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A Simple One‐Pot Pyrolyzed Synthesis of Ternary Magnetic ZnFe2O4/α‐Fe2O3/Biochar Nanocomposites for Adsorptive Removal of Direct Red 79 in Aqueous Solution

CHEMISTRYSELECT(2023)

TNU Univ Sci

Cited 0|Views10
Abstract
Ternary magnetic ZnFe2O4/alpha-Fe2O3/biochar nanocomposites (MBCs) were successfully synthesized by one-pot pyrolysis in oxygen-limited environment using ZnCl2, FeCl2 as an activating agent, and precursors. The following conditions were found to be optimal for MBCs: activation temperature of 700 degrees C, mass ratio of ZnCl2 and FeCl2 of 1, and activation time of 2 h. The prepared MBCs were evaluated for textural characteristics such as crystalline structure, surface chemical functional groups, vabriation mode, magnetic properties, pore structure, morphology and the adsorption capacity using the methods such as X-ray diffraction, Fourier transform infrared spectroscopy, Raman spectra, vibrating sample magnetometer, N-2 adsorption-desorption isotherms, scanning electron microscopy and transmission electron microscopy. The prepared MBCs had porous structures, the highest SBET (782.37 m(2)g(-1)), and pore volume (0.54 cm(3)g(-1)) when the mass ratios of ZnCl2 and FeCl2 were 1, and the activation temperature was 700 degrees C, and the magnetic parameters were found at a H-c of 60 Oe, Ms of 13.03 emug(-1) and M-r of 1.07 emug(-1). Adsorption equilibrium studies indicate that the DR79 adsorption followed the Langmuir model and Sips model. The DR79 adsorption capacity of the MBC-700-1 has the largest value (676.8 mgg(-1)). The adsorption process was influenced by multiple diffusion steps, with the pore diffusion process serving as the rate-controlling step. These findings show that MBCs adsorb DR79 efficiently and can be easily separated and recovered using an external magnetic field. The prepared MBCs have the potential to be high-performance organic pollutant wastewater adsorbents.
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Key words
Adsorption,direct red 79,magnetic biochar,pyrolysis
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