A miniaturized electronic nose with artificial neural network for anti-interference detection of mixed indoor hazardous gases

SENSORS AND ACTUATORS B-CHEMICAL(2021)

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摘要
Indoor air quality attracted great attention for its significant threats to human health and safety, especially the potential hazardous gases in kitchens. To meet the requirements of the anti-interference detection of multiple combustible gases, in this paper, a miniaturized electronic nose was developed using MOS sensor array for semi-quantitative and anti-interference detection of carbon monoxide and methane with the interference of hydrogen and formaldehyde. The sensor array was constructed using 6 MOS sensors and cross-reaction to target and interference gases. To implement the anti-interference capability, different models were utilized and evaluated including PCA, LDA and BP-ANN. The 10-fold cross validation results indicate that BP-ANN models have the best performance than other models with the accuracy of 93.35 % for CO and 93.22 % for CH4 without interference. With the interference of H2 and CH2O, the BP-ANN model shows the accuracies of 78.92 % for CO and 89.75 % for CH4. Adding interfering samples of H-2 has a more significant impact on BP-ANN models than adding that of CH2O. The results demonstrate that the proposed e-nose with the BP-ANN model can realize semi-quantitative, simultaneous and anti-interference detection of CO and CH4 in the interference environment, which provides a promising platform for gas sensing with multiple interference.
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关键词
Electronic nose (e-nose),Combustible gases,Interference environment,Back-propagation artificial neural network (BP-ANN),Concentration recognition
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