Gels (Jun 2023)

Towards Understanding Aerogels’ Efficiency for Oil Removal—A Principal Component Analysis Approach

  • Khaled Younes,
  • Mayssara Antar,
  • Hamdi Chaouk,
  • Yahya Kharboutly,
  • Omar Mouhtady,
  • Emil Obeid,
  • Eddie Gazo Hanna,
  • Jalal Halwani,
  • Nimer Murshid

DOI
https://doi.org/10.3390/gels9060465
Journal volume & issue
Vol. 9, no. 6
p. 465

Abstract

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In this study, our aim was to estimate the adsorption potential of three families of aerogels: nanocellulose (NC), chitosan (CS), and graphene (G) oxide-based aerogels. The emphasized efficiency to seek here concerns oil and organic contaminant removal. In order to achieve this goal, principal component analysis (PCA) was used as a data mining tool. PCA showed hidden patterns that were not possible to seek by the bi-dimensional conventional perspective. In fact, higher total variance was scored in this study compared with previous findings (an increase of nearly 15%). Different approaches and data pre-treatments have provided different findings for PCA. When the whole dataset was taken into consideration, PCA was able to reveal the discrepancy between nanocellulose-based aerogel from one part and chitosan-based and graphene-based aerogels from another part. In order to overcome the bias yielded by the outliers and to probably increase the degree of representativeness, a separation of individuals was adopted. This approach allowed an increase in the total variance of the PCA approach from 64.02% (for the whole dataset) to 69.42% (outliers excluded dataset) and 79.82% (outliers only dataset). This reveals the effectiveness of the followed approach and the high bias yielded from the outliers.

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