Article ID Journal Published Year Pages File Type
6362656 Marine Pollution Bulletin 2010 10 Pages PDF
Abstract
Identifying petroleum-related products released into the environment is a complex and difficult task. To achieve this, polycyclic aromatic hydrocarbons (PAHs) are of outstanding importance nowadays. Despite traditional quantitative fingerprinting uses straightforward univariate statistical analyses to differentiate among oils and to assess their sources, a multivariate strategy based on Procrustes rotation (PR) was applied in this paper. The aim of PR is to select a reduced subset of PAHs still capable of performing a satisfactory identification of petroleum-related hydrocarbons. PR selected two subsets of three (C2-naphthalene, C2-dibenzothiophene and C2-phenanthrene) and five (C1-decahidronaphthalene, naphthalene, C2-phenanthrene, C3-phenanthrene and C2-fluoranthene) PAHs for each of the two datasets studied here. The classification abilities of each subset of PAHs were tested using principal components analysis, hierarchical cluster analysis and Kohonen neural networks and it was demonstrated that they unraveled the same patterns as the overall set of PAHs.
Related Topics
Physical Sciences and Engineering Earth and Planetary Sciences Oceanography
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