A hybrid model for spatiotemporal forecasting of PM2.5 based on graph convolutional neural network and long short-term memory

被引:419
作者
Qi, Yanlin [1 ]
Li, Qi [1 ]
Karimian, Hamed [1 ]
Liu, Di [2 ]
机构
[1] Peking Univ, Inst Remote Sensing & Geog Informat Syst, Beijing, Peoples R China
[2] Wuhan Univ, Sch Remote Sensing & Informat Engn, Wuhan, Hubei, Peoples R China
关键词
Air pollution forecasting; Spatiotemporal data modelling; Graph convolutional neural network; Long short-term memory; Deep learning; GROUND-LEVEL PM2.5; PREDICTION; CHEMISTRY; PM10;
D O I
10.1016/j.scitotenv.2019.01.333
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Increasing availability of data related to air quality from ground monitoring stations has provided the chance for data mining researchers to propose sophisticated models for predicting the concentrations of different air pollutants. In this paper, we proposed a hybrid model based on deep learning methods that integrates Graph Convolutional networks and Long Short-Term Memory networks (GC-LSTM) to model and forecast the spatiotemporal variation of PM2.5 concentrations. Specifically, historical observations on different stations are constructed as spatiotemporal graph series, and historical air quality variables, meteorological factors, spatial terms and temporal attributes are defined as graph signals. To evaluate the performance of the GC-LSTM, we compared our results with several state-of-the-art methods in different time intervals. Based on the results, our GC-LSTM model achieved the best performance for predictions. Moreover, evaluations of recall rate (68.45%), false alarm rate (4.65%) (both of threshold: 115 mu g/m(3)) and correlation coefficient R-2 (0.72) for 72-hour predictions also verify the feasibility of our proposed model. This methodology can be used for concentration forecasting of different air pollutants in future. (C) 2019 Published by Elsevier B.V.
引用
收藏
页码:1 / 10
页数:10
相关论文
共 35 条
[1]  
[Anonymous], 2015, NIPS 15 P 28 INT C N
[2]   Global modeling of tropospheric chemistry with assimilated meteorology: Model description and evaluation [J].
Bey, I ;
Jacob, DJ ;
Yantosca, RM ;
Logan, JA ;
Field, BD ;
Fiore, AM ;
Li, QB ;
Liu, HGY ;
Mickley, LJ ;
Schultz, MG .
JOURNAL OF GEOPHYSICAL RESEARCH-ATMOSPHERES, 2001, 106 (D19) :23073-23095
[3]  
Bruna J., 2014, ICLR
[4]  
Byun D, 1999, J JPN SOC ATMOS ENV, V43, P79
[5]   Neural network and multiple regression models for PM10 prediction in Athens:: A comparative assessment [J].
Chaloulakou, A ;
Grivas, G ;
Spyrellis, N .
JOURNAL OF THE AIR & WASTE MANAGEMENT ASSOCIATION, 2003, 53 (10) :1183-1190
[6]  
Defferrard M., 2016, P ADV NEUR INF PROC, P3844
[7]  
EPA, 2012, TECHNICAL REPORT
[8]  
[范竣翔 Fan Junxiang], 2017, [测绘科学, Science of Surveying and Mapping], V42, P76
[9]  
Fan R. K. C, 1997, SPECTRAL GRAPH THEOR, P212
[10]   Artificial neural networks forecasting of PM2.5 pollution using air mass trajectory based geographic model and wavelet transformation [J].
Feng, Xiao ;
Li, Qi ;
Zhu, Yajie ;
Hou, Junxiong ;
Jin, Lingyan ;
Wang, Jingjie .
ATMOSPHERIC ENVIRONMENT, 2015, 107 :118-128