2024
DOI: 10.3390/s24041319
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Electronic Nose Drift Suppression Based on Smooth Conditional Domain Adversarial Networks

Huichao Zhu,
Yu Wu,
Ge Yang
et al.

Abstract: Anti-drift is a new and serious challenge in the field related to gas sensors. Gas sensor drift causes the probability distribution of the measured data to be inconsistent with the probability distribution of the calibrated data, which leads to the failure of the original classification algorithm. In order to make the probability distributions of the drifted data and the regular data consistent, we introduce the Conditional Adversarial Domain Adaptation Network (CDAN)+ Sharpness Aware Minimization (SAM) optimi… Show more

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