Yang Xiaokai, Mukherjee Anwesha, Li Min, Wang Jiuhong, Xia Yong, Rosenwaks Yossi, Zhao Libo, Dong Linxi, Jiang Zhuangde
State Key Laboratory for Manufacturing Systems Engineering, International Joint Laboratory for Micro/Nano Manufacturing and Measurement Technologies, Xi'an Jiaotong University (Yantai) Research Institute for Intelligent Sensing Technology and System, Xi'an Jiaotong University, Xi'an 710049, China.
School of Mechanical Engineering, Xi'an Jiaotong University, Xi'an 710049, China.
ACS Sens. 2023 Apr 28;8(4):1819-1826. doi: 10.1021/acssensors.3c00147. Epub 2023 Apr 12.
With the development of Internet of Things technology, various sensors are under intense development. Electrostatically formed nanowire (EFN) gas sensors are multigate Si sensors based on CMOS technology and have the unique advantages of ultralow power consumption and very large-scale integration (VLSI) compatibility for mass production. In order to achieve selectivity, machine learning is required to accurately identify the detected gas. In this work, we introduce automatic learning technology, by which the common algorithms are sorted and applied to the EFN gas sensor. The advantages and disadvantages of the top four tree-based model algorithms are discussed, and the unilateral training models are ensembled to further improve the accuracy of the algorithm. The analyses of two groups of experiments show that the CatBoost algorithm has the highest evaluation index. In addition, the feature importance of the classification is analyzed from the physical meaning of electrostatically formed nanowire dimensions, paving the way for model fusion and mechanism exploration.
随着物联网技术的发展,各种传感器正在紧锣密鼓地研发中。静电形成纳米线(EFN)气体传感器是基于CMOS技术的多栅极硅传感器,具有超低功耗和与超大规模集成(VLSI)兼容以进行大规模生产的独特优势。为了实现选择性,需要机器学习来准确识别检测到的气体。在这项工作中,我们引入自动学习技术,通过该技术对常用算法进行分类并应用于EFN气体传感器。讨论了前四种基于树的模型算法的优缺点,并将单边训练模型集成起来以进一步提高算法的准确性。两组实验分析表明,CatBoost算法具有最高的评估指标。此外,从静电形成纳米线尺寸的物理意义分析分类的特征重要性,为模型融合和机理探索铺平了道路。