Automatic detection and recognition of hazardous chemical agents

J. Ilonen1, J.-K. Kamarainen1, H. Kalviainen1, O. Anttalainen2
1Laboratory of Information Processing, Department of Information Technology, Lappeenranta University of Technology, Lappeeranta, Finland
2Envjronics, Limited, Mikkeli, Finland

Tóm tắt

The number and use of hazardous chemical compounds are increasing, providing an important and critical application area of detector devices. In addition to the devices, also extremely reliable detection algorithms must be implemented. The design of such algorithms has traditionally been an analytical process demanding a vast amount of work and expertise. Thus, there is a strong interest of automatic machine learning methods. In this study, several machine learning methods are applied to a detector device measuring the ion mobility distribution for detecting and recognizing chemical warfare agents. The experimental results indicate that one of the proposed methods, the Bayesian classifier based method, is applicable even for critical applications.

Từ khóa

#Chemical hazards #Learning systems #Detectors #Chemical sensors #Chemical compounds #Spectroscopy #Electrodes #Chemical technology #Algorithm design and analysis #Robust stability

Tài liệu tham khảo

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