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Improving the chemical selectivity of an electronic nose to TNT, DNT and RDX using machine learning
ID
Gradišek, Anton
(
Author
),
ID
Midden, Marion van
(
Author
),
ID
Koterle, Matija
(
Author
),
ID
Prezelj, Vid
(
Author
),
ID
Strle, Drago
(
Author
),
ID
Štefane, Bogdan
(
Author
),
ID
Brodnik, Helena
(
Author
),
ID
Trifković, Mario
(
Author
),
ID
Kvasić, Ivan
(
Author
),
ID
Zupanič, Erik
(
Author
),
ID
Muševič, Igor
(
Author
)
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https://www.mdpi.com/1424-8220/19/23/5207
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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 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.
Language:
English
Keywords:
artificial nose
,
e-nose
,
electronic nose
,
detection of explosives
,
chemical selectivity of e-nose
,
arrays of sensors
,
machine learning and sensor arrays
Work type:
Article
Typology:
1.01 - Original Scientific Article
Organization:
FE - Faculty of Electrical Engineering
FKKT - Faculty of Chemistry and Chemical Technology
FMF - Faculty of Mathematics and Physics
Publication status:
Published
Publication version:
Version of Record
Year:
2019
Number of pages:
15 str.
Numbering:
Vol. 19, iss. 23, art. 5207
PID:
20.500.12556/RUL-133128
UDC:
53
ISSN on article:
1424-8220
DOI:
10.3390/s19235207
COBISS.SI-ID:
32908327
Publication date in RUL:
12.11.2021
Views:
873
Downloads:
216
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Record is a part of a journal
Title:
Sensors
Shortened title:
Sensors
Publisher:
MDPI
ISSN:
1424-8220
COBISS.SI-ID:
10176278
Licences
License:
CC BY 4.0, Creative Commons Attribution 4.0 International
Link:
http://creativecommons.org/licenses/by/4.0/
Description:
This is the standard Creative Commons license that gives others maximum freedom to do what they want with the work as long as they credit the author.
Licensing start date:
01.12.2019
Projects
Funder:
ARRS - Slovenian Research Agency
Project number:
J7-8272
Name:
Integrirani večkanalni umetni nos za zaznavanje sledov molekul v parni fazi
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