Augmented Switching Linear Dynamical System Model for Gas Concentration Estimation with MOX Sensors in an Open Sampling System

In this paper, we introduce a Bayesian time series model approach for gas concentration estimation using Metal Oxide (MOX) sensors in Open Sampling System (OSS). Our approach focuses on the compensation of the slow response of MOX sensors, while concurrently solving the problem of estimating the gas...

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Main Authors: Enrico Di Lello, Marco Trincavelli, Herman Bruyninckx, Tinne De Laet
Format: Article
Language:English
Published: MDPI AG 2014-07-01
Series:Sensors
Subjects:
Online Access:http://www.mdpi.com/1424-8220/14/7/12533
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spelling doaj-dbcf33d0c4de42b4ac1bbeaf1da3291b2020-11-25T01:37:48ZengMDPI AGSensors1424-82202014-07-01147125331255910.3390/s140712533s140712533Augmented Switching Linear Dynamical System Model for Gas Concentration Estimation with MOX Sensors in an Open Sampling SystemEnrico Di Lello0Marco Trincavelli1Herman Bruyninckx2Tinne De Laet3Department of Mechanical Engineering, Division PMA, KU Leuven, BE-3001 Heverlee, BelgiumCentre for Applied Autonomous Sensor Systems, Örebro University, Örebro SE-70182, SwedenDepartment of Mechanical Engineering, Division PMA, KU Leuven, BE-3001 Heverlee, BelgiumFaculty of Engineering Sciences, KU Leuven, BE-3001 Heverlee, BelgiumIn this paper, we introduce a Bayesian time series model approach for gas concentration estimation using Metal Oxide (MOX) sensors in Open Sampling System (OSS). Our approach focuses on the compensation of the slow response of MOX sensors, while concurrently solving the problem of estimating the gas concentration in OSS. The proposed Augmented Switching Linear System model allows to include all the sources of uncertainty arising at each step of the problem in a single coherent probabilistic formulation. In particular, the problem of detecting on-line the current sensor dynamical regime and estimating the underlying gas concentration under environmental disturbances and noisy measurements is formulated and solved as a statistical inference problem. Our model improves, with respect to the state of the art, where system modeling approaches have been already introduced, but only provided an indirect relative measures proportional to the gas concentration and the problem of modeling uncertainty was ignored. Our approach is validated experimentally and the performances in terms of speed of and quality of the gas concentration estimation are compared with the ones obtained using a photo-ionization detector.http://www.mdpi.com/1424-8220/14/7/12533metal oxide semiconductor sensorgas sensingBayesian inference
collection DOAJ
language English
format Article
sources DOAJ
author Enrico Di Lello
Marco Trincavelli
Herman Bruyninckx
Tinne De Laet
spellingShingle Enrico Di Lello
Marco Trincavelli
Herman Bruyninckx
Tinne De Laet
Augmented Switching Linear Dynamical System Model for Gas Concentration Estimation with MOX Sensors in an Open Sampling System
Sensors
metal oxide semiconductor sensor
gas sensing
Bayesian inference
author_facet Enrico Di Lello
Marco Trincavelli
Herman Bruyninckx
Tinne De Laet
author_sort Enrico Di Lello
title Augmented Switching Linear Dynamical System Model for Gas Concentration Estimation with MOX Sensors in an Open Sampling System
title_short Augmented Switching Linear Dynamical System Model for Gas Concentration Estimation with MOX Sensors in an Open Sampling System
title_full Augmented Switching Linear Dynamical System Model for Gas Concentration Estimation with MOX Sensors in an Open Sampling System
title_fullStr Augmented Switching Linear Dynamical System Model for Gas Concentration Estimation with MOX Sensors in an Open Sampling System
title_full_unstemmed Augmented Switching Linear Dynamical System Model for Gas Concentration Estimation with MOX Sensors in an Open Sampling System
title_sort augmented switching linear dynamical system model for gas concentration estimation with mox sensors in an open sampling system
publisher MDPI AG
series Sensors
issn 1424-8220
publishDate 2014-07-01
description In this paper, we introduce a Bayesian time series model approach for gas concentration estimation using Metal Oxide (MOX) sensors in Open Sampling System (OSS). Our approach focuses on the compensation of the slow response of MOX sensors, while concurrently solving the problem of estimating the gas concentration in OSS. The proposed Augmented Switching Linear System model allows to include all the sources of uncertainty arising at each step of the problem in a single coherent probabilistic formulation. In particular, the problem of detecting on-line the current sensor dynamical regime and estimating the underlying gas concentration under environmental disturbances and noisy measurements is formulated and solved as a statistical inference problem. Our model improves, with respect to the state of the art, where system modeling approaches have been already introduced, but only provided an indirect relative measures proportional to the gas concentration and the problem of modeling uncertainty was ignored. Our approach is validated experimentally and the performances in terms of speed of and quality of the gas concentration estimation are compared with the ones obtained using a photo-ionization detector.
topic metal oxide semiconductor sensor
gas sensing
Bayesian inference
url http://www.mdpi.com/1424-8220/14/7/12533
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