Single particle mass spectral signatures from on-road and non-road vehicle exhaust particles and their application in refined source apportionment using deep learning

被引:0
作者
Xu, Yongjiang [1 ,2 ]
Wang, Zaihua [3 ]
Pei, Chenglei [4 ]
Wu, Cheng [1 ,2 ]
Huang, Bo [5 ]
Cheng, Chunlei [1 ,2 ]
Zhou, Zhen [1 ,2 ]
Li, Mei [1 ,2 ]
机构
[1] Jinan Univ, Inst Mass Spectrometry & Atmospher Environm, Coll Environm & Climate, Guangdong Prov Engn Res Ctr Online source apportio, Guangzhou 510632, Peoples R China
[2] Guangdong Hongkong Macau Joint Lab Collaborat Inno, Guangzhou 510632, Peoples R China
[3] Guangdong Acad Sci, Inst Resources Utilizat & Rare Earth Dev, Guangzhou 510650, Guangdong, Peoples R China
[4] Guangzhou Ecol & Environm Monitoring Ctr Guangdong, Guangzhou 510030, Peoples R China
[5] Guangzhou Hexin Instrument Co Ltd, Guangzhou 510530, Guangdong, Peoples R China
关键词
Deep learning; Source apportionment; SPAMS; On-road and non-road emissions characteristics; POLYCYCLIC AROMATIC-HYDROCARBONS; POSITIVE MATRIX FACTORIZATION; FINE PARTICULATE MATTER; IN-USE DIESEL; CHEMICAL-COMPOSITION; INDIVIDUAL PARTICLES; ORGANIC-COMPOUNDS; ELEMENTAL CARBON; NEURAL-NETWORKS; SOURCE PROFILES;
D O I
10.1016/j.scitotenv.2024.172822
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
With advances in vehicle emission control technology, updating source profiles to meet the current requirements of source apportionment has become increasingly crucial. In this study, on -road and non -road vehicle particles were collected, and then the chemical compositions of individual particles were analyzed using single particle aerosol mass spectrometry. The data were grouped using an adaptive resonance theory neural network to identify signatures and establish a mass spectral database of mobile sources. In addition, a deep learning -based model ( DeepAerosolClassifier ) for classifying aerosol particles was established. The objective of this model was to accomplish source apportionment. During the training process, the model achieved an accuracy of 98.49 % for the validation set and an accuracy of 93.36 % for the testing set. Regarding the model interpretation, ideal spectra were generated using the model, verifying its accurate recognition of the characteristic patterns in the mass spectra. In a practical application, the model performed hourly source apportionment at three specific field monitoring sites. The effectiveness of the model in field measurement was validated by combining traffic flow and spatial information with the model results. Compared with other machine learning methods, our model achieved highly automated source apportionment while eliminating the need for feature selection, and it enables end -to -end operation. Thus, in the future, it can be applied in refined and online source apportionment of particulate matter.
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页数:14
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共 97 条
  • [1] Emission profiling of diesel and gasoline cars at a city traffic junction
    Agarwal, Avinash Kumar
    Gupta, Tarun
    Bothra, Prakhar
    Shukla, Pravesh Chandra
    [J]. PARTICUOLOGY, 2015, 18 : 186 - 193
  • [2] Elements and polycyclic aromatic hydrocarbons in exhaust particles emitted by light-duty vehicles
    Alves, Celia A.
    Barbosa, Catia
    Rocha, Sonia
    Calvo, Ana
    Nunes, Teresa
    Cerqueira, Mario
    Pio, Casimiro
    Karanasiou, Angeliki
    Querol, Xavier
    [J]. ENVIRONMENTAL SCIENCE AND POLLUTION RESEARCH, 2015, 22 (15) : 11526 - 11542
  • [3] Effect of after-treatment systems on particulate matter emissions in diesel engine exhaust
    Apicella, Barbara
    Mancaruso, Ezio
    Russo, Carmela
    Tregrossi, Antonio
    Oliano, Maria Maddalena
    Ciajolo, Anna
    Vaglieco, Bianca Maria
    [J]. EXPERIMENTAL THERMAL AND FLUID SCIENCE, 2020, 116
  • [4] Control of NOx emissions from diesel engine by selective catalytic reduction (SCR) with urea
    Baik, JH
    Yim, SD
    Nam, IS
    Mok, YS
    Lee, JH
    Cho, BK
    Oh, SH
    [J]. TOPICS IN CATALYSIS, 2004, 30-1 (1-4) : 37 - 41
  • [5] Emissions of Carbonaceous Particulate Matter and Ultrafine Particles from Vehicles-A Scientific Review in a Cross-Cutting Context of Air Pollution and Climate Change
    Bessagnet, Bertrand
    Allemand, Nadine
    Putaud, Jean-Philippe
    Couvidat, Florian
    Andre, Jean-Marc
    Simpson, David
    Pisoni, Enrico
    Murphy, Benjamin N.
    Thunis, Philippe
    [J]. APPLIED SCIENCES-BASEL, 2022, 12 (07):
  • [6] Source apportionment of fine particulate matter by clustering single-particle data: Tests of receptor model accuracy
    Bhave, PV
    Fergenson, DP
    Prather, KA
    Cass, GR
    [J]. ENVIRONMENTAL SCIENCE & TECHNOLOGY, 2001, 35 (10) : 2060 - 2072
  • [7] Characteristics of the main primary source profiles of particulate matter across China from 1987 to 2017
    Bi, Xiaohui
    Dai, Qili
    Wu, Jianhui
    Zhang, Qing
    Zhang, Wenhui
    Luo, Ruixue
    Cheng, Yuan
    Zhang, Jiaying
    Wang, Lu
    Yu, Zhuojun
    Zhang, Yufen
    Tian, Yingze
    Feng, Yinchang
    [J]. ATMOSPHERIC CHEMISTRY AND PHYSICS, 2019, 19 (05) : 3223 - 3243
  • [8] Single-Particle Metal Fingerprint Analysis and Machine Learning Pipeline for Source Apportionment of Metal-Containing Fine Particles in Air
    Bland, Garret D.
    Battifarano, Matthew
    Liu, Qian
    Yang, Xuezhi
    Lu, Dawei
    Jiang, Guibin
    V. Lowry, Gregory
    [J]. ENVIRONMENTAL SCIENCE & TECHNOLOGY LETTERS, 2022, 10 (11) : 1023 - 1029
  • [9] Bounding the role of black carbon in the climate system: A scientific assessment
    Bond, T. C.
    Doherty, S. J.
    Fahey, D. W.
    Forster, P. M.
    Berntsen, T.
    DeAngelo, B. J.
    Flanner, M. G.
    Ghan, S.
    Kaercher, B.
    Koch, D.
    Kinne, S.
    Kondo, Y.
    Quinn, P. K.
    Sarofim, M. C.
    Schultz, M. G.
    Schulz, M.
    Venkataraman, C.
    Zhang, H.
    Zhang, S.
    Bellouin, N.
    Guttikunda, S. K.
    Hopke, P. K.
    Jacobson, M. Z.
    Kaiser, J. W.
    Klimont, Z.
    Lohmann, U.
    Schwarz, J. P.
    Shindell, D.
    Storelvmo, T.
    Warren, S. G.
    Zender, C. S.
    [J]. JOURNAL OF GEOPHYSICAL RESEARCH-ATMOSPHERES, 2013, 118 (11) : 5380 - 5552
  • [10] An integrated PM2.5 source apportionment study: Positive Matrix Factorisation vs. the chemical transport model CAMx
    Bove, M. C.
    Brotto, P.
    Cassola, F.
    Cuccia, E.
    Massabo, D.
    Mazzino, A.
    Piazzalunga, A.
    Prati, P.
    [J]. ATMOSPHERIC ENVIRONMENT, 2014, 94 : 274 - 286