May 1, 2024
Marziyeh Ranjbar-Mohammadi

Marziyeh Ranjbar-Mohammadi

Academic rank: Associate professor
Address: university of bonab - bonab
Education: Ph.D in Textile Engineering
Phone: 04137745000-1601
Faculty: Faculty of Engineering
Department: Textile Engineering

Research

Title
Low cost hydrogels based on gum Tragacanth and TiO2 nanoparticles: characterization and RBFNN modelling of methylene blue dye removal
Type Article
Keywords
TiO2 nanoparticlesGum Tragacanth hydrogelMethylene blueAdsorptionPhotocatalytic processRBFNN model
Researchers Marziyeh Ranjbar-Mohammadi، Mehdi Rahimdokht، Elmira Pajootan

Abstract

In this study, low-cost and high adsorption capacity hydrogels based on gum tragacanth biopolymer (GT or TG) and TiO2 nanoparticles were produced by using glutaraldehyde as the crosslinking agent. These hydrogels were applied in photocatalytic process to remove methylene blue from simulated colored solution. TiO2-Gum Tragacanth hydrogels (TGTH) were characterized by FESEM and FTIR to investigate the surface morphology and functional group of the synthesized hydrogel. Contact angle measurements showed that, the hydrophilicity nature of crosslinked TGTH decreased compared to GT films. The effect of particle size, initial dye concentration, pH of the solution and adsorbent/photocatalyst dosage on the removal efficiency was assessed. The obtained results demonstrated that lower dosage of the prepared TGTH (0.15g/L) outperformed GT (0.2 g/L) reaching 87% of dye removal, while GT resulted in 69% of removal. In order to model the cationic dye removal process, a Radial Basis Function Neural Network (RBFNN) was investigated. This network was applied to predict dye removal based on the time duration, initial dye concentration, pH of the solution and TiO2dosage in gum tragacanth hydrogel structure ([TiO2/gum tragacanth hydrogel]0 (g/L)). The performance of the proposed model was validated by several training data. The RBFNN model mostly overlapped with the experimental data due to selecting proper structure and training algorithm.