State Key Laboratory of Integrated Optoelectronics, College of Electronic Science and Engineering, Jilin University, 2699 Qianjin Street, Changchun 130012, P.R. China.
Research Center for Optical Fiber Sensing, Zhejiang Laboratory, Hangzhou 311100, P.R. China.
ACS Sens. 2024 Feb 23;9(2):820-829. doi: 10.1021/acssensors.3c02146. Epub 2024 Jan 30.
Cavity-enhanced direct frequency comb spectroscopy (CE-DFCS) is widely used as a highly sensitive gas sensing technology in various gas detection fields. For the on-axis coupling incidence scheme, the detection accuracy and stability are seriously affected by the cavity-mode noise, and therefore, stable operation inevitably requires external electronic mode-locking and sweeping devices, substantially increasing system complexity. To address this issue, we propose off-axis cavity-enhanced optical frequency comb spectroscopy from both theoretical and experimental aspects, which is applied to the detection of single- and dual-gas of carbon monoxide (CO) and carbon dioxide (CO) in the near-infrared. An erbium-doped fiber frequency comb with a repetition frequency of ∼41.709 MHz is coupled into a resonant cavity with a length of ∼360 mm in an off-axis manner, exciting numerous high-order modes to effectively suppress cavity-mode noise. The performance of multiple machine learning models is compared for the inversion of a single/dual gas concentration. A few absorbance spectra are collected to build a sample data set, which is then utilized for model training and learning. The results demonstrate that the Particle Swarm Optimization Support Vector Machine (PSO-SVM) model achieves the highest predictive accuracy for gas concentration and is ultimately applied to the detection system. Based on Allan deviation, the detection limit for CO in single-gas detection can reach 8.247 parts per million by volume (ppmv) by averaging 87 spectra. Meanwhile, for simultaneous CO/CO measurement with highly overlapping absorbance spectra, the LoD can be reduced to 13.196 and 4.658 ppmv, respectively. The proposed optical gas sensing technique indicates the potential for the development of a field-deployable and intelligent sensor system capable of simultaneous detection of multiple gases.
腔增强直接频率梳光谱学(CE-DFCS)被广泛用作各种气体检测领域中的高灵敏度气体传感技术。对于轴上耦合入射方案,腔模式噪声严重影响检测精度和稳定性,因此,稳定的操作不可避免地需要外部电子锁模和扫描设备,从而大大增加了系统的复杂性。为了解决这个问题,我们从理论和实验两个方面提出了离轴腔增强光频梳光谱学,将其应用于近红外单双组分一氧化碳(CO)和二氧化碳(CO)气体的检测。将重复频率约为 41.709 MHz 的掺铒光纤频率梳以离轴方式耦合到长度约为 360mm 的谐振腔内,激发了大量的高次模式,有效地抑制了腔模式噪声。比较了多种机器学习模型在单/双气体浓度反演中的性能。采集了几个吸收光谱来构建样本数据集,然后用于模型训练和学习。结果表明,粒子群优化支持向量机(PSO-SVM)模型在气体浓度预测方面具有最高的预测精度,并最终应用于检测系统。基于 Allan 偏差,在单气体检测中,通过平均 87 个光谱,CO 的检测限可以达到 8.247 体积ppm(ppmv)。同时,对于具有高度重叠吸收光谱的 CO/CO 同时测量,LoD 可以分别降低到 13.196 和 4.658 ppmv。所提出的光学气体传感技术表明,有望开发出一种可现场部署和智能的多气体同时检测传感器系统。