Improved detection of chemical substances from colorimetric sensor data using probabilistic machine learning

被引:3
|
作者
Molgaard, Lasse L. [1 ]
Buus, Ole T. [1 ]
Larsen, Jan [1 ]
Babamoradi, Hamid
Thygesen, Ida L. [2 ]
Laustsen, Milan [2 ]
Munk, Jens Kristian [2 ]
Dossi, Eleftheria [3 ]
O'Keeffe, Caroline [3 ]
Laessig, Lina [4 ]
Tatlow, Sol [3 ]
Sandstrom, Lars [5 ]
Jakobsen, Mogens H. [2 ]
机构
[1] Tech Univ Denmark, Dept Appl Math & Comp Sci, Lyngby, Denmark
[2] Tech Univ Denmark, Dept Micro & Nanotechnol, Lyngby, Denmark
[3] Cranfield Univ, Ctr Def Chem, Cranfield, Beds, England
[4] Securetec Detekt Syst AG, Neubiberg, Germany
[5] Gammadata Instrument AB, Uppsala, Sweden
关键词
artificial nose; colorimetric sensor; machine learning;
D O I
10.1117/12.2262468
中图分类号
TH7 [仪器、仪表];
学科分类号
0804 ; 080401 ; 081102 ;
摘要
We present a data-driven machine learning approach to detect drug- and explosives-precursors using colorimetric sensor technology for air-sampling. The sensing technology has been developed in the context of the CRIM-TRACK project. At present a fully integrated portable prototype for air sampling with disposable sensing chips and automated data acquisition has been developed. The prototype allows for fast, user-friendly sampling, which has made it possible to produce large datasets of colorimetric data for different target analytes in laboratory and simulated real-world application scenarios. To make use of the highly multi-variate data produced from the colorimetric chip a number of machine learning techniques are employed to provide reliable classification of target analytes from confounders found in the air streams. We demonstrate that a data-driven machine learning method using dimensionality reduction in combination with a probabilistic classifier makes it possible to produce informative features and a high detection rate of analytes. Furthermore, the probabilistic machine learning approach provides a means of automatically identifying unreliable measurements that could produce false predictions. The robustness of the colorimetric sensor has been evaluated in a series of experiments focusing on the amphetamine pre-cursor phenylacetone as well as the improvised explosives pre-cursor hydrogen peroxide. The analysis demonstrates that the system is able to detect analytes in clean air and mixed with substances that occur naturally in real-world sampling scenarios. The technology under development in CRIM-TRACK has the potential as an effective tool to control trafficking of illegal drugs, explosive detection, or in other law enforcement applications.
引用
收藏
页数:8
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