| Literature DB >> 28735235 |
Sujie Shan1, Ying Zhao2, Huan Tang1, Fuyi Cui3.
Abstract
In this study, adsorption capability of aromatic contaminants on graphene oxide (GO) was predicted using linear solvation energy relationship (LSER) model for the first time. Adsorption data of 44 aromatic compounds collected from literature and our experimental results were used to establish LSER models with multiple linear regression. High value of R2 (0.919), strong robustness (QLoo2 = 0.862), and desirable predictability (Qext2 = 0.834) demonstrated the model worked well for predicting the adsorption of small aromatic contaminants (descriptor V<3.099) on GO. The adsorption process was governed by the ability of cavity formation and dispersion forces captured by vV and hydrogen-bond interactions captured by bB. Effect of equilibrium concentrations and properties of GO on the model were explored; and the results indicated that upon an increase of equilibrium concentration, the values of regression coefficients (a, b, v, e, and s) changed at different levels. The oxygen content normalization of logK0.001 decreased the value of b dramatically; however, no obvious changes of the model deduced by the surface area normalization of logK0.001 were witnessed. Overall, our study showed that LSER model provided a potential approach for exploring the adsorption of organic compounds on GO.Entities:
Keywords: Adsorption; Aromatic contaminants; Graphene oxide; LSER model
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Year: 2017 PMID: 28735235 DOI: 10.1016/j.chemosphere.2017.07.062
Source DB: PubMed Journal: Chemosphere ISSN: 0045-6535 Impact factor: 7.086