Fault Diagnosis of tin oxide gas sensor using energy barrier and ART-2 neural network

Authors

  • In-Soo Lee School of Electronics and Electrical Engineering, Sangju National University Author
  • Chang-Hyun Shim Purenanotech Co., Ltd. Daegu, Korea Author

DOI:

https://doi.org/10.24084/repqj06.236

Keywords:

Fault diagnosis, sensor fault, energy barrier, ART-2 neural network

Abstract

We propose a method of fault diagnosis for tin oxide gas sensors using energy barriers at the contacting surfaces of the particles of tin oxide film and ART-2 NN (adaptive resonance theory 2 neural network) with uneven vigilance parameters. We diagnosed tin oxide gas sensors upon exposure to oil vapor, silicon vapor, and high humidity. The sensor feature for diagnosis was an energy barrier between particles extracted by temperature-simulated conductance measurement. The feature was manipulated by an ART-2 neural network and the performance was finally evaluated with real n-C4H10 gas. This method proves to be helpful to diagnose a fault that was typically generated by oil vapor, silicon vapor, and high humidity.

Published

2024-01-15

Issue

Section

Articles