APPLICATION OF MACHINE LEARNING ALGORITHMS IN ELECTRONIC NOSE TECHNOLOGY
Abstract
Electronic nose (e-nose) technology is considered the main tool for gas identification and determination of its concentration. The artificial olfactory system includes three main components: a gas sensor or sensor matrix, receiving and pre-processing the signal device, and a pattern recognition algorithm. Gas identification is usually carried out using various methods of machine learning or deep learning. The simple and portable electronic nose systems that provide identification of the greatest possible number of gases with satisfactory accuracy and can be deployed on the low-power microcomputer and microcontroller bases are particularly promising for application in sensor electronics, IoT, robotics, etc. Therefore, the purpose of the work is to study the effectiveness of gas recognition by various machine learning methods that do not require significant computing resources and can be implemented using edge computing technologies. Particular attention was focused on improving the effectiveness of machine learning models for gas recognition.
Models of multi-class classification of the sensor data obtained using the graphene field-effect transistor in the form of dependence of the reduced graphene oxide film resistance on the gate voltage have been implemented. The effectiveness of recognition of ethanol, ammonia, acetone, and toluene in the gaseous state by support vector machine (SVM), gradient boosting, k-nearest neighbors (KNN), and decision tree methods was studied using confusion matrices and classification reports. The multi-class classification models have been evaluated according to the accuracy, precision, recall, and F1-score metrics. The effectiveness of gas recognition by the proposed machine learning models in concentration ranges <5% and >5% was compared. It was found that the accuracy of identification of the analyzed gases significantly depends on their concentration. In the specified concentration ranges, the KNN method has the highest classification accuracy (0.72 and 1.00, respectively). The possibility of increasing the accuracy of gas recognition by optimizing the hyperparameters of machine learning models has been demonstrated.
Key words: intelligent sensor, gas identification, machine learning, multi-class classification.
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- Xu Y., Zhao X., Chen Y., Zhao W. Research on a mixed gas recognition and concentration detection algorithm based on a metal oxide semiconductor olfactory system sensor array // Sensors. – 2018. –Vol. 18. – P. 3264.
- Ye Z., Liu Y., Li Q. Recent progress in smart electronic nose technologies enabled with machine learning methods // Sensors. – 2021. – Vol. 21. – P. 7620.
- Capelli L., Sironi S., Del Rosso R. Electronic noses for environmental monitoring applications // Sensors. – 2014. – Vol. 14. – P. 19979–20007.
- Tan J., Xu J. Applications of electronic nose (e-nose) and electronic tongue (e-tongue) in food quality-related properties determination: A review // Artificial Intelligence in Agriculture. – 2020. – Vol 4. – P. 104–115.
- Lekha S., M. S. Recent advancements and future prospects on e-nose sensors technology and machine learning approaches for non-invasive diabetes diagnosis: A review // IEEE Rev. Biomed. Eng. – 2021. – Vol. 14. – P. 127–138.
- Vadala R., Pattnaik B., Bangaru S., Rai D., Tak J., Kashyap S., Verma U., Yadav G., Dhaliwal R.S., Mittal S., Hadda V., Madan K., Guleria R., Agrawal A., Mohan A. A review on electronic nose for diagnosis and monitoring treatment response in lung cancer // Journal of Breath Research. – 2023. – Vol. 17. – P. 024002.
- Huang S., Croy A., Panes-Ruiz L.A., Khavrus V., Bezugly V., Ibarlucea B., Cuniberti G. Machine learning-enabled smart gas sensing platform for identification of industrial gases // Adv. Intell. Syst. – 2022. – Vol. 4. – P. 2200016.
- Li H., Wang D., Zhang Y. Knowledge-based genetic algorithms data fusion and its application in mine mixed-gas detection // Journal of Software. – 2012. – Vol. 7. – P. 303–307.
- Haridas D., Chowdhuri A., Sreenivas K., Gupta V. Fabrication of SnO2 thin film based electronic nose for industrial environment // Proceedings of the IEEE Sensors Applications Symposium, Limerick, Ireland. – 2010. – P. 173–189.
- Maho P., Herrier C., Livache T., Comon P., Barthelmé S. Real-time gas recognition and gas unmixing in robot applications // Sensors and Actuators B: Chemical. – 2021. – Vol. 330. – P. 129111.
- Iskandarani M.Z. A novel odor key technique for security applications using electronic nose system // Am. J. Applied Sci. – 2010. – Vol. 7. – P. 1118–1122.
- Ma D., Gao J., Zhang Z., Zhao H. Gas recognition method based on the deep learning model of sensor array response map // Sensors and Actuators B: Chemical. – 2021. – Vol. 330. – P. 129349.
- Duy N.V., Thai N.X., Ngoc T.M., Le D.T.T., Hung C.M., Nguyen H., Tonezzer M., Hieu N.V., Hoa N.D. Design and fabrication of effective gradient temperature sensor array based on bilayer SnO2/Pt for gas classification // Sensors and Actuators B: Chemical. – 2022. – Vol. 351. – P. 130979.
- Hayasaka T., Lin A., Copa V.C., Lopez Jr L.P., Loberternos R.A., Ballesteros L.I.M., Kubota Y., Liu Y., Salvador A.A., Lin L. An electronic nose using a single graphene FET and machine learning for water, methanol, and ethanol // Microsystems & Nanoengineering. – 2020. – Vol. 6. – P. 50.
- Mirzaee-Ghaleh E., Taheri-Garavand A., Ayari F., Lozano J. Identification of fresh-chilled and frozen-thawed chicken meat and estimation of their shelf life using an E-nose machine coupled fuzzy KNN // Food Anal. Methods. – 2020. – Vol. 13. – P. 678–689.
- Kim E., Lee S., Kim J.H., Kim C., Byun Y.T., Kim H.S., Lee T. Pattern Recognition for Selective Odor Detection with Gas Sensor Arrays // Sensors. – 2012. – Vol. 12. – P. 16262–16273.
- Pławiak P., Maziarz W. Classification of tea specimens using novel hybrid artificial intelligence methods // Sensors and Actuators B: Chemical. – 2014. – Vol. 192. – P. 117–125.
- Liu H., Chu R.Z., Tang Z.A. Metal oxide gas sensor drift compensation using a two-dimensional classifier ensemble // Sensors. – 2015. – Vol. 15. – P. 10180−10193.
- Qu C., Liu C., Gu Y., Chai S., Feng C., Chen B. Open-set gas recognition: A case-study based on an electronic nose dataset // Sensors and Actuators B: Chemical. – 2022. – Vol. 360. – P. 131652.
- Su S., Hu J. Gas identification by a single metal-oxide-semiconductor sensor assisted by ultrasound // ACS Sensors. – 2019. – Vol. 4. – P. 2491−2496.
- Olenych I.B., Horbenko Y.Y., Monastyrskii L.S., Aksimentyeva O.I., Boyko Y.V. Humidity sensor element based on porous silicon – reduced graphene oxide sandwich-like structures // Molecular Crystals and Liquid Crystals. – 2023. – Vol. 767. – P. 9–15.
- Markoulidakis I., Rallis I., Georgoulas I., Kopsiaftis G., Doulamis A., Doulamis N. Multiclass Confusion Matrix Reduction Method and Its Application on Net Promoter Score Classification Problem // Technologies. – 2021. – Vol. 9. – P. 81.
- Bergstra J., Bengio Y. Random Search for Hyper-Parameter Optimization // Journal of Machine Learning Research. – 2012. – Vol. 13. – P. 281–305.
DOI: http://dx.doi.org/10.30970/eli.25.5
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