Institute of Geographic Sciences and Natural Resources Research, Chinese Academy of Sciences, Beijing 100101, China; University of Chinese Academy of Sciences, Beijing 100049, China.
Institute of Geographic Sciences and Natural Resources Research, Chinese Academy of Sciences, Beijing 100101, China; University of Chinese Academy of Sciences, Beijing 100049, China.
J Hazard Mater. 2022 Sep 15;438:129468. doi: 10.1016/j.jhazmat.2022.129468. Epub 2022 Jun 27.
The accurate identification of sources for soil heavy metal(loid) is difficult, especially for multi-functional parks, which include multiple pollution sources. Aiming to identify the apportionment and location of heavy metal(loid)s pollution sources, this study established a method combining principal component analysis (PCA), Geodetector, and multiple linear regression of distance (MLRD) in soil and dust, taking a multi-functional industrial park in Anhui Province, China, as an example. PCA and Geodetector were used to determine the type and possible location of the source. Source apportionment of individual elements is achieved by MLRD. The detection results quantified the spatial explanatory power (0.21 ≤ q ≤ 0.51) of the potential source targets (e.g., river and mining area) for the PCA factors. A comparative analysis of the regression equation (Model 1 and Model 3) indicated that the river (0.50 ≤ R ≤0.78), main road (0.47 ≤ R ≤ 0.81), and mine (0.14 ≤ R ≤ 0.92) (p < 0.01) were the main sources. Different from the traditional source apportionment methods, the current method could obtain the exact contributing sources, not just the type of source (e.g., industrial activities), which could be useful for pollution control in areas with multiple sources.
土壤重金属(类)污染源的准确识别具有一定难度,对于包含多个污染源的多功能公园来说尤其如此。本研究以安徽省某多功能工业园区为例,建立了一种结合主成分分析(PCA)、地理探测器和距离多元线性回归(MLRD)的方法,用于识别土壤和灰尘中重金属(类)污染的来源分配和位置。PCA 和地理探测器用于确定污染源的类型和可能位置。通过 MLRD 实现对个别元素的源分配。检测结果量化了潜在源目标(如河流和矿区)对 PCA 因子的空间解释能力(0.21≤q≤0.51)。对回归方程(模型 1 和模型 3)的比较分析表明,河流(0.50≤R≤0.78)、主要道路(0.47≤R≤0.81)和矿区(0.14≤R≤0.92)(p<0.01)是主要污染源。与传统的源分配方法不同,当前的方法可以获得确切的贡献源,而不仅仅是源的类型(例如,工业活动),这对于具有多个源的地区的污染控制可能很有用。