Optics (Apr 2024)

Wavelet-Based Machine Learning Algorithms for Photoacoustic Gas Sensing

  • Artem Kozmin,
  • Evgenii Erushin,
  • Ilya Miroshnichenko,
  • Nadezhda Kostyukova,
  • Andrey Boyko,
  • Alexey Redyuk

DOI
https://doi.org/10.3390/opt5020015
Journal volume & issue
Vol. 5, no. 2
pp. 207 – 222

Abstract

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The significance of intelligent sensor systems has grown across diverse sectors, including healthcare, environmental surveillance, industrial automation, and security. Photoacoustic gas sensors are a promising type of optical gas sensor due to their high sensitivity, enhanced frequency selectivity, and fast response time. However, they have limitations such as dependence on a high-power light source, a requirement for a high-quality acoustic signal detector, and sensitivity to environmental factors, affecting their accuracy and reliability. Machine learning has great potential in the analysis and interpretation of sensor data as it can identify complex patterns and make accurate predictions based on the available data. We propose a novel approach that utilizes wavelet analysis and neural networks with enhanced architectures to improve the accuracy and sensitivity of photoacoustic gas sensors. Our proposed approach was experimentally tested for methane concentration measurements, showcasing its potential to significantly advance the field of gas detection and analysis, providing more accurate and reliable results.

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