4.7 Article

Near-infrared methane sensor with neural network filtering

期刊

SENSORS AND ACTUATORS B-CHEMICAL
卷 354, 期 -, 页码 -

出版社

ELSEVIER SCIENCE SA
DOI: 10.1016/j.snb.2021.131207

关键词

Near-infrared methane sensor; Neural network filter; Direct absorption spectroscopy; High sensitivity and stability

资金

  1. National Natural Science Foundation of China [61475085]
  2. Key Research and Development Program of Shandong Province [2020CXGC010104]
  3. Qingdao science and technology demonstration and guidance project [21-1-4-sf-1-nsh]
  4. Open Fund of State Key Laboratory of Applied Optics [SKLA02020001A12]
  5. Robert A. Welch Foundation [A1546]
  6. Key Technology Research and Development Program of Shandong [2020CXGC010204]
  7. Natural Science Foundation of China [62075116]

向作者/读者索取更多资源

A novel methane sensor based on neural network filter (NNF) assisted direct absorption spectroscopy (DAS) technique is proposed and experimentally demonstrated. The NNF shows the best performance compared to other filtering algorithms, improving the accuracy and stability of methane detection. The use of simulated absorption spectra overcomes the scarce data problem. The sensor achieves better performance in real-time measurements with a significantly improved minimum detection limit.
A novel methane sensor based on neural network filter (NNF) assisted direct absorption spectroscopy (DAS) technique was proposed and experimentally demonstrated. The developed detection device adds the benefits of a digital filter based on the neural network, thereby compensating the shortcomings of traditional DAS. We overcame the scarce data problem by using the simulated absorption spectra that are highly consistent with practical experimental conditions to construct and train the NNF. The proposed NNF showed the best performance compared with several widely used filtering algorithms. We performed a detailed assessment of the NNFimproved detection system. The proposed sensor shows more accurate concentration retrieval and better stability in a real-time measurement. The minimum detection limit of 2.93 ppm.m (1s) was obtained, which is a significant improvement compared to previous reports of near-infrared methane detection with the DAS technique. Finally, we systematically discuss the frequency principle underlying the NNF to explicitly interpret the mechanism of the generalized filtering. The improved methane sensor proves the feasibility of enhancing the performance of DAS technique with the neural network algorithm and broad applicability of this approach to the high-sensitivity measurements of methane and other trace gases.

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