Relevance of Drift Components and Unit-to-Unit Variability in the Predictive Maintenance of Low-Cost Electrochemical Sensor Systems in Air Quality Monitoring

被引:18
作者
Tancev, Georgi [1 ]
机构
[1] Swiss Fed Inst Metrol, CH-3084 Bern, Switzerland
关键词
air quality monitoring; anomaly detection; gas sensor; low-cost sensors; machine learning; predictive maintenance; CALIBRATION MODEL; FIELD CALIBRATION; PERFORMANCE; TECHNOLOGY; NO;
D O I
10.3390/s21093298
中图分类号
O65 [分析化学];
学科分类号
070302 ; 081704 ;
摘要
As key components of low-cost sensor systems in air quality monitoring, electrochemical gas sensors have recently received a lot of interest but suffer from unit-to-unit variability and different drift components such as aging and concept drift, depending on the calibration approach. Magnitudes of drift can vary across sensors of the same type, and uniform recalibration intervals might lead to insufficient performance for some sensors. This publication evaluates the opportunity to perform predictive maintenance solely by the use of calibration data, thereby detecting the optimal moment for recalibration and improving recalibration intervals and measurement results. Specifically, the idea is to define confidence regions around the calibration data and to monitor the relative position of incoming sensor signals during operation. The emphasis lies on four algorithms from unsupervised anomaly detection-namely, robust covariance, local outlier factor, one-class support vector machine, and isolation forest. Moreover, the behavior of unit-to-unit variability and various drift components on the performance of the algorithms is discussed by analyzing published field experiments and by performing Monte Carlo simulations based on sensing and aging models. Although unsupervised anomaly detection on calibration data can disclose the reliability of measurement results, simulation results suggest that this does not translate to every sensor system due to unfavorable arrangements of baseline drifts paired with sensitivity drift.
引用
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页数:18
相关论文
共 46 条
[1]  
Alberg A J., 2016, Murray and Nadel's Textbook of Respiratory Medicine, VSixth, P927
[2]  
[Anonymous], COB4 ALPH
[3]  
[Anonymous], 2006, Springer google schola, DOI [10.1117/1.2819119, DOI 10.18637/JSS.V017.B05]
[4]   High-Resolution Air Pollution Mapping with Google Street View Cars: Exploiting Big Data [J].
Apte, Joshua S. ;
Messier, Kyle P. ;
Gani, Shahzad ;
Brauer, Michael ;
Kirchstetter, Thomas W. ;
Lunden, Melissa M. ;
Marshall, Julian D. ;
Portier, Christopher J. ;
Vermeulen, Roel C. H. ;
Hamburg, Steven P. .
ENVIRONMENTAL SCIENCE & TECHNOLOGY, 2017, 51 (12) :6999-7008
[5]  
Balmes J R., 2016, Murray and Nadels Textbook of Respiratory Medicine, V6th, P1331, DOI DOI 10.1016/B978-1-4557-3383-5.00074-9
[6]   Amperometric Gas Sensors as a Low Cost Emerging Technology Platform for Air Quality Monitoring Applications: A Review [J].
Baron, Ronan ;
Saffell, John .
ACS SENSORS, 2017, 2 (11) :1553-1566
[7]   A Recursive Approach to Partially Blind Calibration of a Pollution Sensor Network [J].
Becnel, Thomas ;
Sayahi, Tofigh ;
Kelly, Kerry ;
Gaillardon, Pierre-Emmanuel .
2019 IEEE INTERNATIONAL CONFERENCE ON EMBEDDED SOFTWARE AND SYSTEMS (ICESS), 2019,
[8]   Performance of NO, NO2 low cost sensors and three calibration approaches within a real world application [J].
Bigi, Alessandro ;
Mueller, Michael ;
Grange, Stuart K. ;
Ghermandi, Grazia ;
Hueglin, Christoph .
ATMOSPHERIC MEASUREMENT TECHNIQUES, 2018, 11 (06) :3717-3735
[9]   LOF: Identifying density-based local outliers [J].
Breunig, MM ;
Kriegel, HP ;
Ng, RT ;
Sander, J .
SIGMOD RECORD, 2000, 29 (02) :93-104
[10]   A systematic literature review of machine learning methods applied to predictive maintenance [J].
Carvalho, Thyago P. ;
Soares, Fabrizzio A. A. M. N. ;
Vita, Roberto ;
Francisco, Robert da P. ;
Basto, Joao P. ;
Alcala, Symone G. S. .
COMPUTERS & INDUSTRIAL ENGINEERING, 2019, 137