Highly sensitive and selective hydrogen sulfide (H(2)S) sensors based on hierarchical highly ordered SnO(2) nanobowl branched ZnO nanowires (NWs) were synthesized via a sequential process combining hard template processing, atomic-layer deposition, and hydrothermal processing. The hierarchical sensing materials were prepared in situ on microelectromechanical systems, which are expected to achieve high-performance gas sensors with superior sensitivity, long-term stability and repeatability, as well as low power consumption. Specifically, the hierarchical nanobowl SnO(2)@ZnO NW sensor displayed a high sensitivity of 6.24, a fast response and recovery speed (i.e., 14âs and 39âs, respectively), and an excellent selectivity when detecting 1 ppm H(2)S at 250â°C, whose rate of resistance change (i.e., 5.24) is 2.6 times higher than that of the pristine SnO(2) nanobowl sensor. The improved sensing performance could be attributed to the increased specific surface area, the formation of heterojunctions and homojunctions, as well as the additional reaction between ZnO and H(2)S, which were confirmed by electrochemical characterization and band alignment analysis. Moreover, the well-structured hierarchical sensors maintained stable performance after a month, suggesting excellent stability and repeatability. In summary, such well-designed hierarchical highly ordered nanobowl SnO(2)@ZnO NW gas sensors demonstrate favorable potential for enhanced sensitive and selective H(2)S detection with long-term stability and repeatability.
Hierarchical highly ordered SnO(2) nanobowl branched ZnO nanowires for ultrasensitive and selective hydrogen sulfide gas sensing.
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作者:Zhu Li-Yuan, Yuan Kai-Ping, Yang Jia-He, Hang Cheng-Zhou, Ma Hong-Ping, Ji Xin-Ming, Devi Anjana, Lu Hong-Liang, Zhang David Wei
| 期刊: | Microsystems & Nanoengineering | 影响因子: | 9.900 |
| 时间: | 2020 | 起止号: | 2020 May 4; 6:30 |
| doi: | 10.1038/s41378-020-0142-6 | ||
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