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MXene/WO3Sensor Array with Improved SNN Algorithm for Accurate Identification of Toxic Gases

Authors :
Guo, Liangchao
Wang, Junke
Han, Haoran
Wang, Peng
Lu, Yunxiang
Yuan, Qilong
Du, Chunyu
Yin, Shuo
Zhou, Ye
Zhang, Chao
Source :
ACS Applied Materials & Interfaces; November 2024, Vol. 16 Issue: 45 p62421-62428, 8p
Publication Year :
2024

Abstract

Gas sensing is pivotal in critical areas such as industrial production and food safety. This study explores the gas classification capabilities of MXene-based gas sensors. Pure V2CTxMXene and an MXene/WO3nanocomposite were synthesized, and MXene-based gas sensors were integrated into a 2 × 2 rudimentary electronic nose array. The tests on gas sensitivity revealed that the inclusion of WO3nanoparticles (NPs) boosted the sensor’s response to 10 ppm of NO2from 2.82 to 3.45 at room temperature. Moreover, the sensor showcased a rapid response/recovery duration of 74.5/149.0 s, excellent environmental stability, and long-term reliable sensing performance. Furthermore, we have improved the method of accurately identifying four toxic gases detected by an MXene-based sensor array using a spiking neural network (SNN) based on the memristive system. Also, the performance of this identification method revealed that the method achieved 95.83% accuracy in the identification of the four gases. Notably, the improved SNN demonstrated approximately 5% higher accuracy than the other gas recognition algorithm. These results highlight the potential of SNN as a powerful tool to accurately and reliably identify toxic gases based on the gas sensor array.

Details

Language :
English
ISSN :
19448244
Volume :
16
Issue :
45
Database :
Supplemental Index
Journal :
ACS Applied Materials & Interfaces
Publication Type :
Periodical
Accession number :
ejs67897729
Full Text :
https://doi.org/10.1021/acsami.4c14793