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Gas-Sensor Drift Counteraction with Adaptive Active Learning for an Electronic Nose

Gas sensors are the key components of an electronic nose (E-nose) in violated odour analysis. Gas-sensor drift is a kind of physical change on a sensor surface once an E-nose works. The perturbation of gas-sensor responses caused by drift would deteriorate the performance of the E-nose system over t...

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Autores principales: Liu, Tao, Li, Dongqi, Chen, Jianjun, Chen, Yanbing, Yang, Tao, Cao, Jianhua
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2018
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6263697/
https://www.ncbi.nlm.nih.gov/pubmed/30463202
http://dx.doi.org/10.3390/s18114028
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author Liu, Tao
Li, Dongqi
Chen, Jianjun
Chen, Yanbing
Yang, Tao
Cao, Jianhua
author_facet Liu, Tao
Li, Dongqi
Chen, Jianjun
Chen, Yanbing
Yang, Tao
Cao, Jianhua
author_sort Liu, Tao
collection PubMed
description Gas sensors are the key components of an electronic nose (E-nose) in violated odour analysis. Gas-sensor drift is a kind of physical change on a sensor surface once an E-nose works. The perturbation of gas-sensor responses caused by drift would deteriorate the performance of the E-nose system over time. In this study, we intend to explore a suitable approach to deal with the drift effect in an online situation. Considering that the conventional drift calibration is difficult to implement online, we use active learning (AL) to provide reliable labels for online instances. Common AL learning methods tend to select and label instances with low confidence or massive information. Although this action clarifies the ambiguity near the classification boundary, it is inadequate under the influence of gas-sensor drift. We still need the samples away from the classification plane to represent drift variations comprehensively in the entire data space. Thus, a novel drift counteraction method named AL on adaptive confidence rule (AL-ACR) is proposed to deal with online drift data dynamically. By contrast with conventional AL methods selecting instances near the classification boundary of a certain category, AL-ACR collects instances distributed evenly in different categories. This action implements on an adjustable rule according to the outputs of classifiers. Compared with other reference methods, we adopt two drift databases of E-noses to evaluate the performance of the proposed method. The experimental results indicate that the AL-ACR reaches higher accuracy than references on two E-nose databases, respectively. Furthermore, the impact of the labelling number is discussed to show the trend of performance for the AL-type methods. Additionally, we define the labelling efficiency index (LEI) to assess the contribution of certain labelling numerically. According to the results of LEI, we believe AL-ACR can achieve the best effect with the lowest cost among the AL-type methods in this work.
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spelling pubmed-62636972018-12-12 Gas-Sensor Drift Counteraction with Adaptive Active Learning for an Electronic Nose Liu, Tao Li, Dongqi Chen, Jianjun Chen, Yanbing Yang, Tao Cao, Jianhua Sensors (Basel) Article Gas sensors are the key components of an electronic nose (E-nose) in violated odour analysis. Gas-sensor drift is a kind of physical change on a sensor surface once an E-nose works. The perturbation of gas-sensor responses caused by drift would deteriorate the performance of the E-nose system over time. In this study, we intend to explore a suitable approach to deal with the drift effect in an online situation. Considering that the conventional drift calibration is difficult to implement online, we use active learning (AL) to provide reliable labels for online instances. Common AL learning methods tend to select and label instances with low confidence or massive information. Although this action clarifies the ambiguity near the classification boundary, it is inadequate under the influence of gas-sensor drift. We still need the samples away from the classification plane to represent drift variations comprehensively in the entire data space. Thus, a novel drift counteraction method named AL on adaptive confidence rule (AL-ACR) is proposed to deal with online drift data dynamically. By contrast with conventional AL methods selecting instances near the classification boundary of a certain category, AL-ACR collects instances distributed evenly in different categories. This action implements on an adjustable rule according to the outputs of classifiers. Compared with other reference methods, we adopt two drift databases of E-noses to evaluate the performance of the proposed method. The experimental results indicate that the AL-ACR reaches higher accuracy than references on two E-nose databases, respectively. Furthermore, the impact of the labelling number is discussed to show the trend of performance for the AL-type methods. Additionally, we define the labelling efficiency index (LEI) to assess the contribution of certain labelling numerically. According to the results of LEI, we believe AL-ACR can achieve the best effect with the lowest cost among the AL-type methods in this work. MDPI 2018-11-19 /pmc/articles/PMC6263697/ /pubmed/30463202 http://dx.doi.org/10.3390/s18114028 Text en © 2018 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Liu, Tao
Li, Dongqi
Chen, Jianjun
Chen, Yanbing
Yang, Tao
Cao, Jianhua
Gas-Sensor Drift Counteraction with Adaptive Active Learning for an Electronic Nose
title Gas-Sensor Drift Counteraction with Adaptive Active Learning for an Electronic Nose
title_full Gas-Sensor Drift Counteraction with Adaptive Active Learning for an Electronic Nose
title_fullStr Gas-Sensor Drift Counteraction with Adaptive Active Learning for an Electronic Nose
title_full_unstemmed Gas-Sensor Drift Counteraction with Adaptive Active Learning for an Electronic Nose
title_short Gas-Sensor Drift Counteraction with Adaptive Active Learning for an Electronic Nose
title_sort gas-sensor drift counteraction with adaptive active learning for an electronic nose
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6263697/
https://www.ncbi.nlm.nih.gov/pubmed/30463202
http://dx.doi.org/10.3390/s18114028
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