Least Squares Neural Network-Based Wireless E-Nose System Using an SnO₂ Sensor Array

Sensors (Basel). 2018 May 6;18(5):1446. doi: 10.3390/s18051446.

Abstract

Over the last few decades, the development of the electronic nose (E-nose) for detection and quantification of dangerous and odorless gases, such as methane (CH₄) and carbon monoxide (CO), using an array of SnO₂ gas sensors has attracted considerable attention. This paper addresses sensor cross sensitivity by developing a classifier and estimator using an artificial neural network (ANN) and least squares regression (LSR), respectively. Initially, the ANN was implemented using a feedforward pattern recognition algorithm to learn the collective behavior of an array as the signature of a particular gas. In the second phase, the classified gas was quantified by minimizing the mean square error using LSR. The combined approach produced 98.7% recognition probability, with 95.5 and 94.4% estimated gas concentration accuracies for CH₄ and CO, respectively. The classifier and estimator parameters were deployed in a remote microcontroller for the actualization of a wireless E-nose system.

Keywords: artificial neural network; concentration estimation; gas sensor array; least squares; pattern recognition.

MeSH terms

  • Electronic Nose
  • Gases
  • Least-Squares Analysis*
  • Neural Networks, Computer
  • Tin Compounds

Substances

  • Gases
  • Tin Compounds
  • stannic oxide