Cao Yanan, Li Yan, Fu Wenlei, Cheng Gang, Tian Xing, Wang Jingjing, Zha Shenlong, Wang Junru
The First Hospital of Anhui University of Science and Technology, Huainan 232001, China.
Anhui Zhongzhi Rail Transit Equipment Manufacturing Co., Ltd, Huainan 232001, China.
Photoacoustics. 2024 Sep 12;39:100647. doi: 10.1016/j.pacs.2024.100647. eCollection 2024 Oct.
A novel method is introduced to improve the detection performance of photoacoustic spectroscopy for trace gas detection. For effectively suppressing various types of noise, this method integrates photoacoustic spectroscopy with residual networks model which encompasses a total of 40 weighted layers. Firstly, this approach was employed to accurately retrieve methane concentrations at various levels. Secondly, the analysis of the signal-to-noise ratio (SNR) of multiple sets of photoacoustic spectroscopy signals revealed significant enhancement. The SNR was improved from 21 to 805, 52-962, 98-944, 188-933, 310-941, and 587-936 across the different concentrations, respectively, as a result of the application of the residual networks. Finally, further exploration for the measurement precision and stability of photoacoustic spectroscopy system utilizing residual networks was carried out. The measurement precision of 0.0626 ppm was obtained and the minimum detectable limit was found to be 1.47 ppb. Compared to traditional photoacoustic spectroscopy method, an approximately 46-fold improvement in detection limit and 69-fold enhancement in measurement precision were achieved, respectively. This method not only advances the measurement precision and stability of trace gas detection but also highlights the potential of deep learning algorithms in spectroscopy detection.
一种新的方法被引入以提高用于痕量气体检测的光声光谱法的检测性能。为了有效抑制各种类型的噪声,该方法将光声光谱法与包含总共40个加权层的残差网络模型相结合。首先,该方法被用于精确反演不同浓度水平下的甲烷浓度。其次,对多组光声光谱信号的信噪比(SNR)分析显示出显著提高。由于应用了残差网络,不同浓度下的信噪比分别从21提高到805、52 - 962、98 - 944、188 - 933、310 - 941和587 - 936。最后,利用残差网络对光声光谱系统的测量精度和稳定性进行了进一步探索。获得了0.0626 ppm的测量精度,发现最低检测限为1.47 ppb。与传统光声光谱法相比,检测限提高了约46倍,测量精度提高了69倍。该方法不仅提高了痕量气体检测的测量精度和稳定性,还突出了深度学习算法在光谱检测中的潜力。