Zhu Jianxiong, Ren Zhihao, Lee Chengkuo
Department of Electrical and Computer Engineering, National University of Singapore, Singapore, 117576, Singapore.
Center for Intelligent Sensors and MEMS (CISM), National University of Singapore, Singapore, 117576, Singapore.
ACS Nano. 2021 Jan 26;15(1):894-903. doi: 10.1021/acsnano.0c07464. Epub 2020 Dec 14.
As a natural monitor of health conditions for human beings, volatile organic compounds (VOCs) act as significant biomarkers for healthcare monitoring and early stage diagnosis of diseases. Most existing VOC sensors use semiconductors, optics, and electrochemistry, which are only capable of measuring the total concentration of VOCs with slow response, resulting in the lack of selectivity and low efficiency for VOC detection. Infrared (IR) spectroscopy technology provides an effective solution to detect chemical structures of VOC molecules by absorption fingerprints induced by the signature vibration of chemical stretches. However, traditional IR spectroscopy for VOC detection is limited by the weak light-matter interaction, resulting in large optical paths. Leveraging the ultrahigh electric field induced by plasma, the vibration of the molecules is enhanced to improve the light-matter interaction. Herein, we report a plasma-enhanced IR absorption spectroscopy with advantages of fast response, accurate quantization, and good selectivity. An order of ∼kV voltage was achieved from the multiswitched manipulation of the triboelectric nanogenerator by repeated sliding. The VOC species and their concentrations were well-quantified from the wavelength and intensity of spectra signals with the enhancement from plasma. Furthermore, machine learning has visualized the relationship of different VOCs in the mixture, which demonstrated the feasibility of the VOC identification to mimic patients.
作为人类健康状况的天然监测指标,挥发性有机化合物(VOCs)是医疗监测和疾病早期诊断的重要生物标志物。现有的大多数VOC传感器采用半导体、光学和电化学方法,这些方法只能测量VOC的总浓度,响应速度慢,导致VOC检测缺乏选择性且效率低下。红外(IR)光谱技术通过化学伸缩特征振动引起的吸收指纹来检测VOC分子的化学结构,提供了一种有效的解决方案。然而,传统的用于VOC检测的红外光谱受到弱光与物质相互作用的限制,导致光路较长。利用等离子体产生的超高电场,增强分子振动以改善光与物质的相互作用。在此,我们报道了一种具有快速响应、精确量化和良好选择性的等离子体增强红外吸收光谱。通过反复滑动对摩擦纳米发电机进行多开关操作,实现了约千伏的电压。利用等离子体增强,从光谱信号的波长和强度可以很好地量化VOC种类及其浓度。此外,机器学习可视化了混合物中不同VOC之间的关系,证明了对模拟患者进行VOC识别的可行性。