Z-scheme direct dual semiconductor photocatalytic system with porous g-C3N4/Fe2(MoO4)3 composite: A promising approach for enhanced photocatalytic degradation of doxycycline

V. Vasanthakumar,Murad Alsawalha, K. Jothimani,Ming-Lai Fu,Baoling Yuan

Journal of Environmental Chemical Engineering(2024)

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摘要
Photocatalytic removal of antibiotic pollutants is a promising technology for advancing society. However, quick charge recombination in semiconductors hinders the effectiveness of photocatalysis. The construction of a heterojunction photocatalyst is an effective approach to improving the degradation rate. In this present work, 2D porous graphitic carbon nitride (denoted as PCN) nanosheets were prepared through a salt-assisted thermal decomposition method. Subsequently, a novel porous g-C3N4/Fe2(MoO4)3 (denoted as PCN/FMO) composite was designed using a facile hydrothermal process for the degradation of doxycycline (DOX). The formation of Zscheme heterojunctions and chemically bonded interfacial charge transfer effects in the PCN/FMO composite facilitated the efficient charge carrier separation and migration. As a result, the enhanced photocatalytic degradation efficiency of the PCN/FMO composite reached 92.1% and K value 0.0207 min- 1 after 120 min of visible light irradiation, which is comparatively higher than that of pristine CN (32.71% and 0.0031 min- 1), PCN (45.1% and 0.0047 min- 1), and FMO (52.9% and 0.0062 min- 1) photocatalysts, and there is no substantial reduction in DOX degradation performance after six cycles. Active species trapping analysis identified the primary reactive agents, suggesting that h+, center dot OH, and center dot O2- radicals are the predominant reactive species in the photocatalytic degradation process. The findings of this work suggest that the as-prepared PCN/FMO composite is a promising candidate for highly efficient degradation of wastewater containing antibiotic pollutants.
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关键词
PCN/FMO,Photocatalytic degradation,Doxycycline,Visible -light,Wastewater treatment
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