4.7 Article

Dual domain acoustic olfactory discriminator

期刊

SENSORS AND ACTUATORS A-PHYSICAL
卷 350, 期 -, 页码 -

出版社

ELSEVIER SCIENCE SA
DOI: 10.1016/j.sna.2022.114102

关键词

Gas detection; Quarter wavelength resonator; Artificial olfaction; Sensor

资金

  1. JSPS Fellowship, MEXT, Japan
  2. MEXT, Japan [22K05324, 20K20554, 20K05345]
  3. Public/Private R&D Investment Strategic Expansion Program (PRISM) , Cabinet Office, Japan
  4. Center for Functional Sensor Actuator
  5. NIMS

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This study utilizes acoustic transduction with a quarter wavelength resonator, a speaker, and a microphone to detect and identify gas properties. Experimental data reveals resonance frequency curves and speed of sound for each gas, while time domain data allows for multi-dimensional data analysis. The device is capable of adequately identifying gases at concentrations of at least several thousand ppm.
Acoustic transduction combining a quarter wavelength resonator, a speaker and a microphone is used for the detection and identification of gas properties such as n-hexane, acetone and ethanol. As a target gas flows into the resonator, the density and the speed of sound of the gas in the resonator change, causing a shift in the acoustic pressure waves manifesting from the speaker. Resonance frequency curves of each gas were experimentally obtained using a standard 1/f equal octave pink noise test over the audible frequency range. The speed of sound of each gas was analytically determined from the obtained resonance frequency. As the flow concentration of a target gas increases, the speed of sound decreases as the gas density increases. Time series signals at a fixed frequency exhibit unique profiles for each gas and concentration. The theoretical limit of detection for n-hexane in the time domain was calculated to be in the order of several tens of ppm. Whilst the frequency domain data obtains a direct physical parameter, time domain data enables multi-dimensional data analysis, relaying decisive data for artificial olfaction. Principal component analysis (PCA) reveals unique attributes and discrimination per gas species and concentration based on multi-dimensional data obtained through the dual domain measurements. This study demonstrates that the device can adequately identify gases at concentrations of at least several thousand ppm. This approach may provide a new platform as a mobile gas discriminator coupled to artificial olfaction with the added benefit of audio capabilities and signal processing techniques.

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