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Identification of Chemical Vapor Mixture Assisted by Artificially Extended Database for Environmental Monitoring.

Hi Gyu MoonYoungmo JungBeomju ShinDonggeun LeeKayoung KimDeok Ha WooSeok LeeSooyeon KimChong-Yun KangTaikjin LeeChulki Kim
Published in: Sensors (Basel, Switzerland) (2022)
A fully integrated sensor array assisted by pattern recognition algorithm has been a primary candidate for the assessment of complex vapor mixtures based on their chemical fingerprints. Diverse prototypes of electronic nose systems consisting of a multisensory device and a post processing engine have been developed. However, their precision and validity in recognizing chemical vapors are often limited by the collected database and applied classifiers. Here, we present a novel way of preparing the database and distinguishing chemical vapor mixtures with small data acquisition for chemical vapors and their mixtures of interest. The database for individual vapor analytes is expanded and the one for their mixtures is prepared in the first-order approximation. Recognition of individual target vapors of NO 2 , HCHO, and NH 3 and their mixtures was evaluated by applying the support vector machine (SVM) classifier in different conditions of temperature and humidity. The suggested method demonstrated the recognition accuracy of 95.24%. The suggested method can pave a way to analyze gas mixtures in a variety of industrial and safety applications.
Keyphrases
  • ionic liquid
  • room temperature
  • adverse drug
  • deep learning
  • emergency department
  • high resolution
  • electronic health record
  • mass spectrometry
  • risk assessment
  • drug induced
  • bioinformatics analysis
  • carbon dioxide