Quantification of Size-Binned Particulate Matter in Electronic Cigarette Aerosols Using Multi-Spectral Optical Sensing and Machine Learning.

IF 3.4 3区 综合性期刊 Q2 CHEMISTRY, ANALYTICAL
Sensors Pub Date : 2024-11-03 DOI:10.3390/s24217082
Hao Jiang, Keith Kolaczyk
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Abstract

To monitor health risks associated with vaping, we introduce a multi-spectral optical sensor powered by machine learning for real-time characterization of electronic cigarette aerosols. The sensor can accurately measure the mass of particulate matter (PM) in specific particle size channels, providing essential information for estimating lung deposition of vaping aerosols. For the sensor's input, wavelength-specific optical attenuation signals are acquired for three separate wavelengths in the ultraviolet, red, and near-infrared range, and the inhalation pressure is collected from a pressure sensor. The sensor's outputs are PM mass in three size bins, specified as 100-300 nm, 300-600 nm, and 600-1000 nm. Reference measurements of electronic cigarette aerosols, obtained using a custom vaping machine and a scanning mobility particle sizer, provided the ground truth for size-binned PM mass. A lightweight two-layer feedforward neural network was trained using datasets acquired from a wide range of puffing conditions. The performance of the neural network was tested using unseen data collected using new combinations of puffing conditions. The model-predicted values matched closely with the ground truth, and the accuracy reached 81-87% for PM mass in three size bins. Given the sensor's straightforward optical configuration and the direct collection of signals from undiluted vaping aerosols, the achieved accuracy is notably significant and sufficiently reliable for point-of-interest sensing of vaping aerosols. To the best of our knowledge, this work represents the first instance where machine learning has been applied to directly characterize high-concentration undiluted electronic cigarette aerosols. Our sensor holds great promise in tracking electronic cigarette users' puff topography with quantification of size-binned PM mass, to support long-term personalized health and wellness.

利用多光谱光学传感和机器学习量化电子烟气溶胶中的大小分档颗粒物质。
为了监测与吸食电子烟相关的健康风险,我们推出了一种由机器学习驱动的多光谱光学传感器,用于实时表征电子烟气溶胶。该传感器可精确测量特定粒径通道中的颗粒物(PM)质量,为估算电子烟气溶胶的肺沉积提供重要信息。在传感器的输入端,采集紫外线、红外线和近红外三个不同波长的特定波长光学衰减信号,并通过压力传感器采集吸入压力。传感器的输出为三个粒度段的 PM 质量,分别为 100-300 纳米、300-600 纳米和 600-1000 纳米。电子香烟气溶胶的参考测量值是通过定制的电子烟机和扫描移动式颗粒测定仪获得的,为按粒度分级的可吸入颗粒物质量提供了基本事实。利用从各种抽吸条件下获得的数据集,对轻型双层前馈神经网络进行了训练。使用新的膨化条件组合收集的未见数据对神经网络的性能进行了测试。模型预测值与地面实况非常吻合,在三个粒径分段中,可吸入颗粒物质量的准确率达到 81-87%。鉴于该传感器的光学配置简单明了,而且可以直接采集未稀释的吸烟气溶胶的信号,因此所达到的准确度非常显著,对于吸烟气溶胶的兴趣点传感来说也足够可靠。据我们所知,这项工作是首次应用机器学习直接表征高浓度未稀释电子烟气溶胶。我们的传感器在跟踪电子香烟用户的吸气地形和量化可吸入颗粒物质量方面大有可为,可为长期的个性化健康和保健提供支持。
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来源期刊
Sensors
Sensors 工程技术-电化学
CiteScore
7.30
自引率
12.80%
发文量
8430
审稿时长
1.7 months
期刊介绍: Sensors (ISSN 1424-8220) provides an advanced forum for the science and technology of sensors and biosensors. It publishes reviews (including comprehensive reviews on the complete sensors products), regular research papers and short notes. Our aim is to encourage scientists to publish their experimental and theoretical results in as much detail as possible. There is no restriction on the length of the papers. The full experimental details must be provided so that the results can be reproduced.
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