• 文献标题:   Semiquantitative Classification of Two Oxidizing Gases with Graphene-Based Gas Sensors
  • 文献类型:   Article
  • 作  者:   LIND M, KIISK V, KODU M, KAHRO T, RENGE I, AVARMAA T, MAKARAM P, ZURUTUZA A, JAANISO R
  • 作者关键词:   gas sensor, graphene, machine learning, no2, o3
  • 出版物名称:   CHEMOSENSORS
  • ISSN:  
  • 通讯作者地址:  
  • 被引频次:   2
  • DOI:   10.3390/chemosensors10020068
  • 出版年:   2022

▎ 摘  要

Miniature and low-power gas sensing elements are urgently needed for a portable electronic nose, especially for outdoor pollution monitoring. Hereby we prepared chemiresistive sensors based on wide-area graphene (grown by chemical vapor deposition) placed on Si/Si3N4 substrates with interdigitated electrodes and built-in microheaters. Graphene of each sensor was individually functionalized with ultrathin oxide coating (CuO-MnO2, In2O3 or Sc2O3) by pulsed laser deposition. Over the course of 72 h, the heated sensors were exposed to randomly generated concentration cycles of 30 ppb NO2, 30 ppb O-3, 60 ppb NO2, 60 ppb O-3 and 30 ppb NO2 + 30 ppb O-3 in synthetic air (21% O-2, 50% relative humidity). While O-3 completely dominated the response of sensors with CuO-MnO2 coating, the other sensors had comparable sensitivity to NO2 as well. Various response features (amplitude, response rate, and recovery rate) were considered as machine learning inputs. Using just the response amplitudes of two complementary sensors allowed us to distinguish these five gas environments with an accuracy of ~ 85%. Misclassification was mostly due to an overlap in the case of the 30 ppb O-3,O- and 30 ppb O-3 + 30 ppb NO2 responses, and was largely caused by the temporal drift of these responses. The addition of recovery rates to machine learning input variables enabled us to very clearly distinguish different gases and increase the overall accuracy to ~94%.