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Multi-Block Data Modeling for Characterization of Soil Contamination: A Case Study

机译:表征土壤污染的多块数据建模:一个案例研究

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摘要

Multi-block (heavy metals, pesticides, physico-chemical parameters) data set pertaining to the soils of alluvium region in Indo-Gangetic plains was analyzed using principal component analysis (PCA) and multiple factor analysis (MFA) methods to delineate the contaminated sites and to identify the possible contamination sources in the study region. In normal PCA, the first three factors were dominated mainly by heavy metals, pesticides and physico chemical variables, respectively, thus identifying samples/sites contaminated with these. The MFA results, due to its unique weighting scheme of variables of different blocks extracted, to more realistic information about the spatial distribution of samples and relationships among the variables. MFA minimized the influence of variables of one single block on the first few components, allowing variables of all blocks equally to share the common MFA space. This resulted in delineating the sites/regions contaminated with variables (Al, Co, Cu, Mn, Ni, Pb,rnV, Na, SO_4, aldrin, lindane, HCB, HCH, DDT, and endosulfan) of all the blocks, rather than by particular block variables as in case of normal PCA, where, the variables of single block dominate the first factors, suppressing other block variables. MFA which can be considered as a method for standardization of the multi-block variables was successfully applied to the three block data set of soils.
机译:使用主成分分析(PCA)和多因素分析(MFA)方法分析与印度恒河平原冲积层土壤相关的多块(重金属,农药,理化参数)数据集,以描绘出受污染的地点并确定研究区域内可能的污染源。在正常的PCA中,前三个因素分别主要由重金属,杀虫剂和理化变量控制,从而确定了受其污染的样品/场所。由于MFA具有独特的对提取的不同块的变量进行加权的方案,因此可以得出有关样本空间分布和变量之间关系的更实际的信息。 MFA最大限度地减少了单个块的变量对前几个组件的影响,使所有块的变量平均共享公共MFA空间。这样就勾勒出所有区块的变量(Al,Co,Cu,Mn,Ni,Pb,rnV,Na,SO_4,艾氏剂,林丹,HCB,HCH,DDT和硫丹)污染的位点/区域,而不是通过特定的块变量(如正常PCA)来确定,其中单个块的变量主导着第一个因素,从而抑制了其他块变量。可将MFA视为多区块变量标准化的一种方法,已成功应用于土壤的三区块数据集。

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