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Application of multivariate statistical approach to identify heavy metal sources in bottom soil of the Seyhan River (Adana), Turkey

机译:多元统计方法在土耳其塞汉河(阿达纳河)底土中识别重金属来源的应用

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摘要

In this study, freshly deposited soils were sampled from the Seyhan River (Turkey) from the exit of the Seyhan Dam to the Adana exit. Heavy metal contents were measured with X-ray fluorescence spectrometer. Multivariate statistical approach is used to identify the sources of heavy metals and other elements in soil samples. Considering the size of anomalies, metals are ranked as Co>Pb>Cr>Zn>Al. Based on the hierarchical cluster analysis results, three clusters were observed. P, Mg, Ti, Fe, Ca, Na, K, Al, Si, and Nb form the first cluster, Zn, Sr, Pb, and Cr associated as the second cluster, and Ba and Co form the third cluster. Three factors computed from principal component analysis are explained with a cumulative variance of 95%. The first factor is denned with "high background lithogenic factor" Co, the second factor with "local industrial factor" Pb, Cr, Ba, and Mg, and the third factor with "natural factor" Cr and Pb.
机译:在这项研究中,从赛汗水坝出口到阿达纳河出口的赛汗河(土耳其)对新鲜沉积的土壤进行了采样。重金属含量用X射线荧光光谱仪测定。多元统计方法用于识别土壤样品中重金属和其他元素的来源。考虑到异常的大小,金属的排名为Co> Pb> Cr> Zn> Al。基于层次聚类分析结果,观察到三个聚类。 P,Mg,Ti,Fe,Ca,Na,K,Al,Si和Nb形成第一簇,Zn,Sr,Pb和Cr构成第二簇,Ba和Co形成第三簇。解释了由主成分分析计算出的三个因素,累积方差为95%。第一个因素用“高本底岩化因子” Co定义,第二个因素用“局部工业因子” Pb,Cr,Ba和Mg定义,第三个因素用“自然因素” Cr和Pb定义。

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