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Multi-parameter experiments and modeling for nitrate sorption to quaternary ammonium-functionalized poly(amidoamine) dendrimers in aqueous solutions

Cited 26 time in Web of Science Cited 3 time in Scopus
Authors

Lee, S.-C.; Kang, J.-K.; Jang, H.-Y.; Park, J.-A.; Kim, S.-B.

Issue Date
2022-11
Publisher
Islamic Azad University of Research and Technology
Citation
International Journal of Environmental Science and Technology, Vol.19 No.11, pp.11023-11036
Abstract
© 2022, Islamic Azad University (IAU).The aim of this study was to investigate nitrate sorption onto quaternary ammonium-functionalized poly(amidoamine) dendrimer generation 2.0 (q-PAMAM-G2). The physicochemical characteristics of the q-PAMAM-G2 were examined using field emission scanning electron microscopy, thermogravimetric analysis, electrophoretic light scattering spectrophotometry, elemental analysis, etc. Single-parameter sorption tests were performed under batch conditions to examine the nitrate sorption characteristics of the q-PAMAM-G2. According to a pH experiment, the q-PAMAM-G2 maintained a relatively stable nitrate sorption capacity at pH 2 to 10. X-ray photoelectron spectrometry analysis indicated a new peak for the NH4NO3 bond after nitrate sorption, confirming nitrate sorption to quaternary ammonium groups on the surface of the q-PAMAM-G2 through anion exchange. The kinetic data were best fit with the pseudo-second-order model, whereas the equilibrium data fitted well with the Langmuir isotherm, suggesting that nitrate sorption onto the q-PAMAM-G2 occurred through chemisorption. Multi-parameter sorption experiments (n = 32) were conducted with three input variables (adsorbent dose, initial nitrate concentration, and solution pH) and one output variable (nitrate removal rate). In response surface methodology (RSM) modeling, a quartic regression model (fourth-order polynomial equation) was developed to predict nitrate sorption onto the q-PAMAM-G2. In the artificial neural network (ANN) modeling, a model with a structure of 3:10:1 was derived to describe the nitrate sorption data. Additional multi-parameter experiments for nitrate sorption onto the q-PAMAM-G2 (n = 8) were conducted to further evaluate the developed models. The developed ANN model (R2 = 0.872) predicted better than did the RSM model (R2 = 0.790) for the additional multi-parameter experimental data.
ISSN
1735-1472
URI
https://hdl.handle.net/10371/184187
DOI
https://doi.org/10.1007/s13762-022-03911-8
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