2019
DOI: 10.3390/s19235207
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Improving the Chemical Selectivity of an Electronic Nose to TNT, DNT and RDX Using Machine Learning

Abstract: 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… Show more

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Cited by 15 publications
(11 citation statements)
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“…Such a predictive performance underscores the capability of the C-dot-IDE platform to detect individual gas targets in mixtures. Overall, the ML analysis outlined in Table 1 underscores an excellent predictive performance, on par or better than reported ML applications in chemometrics [41][42][43].…”
Section: Machine Learning Algorithm Applicationmentioning
confidence: 71%
“…Such a predictive performance underscores the capability of the C-dot-IDE platform to detect individual gas targets in mixtures. Overall, the ML analysis outlined in Table 1 underscores an excellent predictive performance, on par or better than reported ML applications in chemometrics [41][42][43].…”
Section: Machine Learning Algorithm Applicationmentioning
confidence: 71%
“…A common criticism of eNose and IMS technology is that they are unable to determine the identity and concentration of individual VOCs, except for combined-technology instruments [60]. It has therefore been argued that this "black box" approach relies too heavily on pattern-recognition algorithms [157]. Moreover, this method cannot yield a targeted VOC biomarker test for the diagnosis of a particular condition or disease [158].…”
Section: Discussionmentioning
confidence: 99%
“…175 Chemical selectivity was further improved using machine learning. 176 Zandieh et. al report the detection of RDX and PETN using a multi-modal sensor.…”
Section: Micro-electromechanical Systemsmentioning
confidence: 99%
“…Detection of TNT was possible at 3.5 ppt, within 1 s at room temperature . Chemical selectivity was further improved using machine learning …”
Section: Sensorsmentioning
confidence: 99%