School of Environmental Science and Engineering, Guangdong University of Technology, Guangzhou 510006, China.
School of Environmental Science and Engineering, Guangdong University of Technology, Guangzhou 510006, China.
Sci Total Environ. 2023 Jan 20;857(Pt 3):159636. doi: 10.1016/j.scitotenv.2022.159636. Epub 2022 Oct 22.
The accurate identification of pollution sources is important for controlling soil pollution. However, the widely used Positive matrix factorization (PMF) model generally relies on knowledge and experience to accurately identify pollution sources; thus, this method faces significant challenges in objectively identifying soil pollution sources. Herein, we established a comprehensive source analysis framework using factor identification and geospatial analysis, and revealed the factors contributing to trace metal(loid) (TM) pollution in soil in the Pearl River Delta (PRD), China. Using the PMF model, we initially considered that the PRD may be affected by natural, atmospheric, traffic and industrial, and agricultural sources. Moreover, Geodetector model detected the relationship between TMs and 12 environmental variables based on the strong spatial "source-sink" relationship of pollutants. The parent material and digital elevation model were the key factors predicting the accumulation of Cr, Ni, and Cu. Industries and roads were the most important determinants of Pb, Zn, and Cd, whereas atmospheric deposition was more important for Hg accumulation. The accumulation of As was found to be closely related to agricultural activities such as the application of chemical fertilizers and pesticides. The spatial autocorrelation between soil TM pollution and environmental variables further supports this hypothesis. Overall, the obtained results showed that proposed approach improved the accuracy of source apportionment and provided a basis for soil pollution control.
准确识别污染源对于控制土壤污染至关重要。然而,广泛应用的正矩阵因子分解(PMF)模型通常依赖于知识和经验来准确识别污染源;因此,这种方法在客观识别土壤污染源方面面临重大挑战。在这里,我们建立了一个使用因子识别和地理空间分析的综合源分析框架,并揭示了中国珠江三角洲(PRD)土壤中痕量金属(loid)(TM)污染的因素。使用 PMF 模型,我们最初认为 PRD 可能受到自然、大气、交通和工业以及农业源的影响。此外,基于污染物强烈的空间“源-汇”关系,地理探测器模型检测了 TMs 与 12 个环境变量之间的关系。母质和数字高程模型是预测 Cr、Ni 和 Cu 积累的关键因素。工业和道路是 Pb、Zn 和 Cd 的最重要决定因素,而大气沉积对 Hg 的积累更为重要。As 的积累与化肥和农药等农业活动密切相关。土壤 TM 污染与环境变量之间的空间自相关进一步支持了这一假设。总体而言,所获得的结果表明,所提出的方法提高了源分配的准确性,并为土壤污染控制提供了依据。