TY - JOUR
T1 - Quantum of selectivity testing: detection of isomers and close homologs using an AZO based e-nose without a prior training
AU - Goikhman, Boris
AU - Fedorov, Fedor S.
AU - Simonenko, Nikolay P.
AU - Simonenko, Tatiana L.
AU - Fisenko, Nikita A.
AU - Dubinina, Tatiana S.
AU - Ovchinnikov, George
AU - Lantsberg, Anna
AU - Lipatov, Alexey
AU - Simonenko, Elizaveta P.
AU - Nasibulin, Albert G.
PY - 2022/4/12
Y1 - 2022/4/12
N2 - Tracing the chemical composition of the surrounding environment appeals to the design of highly sensitive and selective gas sensors. Primarily driven by IoT, miniaturized multisensor systems, like e-noses, are considered to address both selectivity and sensitivity issues. Although e-noses might enable discrimination between close homologs and isomers, they are required to be "trained", i.e. to project analyte-related signals into artificial space, prior to their in-field applications. In this study, using the programmed co-precipitation method, we synthesized aluminum-doped zinc oxide (AZO) and employed it as a sensing material in an e-nose to examine the sensing performance towards close C1-C5 alcohol homologs and isomers, e.g. 1-propanol and 2-propanol, 1-butanol and isobutanol in the frame of the multisensor paradigm. For the first time, we demonstrated selective recognition of the alcohol vapors without prior training of the e-nose. This was realized by matching projections of the known analytes' "fingerprints", used to build a chemical space, with the projections of analyte-related signals acquired using the e-nose in artificial space under machine learning algorithms. Moreover, the AZO based e-nose demonstrates a remarkable, up to 0.87, chemoresistive response to alcohol vapors, 0.9 ppm, in the mixture with air at 300 degrees C with a detection limit down to sub-ppb level. This opens a new avenue for the development of self-learning gas analytical systems, which might recognize new analytes whose profiles are not yet stored in their library.
AB - Tracing the chemical composition of the surrounding environment appeals to the design of highly sensitive and selective gas sensors. Primarily driven by IoT, miniaturized multisensor systems, like e-noses, are considered to address both selectivity and sensitivity issues. Although e-noses might enable discrimination between close homologs and isomers, they are required to be "trained", i.e. to project analyte-related signals into artificial space, prior to their in-field applications. In this study, using the programmed co-precipitation method, we synthesized aluminum-doped zinc oxide (AZO) and employed it as a sensing material in an e-nose to examine the sensing performance towards close C1-C5 alcohol homologs and isomers, e.g. 1-propanol and 2-propanol, 1-butanol and isobutanol in the frame of the multisensor paradigm. For the first time, we demonstrated selective recognition of the alcohol vapors without prior training of the e-nose. This was realized by matching projections of the known analytes' "fingerprints", used to build a chemical space, with the projections of analyte-related signals acquired using the e-nose in artificial space under machine learning algorithms. Moreover, the AZO based e-nose demonstrates a remarkable, up to 0.87, chemoresistive response to alcohol vapors, 0.9 ppm, in the mixture with air at 300 degrees C with a detection limit down to sub-ppb level. This opens a new avenue for the development of self-learning gas analytical systems, which might recognize new analytes whose profiles are not yet stored in their library.
KW - DOPED ZNO
KW - SENSING PROPERTIES
KW - ELECTRONIC NOSE
KW - THIN-FILMS
KW - GRAIN-SIZE
KW - GAS SENSOR
KW - DISCRIMINATION
KW - TEMPERATURE
KW - QUANTIFICATION
KW - SENSITIVITY
UR - http://www.scopus.com/inward/record.url?scp=85127833228&partnerID=8YFLogxK
U2 - 10.1039/d1ta10589b
DO - 10.1039/d1ta10589b
M3 - Article
SN - 2050-7488
VL - 10
SP - 8413
EP - 8423
JO - Journal of Materials Chemistry. A
JF - Journal of Materials Chemistry. A
IS - 15
ER -