Carbon SH-SAW-Based Electronic Nose to Discriminate and Classify Sub-ppm NO2

Sensors (Basel). 2022 Feb 7;22(3):1261. doi: 10.3390/s22031261.

Abstract

In this research, a compact electronic nose (e-nose) based on a shear horizontal surface acoustic wave (SH-SAW) sensor array is proposed for the NO2 detection, classification and discrimination among some of the most relevant surrounding toxic chemicals, such as carbon monoxide (CO), ammonia (NH3), benzene (C6H6) and acetone (C3H6O). Carbon-based nanostructured materials (CBNm), such as mesoporous carbon (MC), reduced graphene oxide (rGO), graphene oxide (GO) and polydopamine/reduced graphene oxide (PDA/rGO) are deposited as a sensitive layer with controlled spray and Langmuir-Blodgett techniques. We show the potential of the mass loading and elastic effects of the CBNm to enhance the detection, the classification and the discrimination of NO2 among different gases by using Machine Learning (ML) techniques (e.g., PCA, LDA and KNN). The small dimensions and low cost make this analytical system a promising candidate for the on-site discrimination of sub-ppm NO2.

Keywords: Machine Learning (ML); NO2; carbon nanomaterials; classification; discrimination; electronic nose; graphene oxide; pollutants; surface acoustic wave (SAW).

MeSH terms

  • Ammonia
  • Electronic Nose*
  • Gases
  • Nanostructures*
  • Nitrogen Dioxide

Substances

  • Gases
  • Ammonia
  • Nitrogen Dioxide