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首页> 外文期刊>Archives of Environmental Protection >MULTIVARIATE STATISTICAL ANALYSES ON ARSENIC OCCURRENCE IN RYBNIK RESERVOIR
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MULTIVARIATE STATISTICAL ANALYSES ON ARSENIC OCCURRENCE IN RYBNIK RESERVOIR

机译:雷比尼克水库中砷的赋存状态的多元统计分析

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摘要

Popular statistical techniques, such as Spearman's rank correlation matrix, principal component analysis (PCA) and multiple linear regression analysis were applied to analyze a large set of water quality data of the Rybnik Reservoir generated during semiannual monitoring. Water samples collected at 9 sampling sites located along the main axis of the reservoir were tested for 14 selected parameters: concentrations of co-occurring elements, ions and physicochemical parameters. The aim of this study wasto estimate the impact of those parameters on inorganic arsenic occurrence in Rybnik Reservoir water by means of multivariate statistical methods. The spatial distribution of arsenic in Rybnik Power Station reservoir was also included. Inorganic arsenicAs(III), As(V) concentrations were determined by hydride generation method (HG-AAS) using SpectrAA 880 spectrophotometer (Varian) coupled with a VGA-77 system for hydride generation and ECT-60 electrothermal furnace. Spearman's rank correlation matrix was used in order to find existing correlations between total inorganic arsenic (As~(Tot)) and other parameters. The results of this analysis suggest that As was positively correlated with PO_4~(3-); Fe and TDS. PCA confirmed these observations. Principalcomponent analysis resulted in three PC's explaining 57% of the total variance. Loading values for each component indicate that the processes responsible for As release and distribution in Rybnik Reservoir water were: leaching from bottom sediments together with other elements like Cu, Cd, Cr, Pb, Zn, Ni, Ca (PCI) and co-precipitation with PO_4~(3-), Fe and Mn (PC3) regulated by physicochemical properties like T and pH (PC2). Finally, multiple linear regression model has been developed. This model incorporates only 8 (T, pH, PO_4~(3-) ,Fe, Mn, Cr, Cu, TDS) out of initial 14 variables, as the independent predictors of total As contamination level. This study illustrates the usefulness of multivariate statistical techniques for analysis and interpretation of complex environmental data sets.
机译:Spearman秩相关矩阵,主成分分析(PCA)和多元线性回归分析等流行的统计技术被用于分析半年监测期间生成的Rybnik水库的大量水质数据。对沿着水库主轴线的9个采样点收集的水样进行了14种选定参数的测试:共生元素的浓度,离子和理化参数。这项研究的目的是通过多元统计方法来估算这些参数对雷布尼克水库水中无机砷的影响。还包括了雷布尼克电站水库中砷的空间分布。无机砷As(III),砷(V)的浓度通过氢化物发生法(HG-AAS),使用SpectrAA 880分光光度计(Varian)结合用于生成氢化物的VGA-77系统和ECT-60电热炉进行测定。为了确定总无机砷(As〜(Tot))与其他参数之间的现有相关性,使用了Spearman秩相关矩阵。分析结果表明,As与PO_4〜(3-)呈正相关。铁和TDS。 PCA证实了这些观察结果。主成分分析得出三个PC解释了总方差的57%。每个组分的载荷值表明,造成Rybnik水库水中As释放和分布的过程是:与其他元素(例如Cu,Cd,Cr,Pb,Zn,Ni,Ca(PCI))一起从底部沉积物中浸出以及共沉淀PO_4〜(3-),Fe和Mn(PC3)受诸如T和pH(PC2)的理化性质调节。最后,建立了多元线性回归模型。该模型仅包含初始14个变量中的8个(T,pH,PO_4〜(3-),Fe,Mn,Cr,Cu,TDS),作为总As污染水平的独立预测因子。这项研究说明了多元统计技术对复杂环境数据集的分析和解释的有用性。

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