Machine learning in legal metrology-detecting breathalyzers' failures

被引:0
作者
da Silva Santos, Ana Gleice [1 ]
Carmo, Luiz Fernando Rust [1 ]
do Prado, Charles Bezerra [1 ]
机构
[1] INMETRO Natl Inst Metrol Qual & Technol, Av Nossa Senhora Gracas 50,Predio 11,Bloco A Sala, BR-25250020 Duque De Caxias, RJ, Brazil
关键词
breathalyzer; legal metrology; classification; clustering;
D O I
10.1088/1361-6501/ad1d2c
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
Breathalyzers used at sobriety checkpoints undergo strict quality control by metrological institutes or police departments to ensure the accuracy of the results, thus avoiding measurement inaccuracies. This paper presents a new approach to instrument evaluation using machine learning algorithms that are capable of preemptively detecting failures. Our objective was to predict instrument failures before they occur. These faults may be errors or standard deviations that exceed the allowable limits defined by technical regulations. To predict these failures, we employed historical instrument measurement data and applied classification techniques to later label instruments as suitable or unsuitable. This was based on the instrument's potential not to fail or fail during its operation or before subsequent checks. To increase the reliability of failure prediction, we conducted fuel cell experiments to identify which instruments have cells that could compromise measurement results. To this end, we used the K-means clustering model, which identified two clusters based on the response signals during the ethanol redox reaction. The study concluded with a wear simulation on low-performance electrochemical cells to understand whether an adjustment to the calibration curve on instruments with these cells would not compromise the instrument's accuracy until the next check.
引用
收藏
页数:7
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