光催化
甲基橙
催化作用
吸附
材料科学
光降解
化学工程
比表面积
纳米技术
降级(电信)
兴奋剂
化学
有机化学
光电子学
计算机科学
工程类
电信
作者
Yushun Zhou,Taimei Cai,Shuai Liu,Yanyan Liu,Huijie Chen,Zhongtian Li,Jun Du,Zhiqiang Lei,Hailong Peng
标识
DOI:10.1016/j.cej.2021.128615
摘要
Organic contaminants in aquatic ecosystems have raised serious environmental concerns and pose severe risks to human health, and the catalytic efficiency of traditional TiO2 catalysts has been greatly limited by photogenerated electron/hole recombination. Therefore, a novel catalyst of N-doped magnetic three-dimensional (3D) carbon [email protected]2 with a nanofibrous porous architecture (N-doped [email protected]2) was developed from the low-cost biomass of chitin. The N-doped [email protected]2 consist of N-doped carbon nanofibers, a 3D porous architecture, and a high surface area. TiO2 nanoparticles were uniformly immobilized on the N-doped carbon nanofibers, resulting in many catalytic sites. The current density of N-doped [email protected]2 was approximately 0.247 uAcm−2 with 1.65 times than that of pure TiO2, and the bandgap of N-doped [email protected]2 was only 1.91 eV. Additionally, N-doped [email protected]2 had excellent adsorption capability for tetracycline (TC) (60.38%) and methyl orange (MO) (40.15%) in the dark after 40 min. Under the optimized conditions, N-doped [email protected]2 exhibited remarkable photodegradation performance for MO and TC mixture solutions, the degradation efficiencies of MO and TC were approximately 83.80% and 74.37% under UV irradiation, and that of was maintained at 68.07% and 76.55% even in cloudy weather, respectively. Meanwhile, N-doped [email protected]2 possess good potential for practical applications with long-term stability and can be easily recycled from solutions under an external magnet. Therefore, this work provides new insight into the fabrication of low-cost biomass-based 3D hierarchical porous carbon materials and that can be used as high-performance photocatalysts for the degradation of organic contaminants.
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