• Title of article

    Synthesis of nickel ferrite nanoparticles as an efficient magnetic sorbent for removal of an azo-dye: Response surface methodology and neural network modeling

  • Author/Authors

    Ayazi ، Zahra Department of Chemistry - Faculty of Sciences - Azarbaijan Shahid Madani University , Monsef Khoshhesab ، Zahra Department of Chemistry - Payame Noor University , Amani-Ghadim ، Alireza Department of Chemistry - Faculty of Sciences - Azarbaijan Shahid Madani University

  • From page
    109
  • To page
    123
  • Abstract
    In this research, nickel ferrite (NiFe2O4) nanoparticles (NFNs) are prepared through coprecipitation method, and applied for adsorption removal of a model organic pollutant, methyl orange (MO). The characterization of the prepared NFNs was performed using scanning electron microscopy (SEM), Xray diffraction (XRD), vibrating sample magnetometer (VSM) and transmission electron microscopy (TEM). Optimization and modeling of the removal of MO applying NFNs were performed via central composite design (CCD) and the influential parameters including nanosorbent amount, dye initial concentration, contact time and pH were considered as input variables for CCD. A dye removal percentage of 99 % was achieved under the optimum condition established for MO removal that was in agreeing with the predicted value. Additionally, multilayer artificial neural network (MLANN) was applied to acquire a predictive model of MO removal. The isothermal investigation of MO adsorption was performed by developing Langmuir, Freundlich and Temkin models, and results showed that experimental data were best fit in Freundlich model. Based on the adsorption kinetics studies, the pseudosecondorder kinetic model was the best model to describe the adsorption mechanism of MO onto NFNs.
  • Keywords
    Adsorption Removal , Artificial Neural Network , Central Composite Design , Methyl Orange , Nickel Ferrite Magnetic , Nanoparticles
  • Journal title
    Nanochemistry Research (NCR)
  • Journal title
    Nanochemistry Research (NCR)
  • Record number

    2516275