Institute of Geochemistry and Analytical Chemistry, Russian Academy of Sciences, Moscow, 119991, Russian Federation.
Institute of Environmental Sciences, Kazan Federal University, Kazan, 420097, Russian Federation.
Environ Geochem Health. 2022 Feb;44(2):511-526. doi: 10.1007/s10653-021-00853-x. Epub 2021 Feb 20.
Assessment of spatial patterns of potentially toxic metals is one of the most urgent tasks in soil chemistry. In this study, descriptive statistics and three methods of multivariate statistical analysis, such as the hierarchical cluster analysis (HCA), correlation analysis, and conditional inference tree (CIT), were used to identify patterns and potential sources of heavy metals (Co, Ni, Cu, Cr, Pb, MnO, and Zn). The investigation was carried out on 81 sample points, using 20 testing parameters. A strong positive correlation found among Ni, Cu, Zn, and HCA results has confirmed the common origin of the elements from waste discharge. Hierarchical CA divided the 81 test sites into 5 classes based on the soil quality and HMs contamination similarity. Regression trees for Cr, Pb, Zn, and Cu were verified by the splitting factor including HMs content and soil chemistry factors. The CIT has revealed that the elements (Cr, Pb, Zn, and Cu) concentration values are split at the first level by some other metal, indicating common anthropogenic impact resulting from industrial waste discharges. The factors at the next hierarchical level of splitting, in addition to the HMs, include compounds belonging to soil chemistry variables (SiO, AlO, and KO). The CIT nonlinear regression model is in good agreement with the data: R values for log-transformed concentrations of Cr, Pb, Zn, and Cu are equal to 0.775; 0.774; 0.775; 0.804, respectively.
评估潜在有毒金属的空间分布是土壤化学中最紧迫的任务之一。本研究采用描述性统计和三种多元统计分析方法,如层次聚类分析(HCA)、相关分析和条件推断树(CIT),来识别重金属(Co、Ni、Cu、Cr、Pb、MnO 和 Zn)的模式和潜在来源。在 81 个采样点进行了调查,使用了 20 个测试参数。Ni、Cu、Zn 之间的强正相关以及 HCA 结果证实了这些元素来自废物排放的共同来源。基于土壤质量和重金属污染相似性,HCA 将 81 个测试点分为 5 类。Cr、Pb、Zn 和 Cu 的回归树通过包括重金属含量和土壤化学因素的分裂因子进行了验证。CIT 揭示了元素(Cr、Pb、Zn 和 Cu)浓度值在第一级由其他金属分裂,表明工业废物排放造成了共同的人为影响。分裂的下一层次的因素,除了重金属外,还包括属于土壤化学变量(SiO、AlO 和 KO)的化合物。CIT 非线性回归模型与数据非常吻合:Cr、Pb、Zn 和 Cu 的对数转换浓度的 R 值分别等于 0.775、0.774、0.775 和 0.804。