State Key Laboratory of Photon-Technology in Western China Energy, International Collaborative Center on Photoelectric Technology and Nano Functional Materials, Institute of Photonics & Photon-Technology, Northwest University, Xi'an 710069, China.
Key Laboratory of Synthetic and Natural Functional Molecule of the Ministry of Education, College of Chemistry & Materials Science, Northwest University, Xi'an 710127, China.
Anal Chem. 2021 Feb 2;93(4):2281-2290. doi: 10.1021/acs.analchem.0c04155. Epub 2021 Jan 5.
Elemental identification of individual microsized aerosol particles is an important topic in air pollution studies. However, simultaneous and quantitative analysis of multiple constituents in a single aerosol particle with the noncontact in situ manner is still a challenging task. In this work, we explore the laser trapping-LIBS-machine learning to analyze four elements (Zn, Ni, Cu, and Cr) absorbed in a single micro-carbon black particle in air. By employing a hollow laser beam for trapping, the particle can be restricted in a range as small as ∼1.72 μm, which is much smaller than the focal diameter of the flat-topped LIBS exciting laser (∼20 μm). Therefore, the particle can be entirely and homogeneously radiated, and the LIBS spectrum with a high signal-to-noise ratio (SNR) is correspondingly achieved. Then, two types of calibration models, i.e., the univariate method (calibration curve) and the multivariate calibration method (random forests (RF) regression), are employed for data processing. The results indicate that the RF calibration model shows a better prediction performance. The mean relative error (MRE), relative standard deviation (RSD), and root-mean-squared error (RMSE) are reduced from 0.1854, 363.7, and 434.7 to 0.0866, 179.8, and 216.2 ppm, respectively. Finally, simultaneous and quantitative determination of the four metal contents with high accuracy is realized based on the RF model. The method proposed in this work has the potential for online single aerosol particle analysis and further provides a theoretical basis and technical support for the precise prevention and control of composite air pollution.
对单个气溶胶颗粒进行元素识别是空气污染研究中的一个重要课题。然而,以非接触式原位方式同时定量分析单个气溶胶颗粒中的多种成分仍然是一个具有挑战性的任务。在这项工作中,我们探索了激光捕获-激光诱导击穿光谱-机器学习方法,以分析空气中单个微碳黑颗粒中吸收的四种元素(Zn、Ni、Cu 和 Cr)。通过采用空心激光束进行捕获,可以将颗粒限制在约 1.72μm 的范围内,这比平顶激光诱导击穿光谱激发激光的焦斑直径(约 20μm)小得多。因此,颗粒可以被完全均匀地辐射,并且相应地获得具有高信噪比(SNR)的 LIBS 光谱。然后,采用两种校准模型,即单变量方法(校准曲线)和多变量校准方法(随机森林(RF)回归)进行数据处理。结果表明,RF 校准模型表现出更好的预测性能。平均相对误差(MRE)、相对标准偏差(RSD)和均方根误差(RMSE)分别从 0.1854、363.7 和 434.7 降低到 0.0866、179.8 和 216.2 ppm。最后,基于 RF 模型实现了对四种金属含量的同时准确定量测定。本工作提出的方法具有在线单个气溶胶颗粒分析的潜力,为复合空气污染的精确防控提供了理论依据和技术支持。