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Geostatistical and multivariate statistical analysis of heavily and manifoldly contaminated soil samples

机译:重污染和多污染土壤样品的地统计和多元统计分析

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The surroundings of the former Kremikovtzi steel mill near Sofia (Bulgaria) are influenced by various emissions from the factory. In addition to steel and alloys, they produce different products based on inorganic compounds in different smelters. Soil in this region is multiply contaminated. We collected 65 soil samples and analyzed 15 elements by different methods of atomic spectroscopy for a survey of this field site. Here we present a novel hybrid approach for environmental risk assessment of polluted soil combining geostatistical methods and source apportionment modeling. We could distinguish areas with heavily and slightly polluted soils in the vicinity of the iron smelter by applying unsupervised pattern recognition methods. This result was supported by geostatistical methods such as semivariogram analysis and kriging. The modes of action of the metals examined differ significantly in such a way that iron and lead account for the main pollutants of the iron smelter, whereas, e.g., arsenic shows a haphazard distribution. The application of factor analysis and source-apportionment modeling on absolute principal component scores revealed novel information about the composition of the emissions from the different stacks. It is possible to estimate the impact of every element examined on the pollution due to their emission source. This investigation allows an objective assessment of the different spatial distributions of the elements examined in the soil of the Kremikovtzi region. The geostatistical analysis illustrates this distribution and is supported by multivariate statistical analysis revealing relations between the elements.
机译:索非亚(保加利亚)附近的前克雷米科夫齐钢铁厂的周围环境受到工厂各种排放物的影响。除钢和合金外,它们还基于不同冶炼厂中的无机化合物生产不同的产品。该地区的土壤被多重污染。我们收集了65个土壤样品,并通过不同的原子光谱法分析了15种元素,以对该野外站点进行调查。在这里,我们提出了一种新的混合方法,结合地统计学方法和源分配模型,对污染土壤进行环境风险评估。通过应用无监督模式识别方法,我们可以区分炼铁厂附近土壤重度和轻度污染的区域。这一结果得到了诸如半变异函数分析和克里金法等地统计学方法的支持。所检查的金属的作用方式显着不同,铁和铅是炼铁厂的主要污染物,而砷则呈偶然分布。在绝对主成分评分上应用因子分析和源-分配模型揭示了有关来自不同烟囱排放成分的新颖信息。可以估计所检查的每个元素由于其排放源而对污染的影响。这项调查可以客观评估克雷米科夫齐地区土壤中被测元素的不同空间分布。地统计分析说明了这种分布,并得到揭示元素之间关系的多元统计分析的支持。

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