Institute of Geochemistry, Mineralogy and Mineral Resources, Faculty of Science, Charles University, Albertov 6, 128 00, Prague 2, Czech Republic.
Institute of Geology of the Czech Academy of Sciences, Rozvojová 269, 165 00, Prague 6, Czech Republic.
Environ Pollut. 2020 Nov;266(Pt 1):115118. doi: 10.1016/j.envpol.2020.115118. Epub 2020 Jul 1.
Topsoils near active and abandoned mining and smelting sites are highly polluted by metal(loid) contaminants, which are often bound to particulates emitted from ore processing facilities and/or windblown from waste disposal sites. To quantitatively determine the contaminant partitioning in the soil particulates, we tested an automated mineralogy approach on the heavy mineral fraction extracted from the mining- and smelting-polluted topsoils exhibiting up to 1920 mg/kg As, 5840 mg/kg Cu, 4880 mg/kg Pb and 3310 mg/kg Zn. A new generation of automated scanning electron microscopy (autoSEM) was combined and optimized with conventional mineralogical techniques (XRD, SEM/EDS, EPMA). Parallel digestions and bulk chemical analyses were used as an independent control of the autoSEM-calculated concentrations of the key elements. This method provides faster data acquisition, the full integration of the quantitative EDS data and better detection limits for the elements of interest. We found that As was mainly bound to the apatite group minerals, slag glass and metal arsenates. Copper was predominantly hosted by the sulfides/sulfosalts and the Cu-bearing secondary carbonates. The deportment of Pb is relatively complex: slag glass, Fe and Mn (oxyhydr)oxides, metal arsenates/vanadates and cerussite were the most important carriers for Pb. Zinc is mainly bound to the slag glass, Fe (oxyhydr)oxides, smithsonite and sphalerite. Limitations exist for the less abundant contaminants, which cannot be fully quantified by autoSEM due to spectral overlaps with some major elements (e.g., Sb vs. Ca, Cd vs. K and Ca in the studied soils). AutoSEM was found to be a useful tool for the determination of the modal phase distribution and element partitioning in the metal(loid)-bearing soil particulates and will definitely find more applications in environmental soil sciences in the future.
受矿石加工设施排放的颗粒物和/或从废物处置场吹扬的颗粒物中金属(类)污染物的影响,矿区及周边地区和废弃矿区的表土受到高度污染。为了定量确定土壤颗粒物中污染物的分配情况,我们针对受矿区和冶炼区污染的表土中提取的重矿物部分,采用一种自动化矿物学方法进行了测试,这些表土中砷的含量高达 1920mg/kg,铜为 5840mg/kg,铅为 4880mg/kg,锌为 3310mg/kg。我们将新一代自动化扫描电子显微镜(autoSEM)与传统矿物学技术(XRD、SEM/EDS、EPMA)相结合并进行了优化。我们采用平行消解和批量化学分析作为 autoSEM 计算的关键元素浓度的独立控制。这种方法可以更快地获取数据,全面整合定量 EDS 数据,并提高感兴趣元素的检测限。我们发现,砷主要与磷灰石族矿物、炉渣玻璃和金属砷酸盐结合。铜主要赋存于硫化物/硫盐和含铜次生碳酸盐中。铅的赋存形式相对复杂:炉渣玻璃、铁和锰(氢)氧化物、金属砷酸盐/钒酸盐和白铅矿是铅的最重要载体。锌主要与炉渣玻璃、铁(氢)氧化物、菱锌矿和闪锌矿结合。由于光谱与某些主要元素(例如,研究土壤中的 Sb 与 Ca、Cd 与 K 和 Ca)重叠,某些含量较少的污染物无法通过 autoSEM 进行充分量化,因此存在一定的局限性。autoSEM 被发现是一种有用的工具,可用于确定含金属(类)土壤颗粒物中的相态分布和元素分配,未来肯定会在环境土壤科学领域得到更多应用。