The monitoring and identification of combustible gases are crucial tasks in fields such as industrial safety, environmental protection. In real-world scenarios, different types of combustible gases, such as H 2 , C 2 H 4 , and C 2 H 2 , often coexist, which makes recognition more difficult. To address this challenge, we propose a gas sensor based on a ZnO-Au-SnO 2 heterostructure. The morphology and chemical state of the material were characterized using scanning electron microscopy and X-ray photoelectron spectroscopy, which revealed a uniform distribution of Au and binding-energy shifts indicative of electron transfer between ZnO and SnO 2 . Experimental results demonstrate that modifying Au and SnO 2 significantly enhances the sensor's response to H 2 , C 2 H 4 , and C 2 H 2 . By applying a one-dimensional convolutional neural network (1DCNN) to a sensor array, efficient feature extraction of response signals and high-precision gas classification were achieved. The recognition accuracy for gas mixtures exceeds 96%. Furthermore, the lightweight 1DCNN model has been deployed on a Raspberry Pi edge computing platform, verifying its feasibility on small-sized, low-power devices. The system achieves millisecond-level inference and high-confidence predictions, indicating its potential for real-time on-site gas detection. This study synergistically optimizes the gas sensing system from both material and algorithm aspects, providing a feasible way to the intelligent recognition of multi-component combustible gases. • ZnO–Au–SnO 2 composite films prepared by magnetron sputtering can achieve highly enhanced responses to H 2 , C 2 H 4 , and C 2 H 2 • A lightweight 1DCNN enables efficient feature extraction and high-accuracy recognition (> 96%) of multi-component gas mixtures • The lightweight model is deployed on a Raspberry Pi, demonstrating real-time and low-power on-site multi-gas identification.
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Jiao et al. (Wed,) studied this question.
synapsesocial.com/papers/69f04d9f727298f751e71fa8 — DOI: https://doi.org/10.1016/j.talanta.2026.129904
Mingzhi Jiao
China University of Mining and Technology
Xinyang Chen
Beijing Institute of Technology
Bing Deng
China University of Mining and Technology
Talanta
Uppsala University
China University of Mining and Technology
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