Applying traffic camera and deep learning-based image analysis to predict PM2.5 concentrations

被引:0
|
作者
Liu, Yanming [1 ]
Zhang, Yuxi [1 ,2 ]
Yu, Pei [1 ]
Ye, Tingting [1 ]
Zhang, Yiwen [1 ]
Xu, Rongbin [1 ]
Li, Shanshan [1 ]
Guo, Yuming [1 ,3 ]
机构
[1] Monash Univ, Sch Publ Hlth & Prevent Med, Melbourne, Vic 3004, Australia
[2] Univ Sydney, Sch Life & Environm Sci, Sydney, NSW 2006, Australia
[3] Monash Univ, Sch Publ Hlth & Prevent Med, Level 2,553 St Kilda Rd, Melbourne, Vic 3004, Australia
基金
英国医学研究理事会; 澳大利亚国家健康与医学研究理事会; 澳大利亚研究理事会;
关键词
Traffic camera; Deep learning; Air quality; Image analysis; Machine learning; EXPOSURE; PM10;
D O I
10.1016/j.scitotenv.2023.169233
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Background: Air pollution has caused a significant burden in terms of mortality and mobility worldwide. However, the current coverage of air quality monitoring networks is still limited.Objective: This study aims to apply a novel approach to convert the existing traffic cameras into sensors measuring particulate matter with a diameter of 2.5 mu m or less (PM2.5) so that the coverage of PM2.5 monitoring could be expanded without extra cost.Methods: In our study, the traffic camera images were collected at a rate of 4 images/h and the corresponding hourly PM2.5 concentration was collected from the reference grade PM2.5 station 3 km away. A customized neural network model was trained to obtain the PM2.5 concentration from images followed by a random forest model to predict the hourly PM2.5 concentration. The saliency maps and the feature importance were utilized to interpret the neural network. Results: Proposed novel approach has a high prediction performance to predict hourly PM2.5 from traffic camera images, with a root mean square error (RMSE) of 0.76 mu g/m3 and a coefficient of determination (R2) of 0.98. The saliency map shows neural network focuses on unobstructed far-end road surfaces while the random forest feature importance highlights the first quarter image's significance. The model performance is robust whether weather conditions are controlled or not.Conclusion: Our study provided a practical approach to converting the existing traffic cameras into PM2.5 sensors. The deep learning method based on the Resnet architecture in our study can broaden the coverage of PM2.5 monitoring with no additional infrastructure needed.
引用
收藏
页数:9
相关论文
共 50 条
  • [21] Deep learning-based spatio-temporal prediction and uncertainty assessment of urban PM2.5 distribution
    Liu, Huimin
    Zhang, Chenwei
    Chen, Kaiqi
    Deng, Min
    Peng, Chong
    [J]. Cehui Xuebao/Acta Geodaetica et Cartographica Sinica, 2024, 53 (04): : 750 - 760
  • [22] Deep learning-based PM2.5 prediction considering the spatiotemporal correlations: A case study of Beijing, China
    Pak, Unjin
    Ma, Jun
    Ryu, Unsok
    Ryom, Kwangchol
    Juhyok, U.
    Pak, Kyongsok
    Pak, Chanil
    [J]. SCIENCE OF THE TOTAL ENVIRONMENT, 2020, 699 (699)
  • [23] A PM2.5 prediction model based on deep learning and random forest
    Peng, Haojie
    Zhou, Yang
    Hu, Xiaofei
    Zhang, Long
    Peng, Yangzhao
    Cai, Xinyue
    [J]. National Remote Sensing Bulletin, 2023, 27 (02) : 430 - 440
  • [24] Extraction of multi-scale features enhances the deep learning-based daily PM2.5 forecasting in cities
    Dong, Liang
    Hua, Pei
    Gui, Dongwei
    Zhang, Jin
    [J]. Chemosphere, 2022, 308
  • [25] Extraction of multi-scale features enhances the deep learning-based daily PM2.5 forecasting in cities
    Dong, Liang
    Hua, Pei
    Gui, Dongwei
    Zhang, Jin
    [J]. CHEMOSPHERE, 2022, 308
  • [26] Effects of traffic and urban parks on PM10 and PM2.5 mass concentrations
    Qu, Haiyan
    Lu, Xiujun
    Liu, Linghan
    Ye, Yingqi
    [J]. ENERGY SOURCES PART A-RECOVERY UTILIZATION AND ENVIRONMENTAL EFFECTS, 2023, 45 (02) : 5635 - 5647
  • [27] A deep learning model for PM2.5 concentration prediction
    Zhang, Zhendong
    Ma, Xiang
    Yan, Ke
    [J]. 2021 IEEE INTL CONF ON DEPENDABLE, AUTONOMIC AND SECURE COMPUTING, INTL CONF ON PERVASIVE INTELLIGENCE AND COMPUTING, INTL CONF ON CLOUD AND BIG DATA COMPUTING, INTL CONF ON CYBER SCIENCE AND TECHNOLOGY CONGRESS DASC/PICOM/CBDCOM/CYBERSCITECH 2021, 2021, : 428 - 433
  • [28] Response to "Comment on 'Deep Ensemble Machine Learning Frame work for the Estimation of PM2.5 Concentrations'"
    Yu, Wenhua
    Li, Shanshan
    Ye, Tingting
    Xu, Rongbin
    Song, Jiangning
    Guo, Yuming
    [J]. ENVIRONMENTAL HEALTH PERSPECTIVES, 2022, 130 (06)
  • [29] PM2.5 concentrations in London for 2008-A modeling analysis of contributions from road traffic
    Singh, Vikas
    Sokhi, Ranjeet S.
    Kukkonen, Jaakko
    [J]. JOURNAL OF THE AIR & WASTE MANAGEMENT ASSOCIATION, 2014, 64 (05) : 509 - 518
  • [30] Refined spatiotemporal estimation model of PM2.5 based on deep learning method
    Geng, Bing
    Sun, Yi-Bo
    Zeng, Qiao-Lin
    Shang, Hao-Lv
    Liu, Xiao-Yu
    Shan, Jing-Jing
    [J]. Zhongguo Huanjing Kexue/China Environmental Science, 2021, 41 (08): : 3502 - 3510