An integrated 3D CNN-GRU deep learning method for short-term prediction of PM2.5 concentration in urban environment

被引:91
作者
Faraji, Marjan [1 ]
Nadi, Saeed [2 ]
Ghaffarpasand, Omid [3 ]
Homayoni, Saeid [4 ]
Downey, Kay [3 ]
机构
[1] Univ Isfahan, Fac Civil Engn & Transportat, Dept Geomat Engn, HezarJerib St, Esfahan 8174673441, Iran
[2] Carleton Univ, Dept Civil & Environm Engn, Ottawa, ON K1S 5B6, Canada
[3] Univ Birmingham, Sch Geog Earth & Environm & Jinxes, Birmingham B15 2TT, W Midlands, England
[4] Inst Natl Rech Sci, Ctr Eau Terre Environm, Quebec City, PQ G1K 9A9, Canada
关键词
Air pollution; Data science; Prediction; Deep learning; Convolutional neural networks; Gated recurrent unit; NEURAL-NETWORK; AIR-POLLUTION; MODEL; REGRESSION; FORECAST; QUALITY;
D O I
10.1016/j.scitotenv.2022.155324
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
This study proposes a new model for the spatiotemporal prediction of PM2.5 concentration at hourly and daily time intervals. It has been constructed on a combination of three-dimensional convolutional neural network and gated recurrent unit (3D CNN-GRU). The performance of the proposed model is boosted by learning spatial patterns from similar air quality (AQ) stations while maintaining long-term temporal dependencies with simultaneous learning and prediction for all stations over different time intervals. 3D CNN-GRU model was applied to air pollution observations, especially PM2.5 level, collected from several AQ stations across the city of Tehran, the capital of Iran, from 2016 to 2019. It could achieve promising results compared to the methods such as LSTM, GRU, ANN, SVR, and ARIMA, which are recently introduced in the literature; it estimates 84% (R-2 = 0.84) and 78% (R-2 = 0.78) of PM2.5 concentration variations for the next hour and the following day, respectively.
引用
收藏
页数:12
相关论文
共 57 条
[1]   Exposure to particulate matter, prenatal depressive symptoms and HPA axis dysregulation [J].
Ahlers, Nina E. ;
Weiss, Sandra J. .
HELIYON, 2021, 7 (06)
[2]  
Athira V., 2018, Procedia Computer Science, V132, P1394, DOI 10.1016/j.procs.2018.05.068
[3]   Short-term prediction of PM2.5 pollution with deep learning methods [J].
Ayturan, Y. A. ;
Ayturan, Z. C. ;
Altun, H. O. ;
Kongoli, C. ;
Tuncez, F. D. ;
Dursun, S. ;
Ozturk, A. .
GLOBAL NEST JOURNAL, 2020, 22 (01) :126-131
[4]  
Ayturan Y.A., 2020, GLOBAL NEST J, V1
[5]  
Baklanov A., 2020, Global Transitions, V2, P261, DOI [DOI 10.1016/J.GLT.2020.11.001, 10.1016/j.glt.2020.11.001]
[6]   Air-pollution prediction in smart city, deep learning approach [J].
Bekkar, Abdellatif ;
Hssina, Badr ;
Douzi, Samira ;
Douzi, Khadija .
JOURNAL OF BIG DATA, 2021, 8 (01)
[7]   Air pollution in an urban world: A global view on density, cities and emissions [J].
Castells-Quintana, David ;
Dienesch, Elisa ;
Krause, Melanie .
ECOLOGICAL ECONOMICS, 2021, 189
[8]   Seasonal modeling of PM2.5\ in California's San Joaquin Valley [J].
Chen, Jianjun ;
Lu, Jin ;
Avise, Jeremy C. ;
DaMassa, John A. ;
Kleeman, Michael J. ;
Kaduwela, Ajith P. .
ATMOSPHERIC ENVIRONMENT, 2014, 92 :182-190
[9]   Ensemble and enhanced PM10 concentration forecast model based on stepwise regression and wavelet analysis [J].
Chen, Yuanyuan ;
Shi, Runhe ;
Shu, Shijie ;
Gao, Wei .
ATMOSPHERIC ENVIRONMENT, 2013, 74 :346-359
[10]   Hybrid Time-Series Framework for Daily-Based PM2.5 Forecasting [J].
Chiang, Pei-Wen ;
Horng, Shi-Jinn .
IEEE ACCESS, 2021, 9 :104162-104176