行交叉验证来测试地图的整体准确性。此外,还通过计算局部预测值的 90%预测区间来估计生成地图的空间可靠性。简要讨论了所应用方法和地图的适用性。

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