指纹(计算)
气相
衍生工具(金融)
空格(标点符号)
计算机科学
材料科学
生物系统
化学
人工智能
物理化学
业务
生物
财务
操作系统
作者
H. Cho,Geonhee Lee,D.H. Kim,Dong Hyeon Kim,Beom Joon Kim,Yun Jin Choi,Jeong‐O Lee,Gyu‐Tae Kim
出处
期刊:ACS Sensors
[American Chemical Society]
日期:2025-04-08
被引量:1
标识
DOI:10.1021/acssensors.4c03594
摘要
Many studies have focused on smart electronic noses combining machine learning and gas sensor arrays, but feature extraction for training has generally relied on dimensionality reduction techniques based on raw time-series data. These methods do not reflect the principles of sensor responses, limiting their applicability in diverse gas environments. In this study, we propose a new phase space, expressed through the first and second derivatives of dynamic response signals, to effectively characterize the nonlinear responses between gas sensors and gases. Sensing data transformed into a phase space showed unique patterns depending on the type and concentration of gases, and these were investigated for alkanes with various chain lengths (CH4, C3H8, C4H10). By applying these patterns as a preprocessing method, CNN-based gas identification machine learning achieved a high classification accuracy of 99.1% and a low concentration prediction error of 2.23 ppm using only a single sensor. Additionally, the algorithm was trained and validated across various regions of the phase space, identifying the minimum time and region required for simultaneous gas classification and concentration prediction. This study presents a novel strategy for the fast and accurate identification of gases within seconds and is expected to have significant scalability in diverse gas environments.
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