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二维二硫化钼/一维酞菁铜异质结的制备及其气敏性能

Preparation and Gas-Sensing Properties of Two-Dimensional Molybdenum Disulfide/One-Dimensional Copper Phthalocyanine Heterojunction.

作者信息

Chen Guoqing, Xu Xiaojie, Wang Hao, Shaymurat Talgar

机构信息

Key Laboratory of New Energy and Materials Research, Xinjiang Institute of Engineering, Urumqi 830023, China.

出版信息

Sensors (Basel). 2023 Nov 22;23(23):9321. doi: 10.3390/s23239321.

Abstract

Although 2D MoS alone shows excellent gas-sensing performance, it is prone to stacking when used as the sensitive layer, resulting in insufficient contact with the target gas and lower sensitivity. To solve this, a 2D-MoS/1D-CuPc heterojunction was prepared with different weight ratios of MoS nanosheets to CuPc micro-nanowires, and its room-temperature gas-sensing properties were studied. The response of the 2D-MoS/1D-CuPc heterojunction to a target gas was related to the weight ratio of MoS to CuPc. When the weight ratio of MoS to CuPc was 20:7 (7-CM), the gas sensitivity of MoS/CuPc composites was the best. Compared with the pure MoS sensor, the responses of 7-CM to 1000 ppm formaldehyde (CHO), acetone (CHO), ethanol (CHO), and 98% RH increased by 122.7, 734.6, 1639.8, and 440.5, respectively. The response of the heterojunction toward CHO was twice that of CHO and 13 times that of CHO. In addition, the response time of all sensors was less than 60 s, and the recovery time was less than 10 s. These results provide an experimental reference for the development of high-performance MoS-based gas sensors.

摘要

尽管二维二硫化钼单独使用时表现出优异的气敏性能,但用作敏感层时容易发生堆叠,导致与目标气体的接触不充分,灵敏度降低。为了解决这个问题,制备了具有不同重量比的二硫化钼纳米片与酞菁铜微纳米线的二维二硫化钼/一维酞菁铜异质结,并研究了其室温气敏性能。二维二硫化钼/一维酞菁铜异质结对目标气体的响应与二硫化钼与酞菁铜的重量比有关。当二硫化钼与酞菁铜的重量比为20:7(7-CM)时,二硫化钼/酞菁铜复合材料的气敏性最佳。与纯二硫化钼传感器相比,7-CM对1000 ppm甲醛(CHO)、丙酮(CHO)、乙醇(CHO)和98%相对湿度的响应分别提高了122.7、734.6、1639.8和440.5。异质结对CHO的响应是CHO的两倍,是CHO的13倍。此外,所有传感器的响应时间均小于60 s,恢复时间均小于10 s。这些结果为高性能二硫化钼基气体传感器的开发提供了实验参考。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/ca7d/10708874/b58d4c81c0fa/sensors-23-09321-g001.jpg

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