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AuthorAit Si Ali, Amine
AuthorDjelouat, Hamza
AuthorAmira, Abbes
AuthorBensaali, Faycal
AuthorBenammar, Mohieddine
AuthorBermak, Amine
Available date2021-01-25T06:45:45Z
Publication Date2017
Publication NameMicroprocessors and Microsystems
ResourceScopus
ISSN1419331
URIhttp://dx.doi.org/10.1016/j.micpro.2017.07.012
URIhttp://hdl.handle.net/10576/17413
AbstractElectronic nose or machine olfaction are systems used for detection and identification of odorous com- pounds and gas mixtures. An electronic nose system is mainly made of two parts, the sensing part which takes the form of a single or a set of sensors and the processing part which takes the form of some pat- tern recognition algorithms. As an alternative solution to pure software or hardware implementation of the processing part of a gas identification system, this paper proposes a hardware/software co-design ap- proach using the Zynq platform for the implementation of an electronic nose system based on principal component analysis as a dimensionality reduction technique and decision tree as a classification algo- rithm using two different sensors array, a 4 ×4 in-house fabricated sensor and a commercial one based on 7 Figaro sensors, for comparison purpose. The system was successfully trained and simulated in MAT- LAB environment prior to the implementation on the Zynq platform. Various scenarios were explored and discussed including the investigation of different combination of principal components as well as the uti- lization of drift compensation technique to improve the identification accuracy. High level synthesis was carried out on the proposed designs using different optimization directives including loop unrolling, ar- ray partitioning and pipelining. Hardware implementation results on the Zynq system on chip show that real-time performances can be achieved for proposed electronic nose systems using hardware/software co-design approach with a single ARM processor running at 667 MHz and the programmable logic run- ning at 142 MHz. In addition, using the designed IP cores and for the best scenarios, a gas can be iden- tified in 3.46 μs using the 4 ×4 sensor and 0.55 μs using the Figaro sensors. Furthermore, it has been noticed that the choice of the sensor array has an important impact on performances in terms of ac- curacy and processing time. Finally, it has been demonstrated that the programmable logic of the Zynq platform consumes much less power than the processing system.
SponsorThis paper was made possible by National Priorities Research Program (NPRP) grant No. 5 - 080 - 2 - 028 from the Qatar National Research Fund (a member of Qatar Foundation). The statements made herein are solely the responsibility of the authors.
Languageen
PublisherElsevier B.V.
SubjectElectronic Tongues
Gas Sensor
Odors
TitleElectronic nose system on the Zynq SoC platform
TypeArticle
Pagination145-156
Volume Number53


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