X射线光电子能谱
苯甲醇
苯甲醛
材料科学
氢
光催化
制氢
化学工程
异质结
载流子
光谱学
分解水
纳米技术
催化作用
化学能
光化学
红外光谱学
可见光谱
可持续能源
可持续生产
氢燃料
能量转换
电荷(物理)
光电子学
光催化分解水
能量转换效率
酒精氧化
反应速率常数
傅里叶变换红外光谱
作者
Rundong Chen,Yuhang Zhang,Yuhang Zhang,Bingquan Xia,Xianlong Zhou,Yanzhao Zhang,Yanzhao Zhang,Shantang Liu
标识
DOI:10.1016/s1872-2067(25)64830-3
摘要
Photocatalysis is deemed a green approach to sustainable energy conversion with great promise for addressing future energy challenges. However, traditional photocatalytic systems are often inhibited by rapid recombination of photogenerated electron-hole pairs and low light-harvesting efficiency. To overcome these challenges, an S-scheme heterojunction integrating Zn x Cd 1– x S y (ZCS) nanocrystals with FePS 3 (FPS) nanosheets was designed to facilitate both photocatalytic hydrogen evolution and the conversion of benzyl alcohol to benzaldehyde (BAD). The obtained ZCS/FPS-15 (ZCSF-15) heterostructure exhibits remarkable visible-light-harvesting enhancement and charge separation efficiency, delivering a hydrogen evolution rate of 73.06 mmol g −1 h −1 and a BAD production rate of 46.68 mmol g −1 h −1 , corresponding to 22.34- and 53.65-fold performance enhancements, respectively, compared with that of bare ZCS. To reveal the charge transfer dynamics and clarify the reaction mechanisms, in-situ diffuse-reflectance Fourier-transform infrared spectroscopy was used to identify key oxidation intermediates, coupled with interfacial charge transfer dynamics probed using in-situ X-ray photoelectron spectroscopy and atomic force microscopy-Kelvin probe force microscopy. This work establishes a dual-function heterojunction model, offering valuable insights into how to design S-scheme heterojunctions for simultaneous green fuel generation and selective organic synthesis. The self-assembled Zn x Cd 1– x S y /FePS 3 heterojunction enables efficient hydrogen evolution coupled with benzyl alcohol oxidation, offering a dual-functional photocatalytic platform for sustainable energy and chemical production.
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