Lv Siyuan, Pu Qi, Wang Bin, Sun Peng, Wang Jing, Li Qingrun, Zhu Liang, Wang Lijun, Liu Fangmeng, Lu Geyu
State Key Laboratory of Integrated Optoelectronics, Key Laboratory of Advanced Gas Sensors, Jilin Province, College of Electronic Science and Engineering, Jilin University, 2699 Qianjin Street, Changchun 130012, China.
International Center of Future Science, Jilin University, Changchun 130012, China.
ACS Sens. 2025 May 23;10(5):3638-3646. doi: 10.1021/acssensors.5c00405. Epub 2025 May 8.
Gas sensors combined with artificial intelligence capable of distinguishing multiple odors hold great promise in volatile organic compounds (VOCs) discriminative detection. However, various issues such as large size, high expenses, and mutual interference have limited the utilization of sensor array with conventional single-output sensors. Herein, a novel method for multicomponent gas detection was proposed based on pulsed heating (PH) with single-sensor operation. This strategy involved rapid and continuous dynamic temperature modulation to stimulate the sensor for generating feature-rich response signals toward isoprene, n-propanol, acetone, and their gas mixtures. First, the heating pulse was optimized to show the best sensing performance and reflect the maximum difference between diverse categories of gas compositions. Then the discrete wavelet transform (DWT) was utilized to further magnify the difference on signal curves toward target gases. Subsequently, multivariate features from the signals can be extracted, which were input into the machine learning algorithm for classification. By virtue of the proposed strategy, it showed the highest accuracy of 98.94% in the identification experiments of seven groups of VOC components. The results demonstrated that the PH strategy with feature engineering contributed to efficient identification with a limited sensor. It offers the chance to apply simple, miniaturized, and highly efficient multivariable gas sensor instead of multisensor array for artificial olfaction.
结合人工智能且能够区分多种气味的气体传感器在挥发性有机化合物(VOCs)的鉴别检测中具有巨大潜力。然而,诸如尺寸大、成本高和相互干扰等各种问题限制了传统单输出传感器阵列的应用。在此,提出了一种基于单传感器操作的脉冲加热(PH)的多组分气体检测新方法。该策略涉及快速连续的动态温度调制,以刺激传感器生成针对异戊二烯、正丙醇、丙酮及其气体混合物的富含特征的响应信号。首先,对加热脉冲进行优化以展现最佳传感性能,并反映不同类别气体成分之间的最大差异。然后利用离散小波变换(DWT)进一步放大信号曲线对目标气体的差异。随后,可以提取信号的多变量特征,并将其输入到机器学习算法中进行分类。凭借所提出的策略,在七组VOC成分的识别实验中显示出98.94%的最高准确率。结果表明,具有特征工程的PH策略有助于使用有限的传感器进行高效识别。它为应用简单、小型化且高效能的多变量气体传感器而非多传感器阵列用于人工嗅觉提供了机会。