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Contrastive domain generalization convolution neural network correcting the drift of gas sensors.

Authors :
Chu, Jifeng
Yao, Renhong
Huang, Xianbo
Yang, Aijun
Pan, Jianbin
Yuan, Huan
Rong, Mingzhe
Wang, Xiaohua
Source :
Sensors & Actuators A: Physical. Jul2024, Vol. 372, pN.PAG-N.PAG. 1p.
Publication Year :
2024

Abstract

The drift problems of gas sensors caused by aging ingredients and unexpected environmental impacts, which can severely decrease the performance and service life of electronic noses, have been widely discussed. Many scholars believe that the essential reason for sensor drift can be attributed to the different data distributions in the latent feature space. However, traditional drift compensation methods like OSC, GasNet, SniffMultinose, and SniffConv are costly and complex. This paper has introduced an algorithm called contrastive domain generalization convolution neural network (CDCNN) to resolve this problem. For the first time, domain generalization and contrastive learning were used as the drift compensation methods for the gas sensor. A novel data augmentation was proposed to enrich the datasets. Feature generation module is used to simulate the drift of gas sensors. Contrastive learning adapts to the unseen areas in the latent feature space. The artificially generated features and the original features are drawn closer in the feature space to improve the algorithm's generalization ability. Experiments on long-term drift data show that CDCNN achieves high accuracy (0.7230). The experimental results show that the CDCNN algorithm is more suitable for practical applications due to less resource consumption and looser constraints. [Display omitted] • Developing a domain generalization method to compensate for drift in gas sensors. • Designing a novel data manipulation method with effective generalization ability. • CDCNN is more practical due to less resource consumption and looser constraints. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
09244247
Volume :
372
Database :
Academic Search Index
Journal :
Sensors & Actuators A: Physical
Publication Type :
Academic Journal
Accession number :
176864835
Full Text :
https://doi.org/10.1016/j.sna.2024.115314