Jožef Stefan Institute, Jamova 39, 1000 Ljubljana, Slovenia.
Faculty of Electrical Engineering, University of Ljubljana, EE dep., Tržaška 25, 1000 Ljubljana, Slovenia.
Sensors (Basel). 2019 Nov 27;19(23):5207. doi: 10.3390/s19235207.
We used a 16-channel e-nose demonstrator based on micro-capacitive sensors with functionalized surfaces to measure the response of 30 different sensors to the vapours from 11 different substances, including the explosives 1,3,5-trinitro-1,3,5-triazinane (RDX), 1-methyl-2,4-dinitrobenzene (DNT) and 2-methyl-1,3,5-trinitrobenzene (TNT). A classification model was developed using the Random Forest machine-learning algorithm and trained the models on a set of signals, where the concentration and flow of a selected single vapour were varied independently. It is demonstrated that our classification models are successful in recognizing the signal pattern of different sets of substances. An excellent accuracy of 96% was achieved for identifying the explosives from among the other substances. These experiments clearly demonstrate that the silane monolayers used in our sensors as receptor layers are particularly well suited to selecting and recognizing TNT and similar types of explosives from among other substances.
我们使用了一种基于功能化表面的微电容传感器的 16 通道电子鼻演示器来测量 30 个不同传感器对 11 种不同物质蒸气的响应,其中包括爆炸物 1,3,5-三硝基-1,3,5-三嗪(RDX)、1-甲基-2,4-二硝基苯(DNT)和 2-甲基-1,3,5-三硝基苯(TNT)。使用随机森林机器学习算法开发了一个分类模型,并在一组信号上对模型进行了训练,其中选择的单一蒸气的浓度和流量是独立变化的。结果表明,我们的分类模型能够成功识别不同物质组的信号模式。在识别爆炸物方面,取得了 96%的优异准确率。这些实验清楚地表明,我们传感器中用作受体层的硅烷单层特别适合于从其他物质中选择和识别 TNT 及类似类型的爆炸物。