Selective Microwave Zeroth-Order Resonator Sensor Aided by Machine Learning

Sensors (Basel). 2022 Jul 18;22(14):5362. doi: 10.3390/s22145362.

Abstract

Microwave sensors are principally sensitive to effective permittivity, and hence not selective to a specific material under test (MUT). In this work, a highly compact microwave planar sensor based on zeroth-order resonance is designed to operate at three distant frequencies of 3.5, 4.3, and 5 GHz, with the size of only λg-min/8 per resonator. This resonator is deployed to characterize liquid mixtures with one desired MUT (here water) combined with an interfering material (e.g., methanol, ethanol, or acetone) with various concentrations (0%:10%:100%). To achieve a sensor with selectivity to water, a convolutional neural network (CNN) is used to recognize different concentrations of water regardless of the host medium. To obtain a high accuracy of this classification, Style-GAN is utilized to generate a reliable sensor response for concentrations between water and the host medium (methanol, ethanol, and acetone). A high accuracy of 90.7% is achieved using CNN for selectively discriminating water concentrations.

Keywords: generative adversarial network; machine learning; microwave sensor; resonators; selectivity.

MeSH terms

  • Acetone
  • Ethanol
  • Machine Learning
  • Methanol*
  • Microwaves*
  • Water

Substances

  • Water
  • Acetone
  • Ethanol
  • Methanol

Grants and funding

This work was supported in part by the Natural Science and Engineering Research Council (NSERC) of Canada, the Future Energy System (FES), and by CMC Microsystems.