College of Geography and Environment, Shandong Normal University, Ji'nan, China.
General Station of Geological Environment Monitoring of Shandong province, Ji'nan, China.
PLoS One. 2020 Sep 3;15(9):e0238513. doi: 10.1371/journal.pone.0238513. eCollection 2020.
Source apportionment of potentially toxic elements in soils is a critical step for devising soil sustainable management strategies. However, misjudgment or imprecision can occur when traditional statistical methods are applied to identify and apportion the sources. The main objective of the study was to develop a robust approach composed of the absolute principal component score/multiple linear regression (APCS/MLR) receptor model, positive matrix factorization (PMF) receptor model and geostatistics to identify and apportion sources of soil potentially toxic elements in typical industrial and mining city, eastern China. APCS/MLR and PMF were applied to provide robust factors with contribution rates. The geostatistics coupled with the variography and kriging methods was used to present factors derived from these two receptor models. The results indicated that mean concentrations of As, Cd, Cr, Cu, Hg, Ni, Pb and Zn exceeded the local background levels. Based on multivariate receptor models and geostatistics, we determined four sources of eight potentially toxic elements including natural source (parent material), agricultural practices, pollutant emissions (industrial, mining and traffic) and the atmospheric deposition of coal combustion, which accounted for 68%, 12%, 12% and 9% of the observed potentially toxic element concentrations, respectively. This study provides a reliable and robust approach for potentially toxic elements source apportionment in this particular industrial and mining city with a clear potential for future application in other regions.
土壤中潜在有毒元素的来源分配是制定土壤可持续管理策略的关键步骤。然而,当应用传统的统计方法来识别和分配来源时,可能会出现判断错误或不精确的情况。本研究的主要目的是开发一种稳健的方法,该方法由绝对主成分得分/多元线性回归(APCS/MLR)受体模型、正矩阵因子化(PMF)受体模型和地统计学组成,以识别和分配中国东部典型工业矿业城市土壤中潜在有毒元素的来源。APCS/MLR 和 PMF 被应用于提供具有贡献率的稳健因子。地统计学与变异函数和克里金方法相结合,用于呈现这两种受体模型得出的因子。结果表明,As、Cd、Cr、Cu、Hg、Ni、Pb 和 Zn 的平均浓度超过了当地背景水平。基于多元受体模型和地统计学,我们确定了包括自然源(母体材料)、农业活动、污染物排放(工业、矿业和交通)和燃煤大气沉降在内的八种潜在有毒元素的四个来源,分别占观察到的潜在有毒元素浓度的 68%、12%、12%和 9%。本研究为这个特定的工业矿业城市的潜在有毒元素来源分配提供了一种可靠和稳健的方法,未来在其他地区具有明显的应用潜力。