Department of Soil Science, Faculty of Agriculture, University of Zanjan, Zanjan, Iran.
Environ Monit Assess. 2020 Feb 4;192(3):162. doi: 10.1007/s10661-020-8116-6.
The aim of this study was to quantify heavy metal pollution for environmental assessment of soil quality using a flexible approach based on multivariate analysis. The study was conducted using 241 soil samples collected from agricultural, urban and rangeland areas in northwestern Iran. The heavy metals causing soil pollution (SP) in the study area were determined. The efficiency of principal component analysis (PCA) and discriminate analysis (DA) were compared to identify the critical heavy metals causing SP. Fourteen soil pollution indices were developed using non-linear and linear scoring equations and different integration methods. The indices were validated using the integrated pollution and potential ecological risk indices and by comparing their ability to detect soil pollution risk levels. Chromium (Cr), lead (Pb), Zinc (Zn) and copper (Cu) were identified as the significant pollutant elements using PCA, and the main pollutant elements identified using DA comprised cadmium (Cd), Zn and Pb. DA yielded a better data set for indexing SP and indicated high pollution risks for Cd > Pb > Zn. Sources of heavy metals were reliably identified using PCA, variation assessment and interrelationship evaluation of soil variables. Cr, nickel (Ni) and cobalt (Co) were found to have geogenic sources, and anthropogenic sources controlled the accumulation of Pb, Zn, Cd and Cu in soil. Linear function and additive integration were the best scoring and integrating methods for indexing HMP. The multivariate analysis provided a reliable and rapid method for indexing and mapping soil HMP.
本研究旨在采用基于多元分析的灵活方法,量化重金属污染,对土壤质量进行环境评估。该研究使用 241 个土壤样本,这些样本取自伊朗西北部的农业、城市和牧场地区。确定了造成该研究区域土壤污染(SP)的重金属。比较了主成分分析(PCA)和判别分析(DA)的效率,以确定造成 SP 的关键重金属。使用非线性和线性评分方程以及不同的积分方法开发了 14 种土壤污染指数。使用综合污染和潜在生态风险指数以及比较其检测土壤污染风险水平的能力对这些指数进行了验证。PCA 确定 Cr、Pb、Zn 和 Cu 为显著污染物元素,而 DA 确定 Cd、Zn 和 Pb 为主要污染物元素。DA 为 SP 指数编制提供了更好的数据集,表明 Cd > Pb > Zn 存在高污染风险。PCA、土壤变量的变化评估和相互关系评价可靠地识别了重金属的来源。Cr、Ni 和 Co 被发现具有地球成因来源,而人为来源控制了 Pb、Zn、Cd 和 Cu 在土壤中的积累。线性函数和加和积分是编制 HMP 指数的最佳评分和积分方法。多元分析为编制和绘制土壤 HMP 提供了可靠且快速的方法。