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Comparison of machine learning algorithms for concentration detection and prediction of formaldehyde based on electronic nose

Liyuan Xu (Beijing Engineering and Technology Center for Convergence Networks and Ubiquitous Services, University of Science and Technology Beijing, Beijing, China)
Jie He (Beijing Engineering and Technology Center for Convergence Networks and Ubiquitous Services, University of Science and Technology Beijing, Beijing, China)
Shihong Duan (Beijing Engineering and Technology Center for Convergence Networks and Ubiquitous Services, University of Science and Technology Beijing, Beijing, China)
Xibin Wu (Beijing Engineering and Technology Center for Convergence Networks and Ubiquitous Services, University of Science and Technology Beijing, Beijing, China)
Qin Wang (Beijing Engineering and Technology Center for Convergence Networks and Ubiquitous Services, University of Science and Technology Beijing, Beijing, China)

Sensor Review

ISSN: 0260-2288

Article publication date: 21 March 2016

749

Abstract

Purpose

Sensor arrays and pattern recognition-based electronic nose (E-nose) is a typical detection and recognition instrument for indoor air quality (IAQ). The E-nose is able to monitor several pollutants in the air by mimicking the human olfactory system. Formaldehyde concentration prediction is one of the major functionalities of the E-nose, and three typical machine learning (ML) algorithms are most frequently used, including back propagation (BP) neural network, radial basis function (RBF) neural network and support vector regression (SVR).

Design/methodology/approach

This paper comparatively evaluates and analyzes those three ML algorithms under controllable environment, which is built on a marketable sensor arrays E-nose platform. Variable temperature (T), relative humidity (RH) and pollutant concentrations (C) conditions were measured during experiments to support the investigation.

Findings

Regression models have been built using the above-mentioned three typical algorithms, and in-depth analysis demonstrates that the model of the BP neural network results in a better prediction performance than others.

Originality/value

Finally, the empirical results prove that ML algorithms, combined with low-cost sensors, can make high-precision contaminant concentration detection indoor.

Keywords

Acknowledgements

This work is supported by National Natural Science Foundation of China (NSFC) project No. 61302065 and No. 61304257, Beijing Natural Science Foundation project No. 4152036, Beijing Science Technology innovation Base Cultivation and Develop Engineering Projects Z141101004414094, the Fundamental Research Funds for the Central Universities No. FRF-TP-14-028A1 and the Foundation of Beijing Engineering and Technology Center for Convergence Networks and Ubiquitous Services.

Citation

Xu, L., He, J., Duan, S., Wu, X. and Wang, Q. (2016), "Comparison of machine learning algorithms for concentration detection and prediction of formaldehyde based on electronic nose", Sensor Review, Vol. 36 No. 2, pp. 207-216. https://doi.org/10.1108/SR-07-2015-0104

Publisher

:

Emerald Group Publishing Limited

Copyright © 2016, Emerald Group Publishing Limited

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