» Articles » PMID: 36386294

Highly Sensitive HF Detection Based on Absorption Enhanced Light-induced Thermoelastic Spectroscopy with a Quartz Tuning Fork of Receive and Shallow Neural Network Fitting

Overview
Journal Photoacoustics
Date 2022 Nov 17
PMID 36386294
Authors
Affiliations
Soon will be listed here.
Abstract

Due to its advantages of non-contact measurement and high sensitivity, light-induced thermoelastic spectroscopy (LITES) is one of the most promising methods for corrosive gas detection. In this manuscript, a highly sensitive hydrogen fluoride (HF) sensor based on LITES technique is reported for the first time. With simple structure and strong robustness, a shallow neural network (SNN) fitting algorithm is introduced into the field of spectroscopy data processing to achieve denoising. This algorithm provides an end-to-end approach that takes in the raw input data without any pre-processing and extracts features automatically. A continuous wave (CW) distributed feedback diode (DFB) laser with an emission wavelength of 1.27 µm was used as the excitation source. A Herriott multi-pass cell (MPC) with an optical length of 10.1 m was selected to enhance the laser absorption. A quartz tuning fork (QTF) with resonance frequency of 32,767.52 Hz was adopted as the thermoelastic detector. An Allan variance analysis was performed to demonstrate the system stability. When the integration time was 110 s, the minimum detection limit (MDL) was found to be 71 ppb. After the SNN fitting algorithm was used, the signal-to-noise ratio (SNR) of the HF-LITES sensor was improved by a factor of 2.0, which verified the effectiveness of this fitting algorithm for spectroscopy data processing.

Citing Articles

Robust and compact light-induced thermoelastic sensor for atmospheric methane detection based on a vacuum-sealed subminiature tuning fork.

Shang Z, Wu H, Wang G, Cui R, Li B, Gong T Photoacoustics. 2025; 42:100691.

PMID: 39944351 PMC: 11815697. DOI: 10.1016/j.pacs.2025.100691.


High-sensitivity methane detection based on QEPAS and H-QEPAS technologies combined with a self-designed 8.7 kHz quartz tuning fork.

Liang T, Qiao S, Chen Y, He Y, Ma Y Photoacoustics. 2024; 36:100592.

PMID: 38322619 PMC: 10844118. DOI: 10.1016/j.pacs.2024.100592.


Temperature Compensation of Laser Methane Sensor Based on a Large-Scale Dataset and the ISSA-BP Neural Network.

Yin S, Zou X, Cheng Y, Liu Y Sensors (Basel). 2024; 24(2).

PMID: 38257586 PMC: 10819906. DOI: 10.3390/s24020493.


Gas spectroscopy - Editorial special issue photoacoustics.

Spagnolo V, Patimisco P, Ma Y, Dong L, Tittel F Photoacoustics. 2023; 32:100502.

PMID: 37692757 PMC: 10492008. DOI: 10.1016/j.pacs.2023.100502.


Quartz-enhanced photoacoustic spectroscopy (QEPAS) and Beat Frequency-QEPAS techniques for air pollutants detection: A comparison in terms of sensitivity and acquisition time.

Li B, Menduni G, Giglio M, Patimisco P, Sampaolo A, Zifarelli A Photoacoustics. 2023; 31:100479.

PMID: 37255964 PMC: 10225917. DOI: 10.1016/j.pacs.2023.100479.


References
1.
Ma Y, Feng W, Qiao S, Zhao Z, Gao S, Wang Y . Hollow-core anti-resonant fiber based light-induced thermoelastic spectroscopy for gas sensing. Opt Express. 2022; 30(11):18836-18844. DOI: 10.1364/OE.460134. View

2.
Wang Z, Wang Q, Zhang H, Borri S, Galli I, Sampaolo A . Doubly resonant sub-ppt photoacoustic gas detection with eight decades dynamic range. Photoacoustics. 2022; 27:100387. PMC: 9441262. DOI: 10.1016/j.pacs.2022.100387. View

3.
Bianchini M, Scarselli F . On the complexity of neural network classifiers: a comparison between shallow and deep architectures. IEEE Trans Neural Netw Learn Syst. 2014; 25(8):1553-65. DOI: 10.1109/TNNLS.2013.2293637. View

4.
Qiao S, He Y, Ma Y . Trace gas sensing based on single-quartz-enhanced photoacoustic-photothermal dual spectroscopy. Opt Lett. 2021; 46(10):2449-2452. DOI: 10.1364/OL.423801. View

5.
Hu L, Zheng C, Zhang M, Zheng K, Zheng J, Song Z . Long-distance in-situ methane detection using near-infrared light-induced thermo-elastic spectroscopy. Photoacoustics. 2021; 21:100230. PMC: 7786114. DOI: 10.1016/j.pacs.2020.100230. View