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首页> 外文期刊>Chemical Science International Journal >Multivariate Analysis of Under Ground WaterPollution Sources in Agbabu Bitumen Belt
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Multivariate Analysis of Under Ground WaterPollution Sources in Agbabu Bitumen Belt

机译:阿格巴布沥青带地下水污染源的多元分析

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Multivariate data analysis is used to analyse underground water samples from ten (10) different water sources in Agbabu bituminous belt of Nigeria. Principal component analysis (PCA) showed Component one (PC1) to be the most significant Component accounting for 54.09% of the pollution, with high loadings for Cd, Pb and Mn suggesting them to be the most significant pollutants for the study area. Mean concentrations of heavy metals indicated high pollutions with Cr, Cd and Mn to have highest concentrations and a relatively fairly concentrated Pb.? Physicochemical properties were analysed for Alkalinity, dissolved oxygen, biochemical oxygen demand, and phosphates. Using Hierarchical clustering analysis (HCA), similarities in the pollution patterns of the various wells was observed, with Cluster one (CL1) showing similar clustering for wells highly polluted with Pb and Cd but low in Fe. Wells in cluster two (CL2) indicate wells highly polluted with Cd. Low polluted wells for Pb, Fe and Cd pollutants are found in Cluster three (CL3). All clusters agree with ANOVA and Pearson’s correlation result indicating variation among the various water sources. The cause of underground water pollution showed to be anthropogenic and geogenic in the study area and suggests the underlying bitumen deposit and its mining activity to be majorly responsible for the pollution.
机译:多元数据分析用于分析尼日利亚阿格巴布沥青带十(10)种不同水源的地下水样品。主成分分析(PCA)显示,第一成分(PC1)是最重要的成分,占污染的54.09%,Cd,Pb和Mn的高负载表明它们是研究区域中最重要的污染物。重金属的平均浓度表明,Cr,Cd和Mn的高污染具有最高的浓度和相对相当浓的Pb。分析了碱度,溶解氧,生化需氧量和磷酸盐的理化性质。使用层次聚类分析(HCA),观察到了各井污染模式的相似性,聚类一(CL1)显示了铅和镉污染严重但铁含量低的井的相似聚类。第2类群集(CL2)中的井表示Cd高度污染的井。在第三组(CL3)中发现了铅,铁和镉污染物的低污染井。所有聚类均与ANOVA和Pearson的相关结果一致,表明各种水源之间存在差异。在研究区域内,地下水污染的原因是人为和成因的,表明潜在的沥青沉积及其开采活动是造成污染的主要原因。

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