Department of Mechanical and Aerospace Engineering, University of California Davis, Davis, CA, USA.
UC Davis Lung Center, One Shields Avenue, Davis, CA, USA.
Anal Methods. 2022 Sep 1;14(34):3315-3322. doi: 10.1039/d2ay00723a.
Differential mobility spectrometry (DMS)-based detectors are being widely studied to detect chemical warfare agents, explosives, chemicals, drugs and analyze volatile organic compounds (VOCs). The dispersion plots from DMS devices are complex to effectively analyze through visual inspection. In the current work, we adopted machine learning to differentiate pure chemicals and identify chemicals in a mixture. In particular, we observed the convolutional neural network algorithm exhibits excellent accuracy in differentiating chemicals in their pure forms while also identifying chemicals in a mixture. In addition, we propose and validate the magnitude-squared coherence (msc) between the DMS data of known chemical composition and that of an unknown sample can be sufficient to inspect the chemical composition of the unknown sample. We have shown that the msc-based chemical identification requires the least amount of experimental data as opposed to the machine learning approach.
基于差分迁移谱(DMS)的探测器正在被广泛研究,以用于探测化学战剂、爆炸物、化学品、毒品以及分析挥发性有机化合物(VOCs)。通过目视检查,DMS 设备的弥散图很难进行有效分析。在目前的工作中,我们采用机器学习来区分纯化学物质和混合物中的化学物质。具体来说,我们观察到卷积神经网络算法在区分纯化学物质方面表现出了优异的准确性,同时也能够识别混合物中的化学物质。此外,我们提出并验证了具有已知化学成分的 DMS 数据与未知样品的 DMS 数据之间的幅度平方相干性(msc)足以检查未知样品的化学成分。我们已经表明,基于 msc 的化学识别所需的实验数据量最少,而不是机器学习方法。