[Spatial Differentiation and Influencing Factor Analysis of Soil Heavy Metal Content at Town Level Based on Geographic Detector].

Cang Gong, Liang Wang, Shun-Xiang Wang, Zhi-Xiang Zhang, Hang Dong, Jiu-Fen Liu, De-Wei Wang, Bu-Qing Yan, Ying Chen
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引用次数: 3

Abstract

Geographic detectors can quickly detect spatial stratified heterogeneity and quantitatively reveal the intensity of driving factors of heavy metal content, which is of great significance for the prevention, control, and remediation of soil heavy metal pollution. In order to reveal the spatial differentiation and influencing factors of soil heavy metal content on the town-scale, 788 topsoil samples were collected from a town in the hinterland of Chengdu Plain. Soil heavy metal (Cd, Hg, As, Cu, Pb, Cr, Zn, and Ni) pollution risk assessments were carried out by using the geo-accumulation index method. Additionally, based on the geographic detector model, 15 factors such as soil properties, topography, soil forming factors, and distance were taken as independent variables, and the contents of each heavy metal element were taken as dependent variables to explore the spatial differentiation and influencing factors of heavy metal content in soils. The results showed that:the average contents of Hg, As, Pb, Cr, Cu, Ni, and Zn in the study area were 1.06-1.93 times the background value of Chengdu, and the content of Cd was lower than the background value; among them, Hg reached the light pollution level, and the other seven heavy metals were at the non-pollution level. The spatial distribution of eight heavy metals was significantly different, the correlation among the elements was significant, and a significant correlation was found between most heavy meals with soil properties; however, the correlation with distance factor and topographic factor was relatively weak. The factor detection showed that TP, TK, pH, TOC, elevation, and distance from the railway had the most significant explanatory power for the heavy metal contents. Interaction detection showed that the interaction between soil properties and other factors was the dominant factor for the spatial variation in heavy metals, and elevation, distance from residential area, distance from railways, and distance from industrial areas were also important factors. Risk detection showed that Hg had the most significant difference in the subregion of elevation and distance from railway, whereas the other seven heavy metals had the most significant difference in the sub-regions of influencing factors of soil properties. The spatial distribution of heavy metals varied significantly in soil at the town-scale, which was closely related to soil properties, topography, and human activities in the study area.

基于地理探测器的城镇土壤重金属含量空间分异及影响因素分析[j]。
地理探测器可以快速检测土壤重金属含量的空间分层异质性,定量揭示土壤重金属含量驱动因素的强度,对土壤重金属污染的防治和修复具有重要意义。为揭示城镇尺度土壤重金属含量的空间分异及其影响因素,在成都平原腹地某城镇采集表层土壤样品788份。采用地积累指数法对土壤重金属(Cd、Hg、As、Cu、Pb、Cr、Zn、Ni)污染风险进行评价。此外,在地理探测器模型的基础上,以土壤性质、地形、土壤形成因素、距离等15个因子为自变量,以各重金属元素含量为因变量,探讨土壤重金属含量的空间分异及其影响因素。结果表明:研究区Hg、As、Pb、Cr、Cu、Ni、Zn的平均含量是成都市背景值的1.06 ~ 1.93倍,Cd含量低于背景值;其中汞达到轻污染水平,其余7种重金属处于无污染水平。8种重金属的空间分布差异显著,各元素间的相关性显著,且多数重金属与土壤性质之间存在显著相关性;但与距离因子和地形因子的相关性较弱。因子检测结果表明,TP、TK、pH、TOC、海拔高度和距铁路距离对重金属含量的解释力最显著。交互作用检测表明,土壤性质与其他因素的交互作用是影响重金属空间变异的主导因素,海拔高度、离居民区距离、离铁路距离和离工业区距离也是影响重金属空间变异的重要因素。风险检测结果显示,Hg在高程和铁路距离分区差异最显著,其他7种重金属在土壤性质影响因素分区差异最显著。城镇尺度土壤重金属空间分布差异显著,这与研究区土壤性质、地形和人类活动密切相关。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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