Water Science and Technology (Mar 2021)

Support vector machines for oil classification link with polyaromatic hydrocarbon contamination in the environment

  • Azimah Ismail,
  • Hafizan Juahir,
  • Saiful Bahri Mohamed,
  • Mohd Ekhwan Toriman,
  • Azlina Md. Kassim,
  • Sharifuddin Md. Zain,
  • Hadieh Monajemi,
  • Wan Kamaruzaman Wan Ahmad,
  • Munirah Abdul Zali,
  • Ananthy Retnam,
  • Mohd. Zaki Mohd. Taib,
  • Mazlin Mokhtar,
  • Siti Nor Fazillah Abdullah

DOI
https://doi.org/10.2166/wst.2021.038
Journal volume & issue
Vol. 83, no. 5
pp. 1039 – 1054

Abstract

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The main focus of this study is exploring the spatial distribution of polyaromatics hydrocarbon links between oil spills in the environment via Support Vector Machines based on Kernel-Radial Basis Function (RBF) approach for high precision classification of oil spill type from its sample fingerprinting in Peninsular Malaysia. The results show the highest concentrations of Σ Alkylated PAHs and Σ EPA PAHs in ΣTAH concentration in diesel from the oil samples PP3_liquid and GP6_Jetty achieving 100% classification output, corresponding to coherent decision boundary and projective subspace estimation. The high dimensional nature of this approach has led to the existence of a perfect separability of the oil type classification from four clustered oil type components; i.e diesel, bunker C, Mixture Oil (MO), lube oil and Waste Oil (WO) with the slack variables of ξ ≠ 0. Of the four clusters, only the SVs of two are correctly predicted, namely diesel and MO. The kernel-RBF approach provides efficient and reliable oil sample classification, enabling the oil classification to be optimally performed within a relatively short period of execution and a faster dataset classification where the slack variables ξ are non-zero.

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