4.7 Article

Assessment of metal pollution based on multivariate statistical modeling of 'hot spot' sediments from the Black Sea

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CHEMOSPHERE
卷 41, 期 9, 页码 1411-1417

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PERGAMON-ELSEVIER SCIENCE LTD
DOI: 10.1016/S0045-6535(99)00540-8

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multivariate statistics; cluster analysis; principal component analysis; partial least squares modeling; marine sediments; heavy metals pollution

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The paper deals with application of different statistical methods like cluster and principal components analysis (PCA), partial least squares (PLSs) modeling. These approaches are an efficient tool in achieving better understanding about the contamination of two gulf regions in Black Sea. As objects of the study, a collection of marine sediment samples from Varna and Bourgas hot spots gulf areas are used. In the present case the use of cluster and PCA make it possible to separate three zones of the marine environment with different levels of pollution by interpretation of the sediment analysis (Bourgas gulf, Varna gulf and lake buffer zone). Further, the extraction of four latent factors offers a specific interpretation of the possible pollution sources and separates natural from anthropogenic factors, the latter originating from contamination by chemical, oil refinery and steel-work enterprises. Finally, the PLSs modeling gives a better opportunity in predicting contaminant concentration on tracer (or tracers) element as compared to the one-dimensional approach of the baseline models. The results of the study are important not only in local aspect as they allow quick response in finding solutions and decision making but also in broader sense as a useful environmetrical methodology. (C) 2000 Elsevier Science Ltd. All rights reserved.

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