Deep Learning for Gas Sensing via Infrared Spectroscopy

被引:7
作者
Chowdhury, M. Arshad Zahangir [1 ]
Oehlschlaeger, Matthew A. [1 ]
机构
[1] Rensselaer Polytech Inst, Dept Mech Aerosp & Nucl Engn, 110 Eighth St, Troy, NY 12180 USA
关键词
infrared absorption spectroscopy; deep learning; classification; speciation; gas sensing; trace gas detection; atmospheric detection; SENSOR DETECTION; SPECTROMETER;
D O I
10.3390/s24061873
中图分类号
O65 [分析化学];
学科分类号
070302 ; 081704 ;
摘要
Deep learning methods, a powerful form of artificial intelligence, have been applied in a number of spectroscopy and gas sensing applications. However, the speciation of multi-component gas mixtures from infrared (IR) absorption spectra using deep learning remains to be explored. Here, we propose a one-dimensional deep convolutional neural network gas classification model for the identification of small molecules of interest based on IR absorption spectra in flexible user-defined frequency ranges. The molecules considered include ten that are of interest in the atmosphere or in industrial and environmental processes: water vapor, carbon dioxide, ozone, nitrous oxide, carbon monoxide, methane, nitric oxide, sulfur dioxide, nitrogen dioxide, and ammonia. A simulated dataset of IR absorption spectra for mixtures of these molecules diluted in air was generated and used to train a deep learning model. The model was tested against simulated spectra containing noise and was found to provide speciation predictions with accuracy from 82 to 97%. The internal operation of the model was investigated using class activation maps that illustrate how the model prioritizes spectral information for classification. Finally, the model was demonstrated for the prediction of speciation for two synthetic experimental mixture spectra. The proposed model and the dataset generation strategies are generalized and can be implemented for other gases, different frequency ranges, and spectroscopy types. The multi-component speciation method developed herein is the first application of a convolutional neural network model, trained on HITRAN-based simulations, for spectral identification.
引用
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页数:15
相关论文
共 41 条
[1]   A grey-box machine learning based model of an electrochemical gas sensor [J].
Aliramezani, Masoud ;
Norouzi, Armin ;
Koch, Charles Robert .
SENSORS AND ACTUATORS B-CHEMICAL, 2020, 321 (321)
[2]   A novel breath molecule sensing system based on deep neural network employing multiple-line direct absorption spectroscopy [J].
Bayrakli, Ismail ;
Eken, Enes .
OPTICS AND LASER TECHNOLOGY, 2023, 158
[3]  
Bernath P., 1995, SPECTRA ATOMS MOL, V1st
[4]   Comprehensive comparative study of multi-label classification methods [J].
Bogatinovski, Jasmin ;
Todorovski, Ljupco ;
Dzeroski, Saso ;
Kocev, Dragi .
EXPERT SYSTEMS WITH APPLICATIONS, 2022, 203
[5]   TSMC-Net: Deep-Learning Multigas Classification Using THz Absorption Spectra [J].
Chowdhury, M. Arshad Zahangir ;
Rice, Timothy E. ;
Oehlschlaeger, Matthew A. .
ACS SENSORS, 2023, 8 (03) :1230-1240
[6]   VOC-Net: A Deep Learning Model for the Automated Classification of Rotational THz Spectra of Volatile Organic Compounds [J].
Chowdhury, M. Arshad Zahangir ;
Rice, Timothy E. ;
Oehlschlaeger, Matthew A. .
APPLIED SCIENCES-BASEL, 2022, 12 (17)
[7]   A support vector machines framework for identification of infrared spectra [J].
Chowdhury, M. Arshad Zahangir ;
Rice, Timothy E. ;
Oehlschlaeger, Matthew A. .
APPLIED PHYSICS B-LASERS AND OPTICS, 2022, 128 (09)
[8]   Evaluation of machine learning methods for classification of rotational absorption spectra for gases in the 220-330 GHz range [J].
Chowdhury, M. Arshad Zahangir ;
Rice, Timothy E. ;
Oehlschlaeger, Matthew A. .
APPLIED PHYSICS B-LASERS AND OPTICS, 2021, 127 (03)
[9]   The NIST quantitative infrared database [J].
Chu, PM ;
Guenther, FR ;
Rhoderick, GC ;
Lafferty, WJ .
JOURNAL OF RESEARCH OF THE NATIONAL INSTITUTE OF STANDARDS AND TECHNOLOGY, 1999, 104 (01) :59-81
[10]   Advances in 3-D infrared remote sensing gas monitoring. Application to an urban atmospheric environment [J].
de Donato, Ph. ;
Barres, O. ;
Sausse, J. ;
Taquet, N. .
REMOTE SENSING OF ENVIRONMENT, 2016, 175 :301-309