Short-term air pollution prediction using graph convolutional neural networks

被引:1
|
作者
Jana, Swadesh [1 ]
Middya, Asif Iqbal [1 ]
Roy, Sarbani [1 ]
机构
[1] Jadavpur Univ, Dept Comp Sci & Engn, Kolkata, India
关键词
Air pollution; Pollution forecasting; Deep learning; Spatio-temporal graph; Convolution networks; PARTICULATE MATTER; QUALITY; MODEL; URBAN; SYSTEM; HEALTH; AREA;
D O I
10.1016/j.techfore.2024.123684
中图分类号
F [经济];
学科分类号
02 ;
摘要
Pollution is a major concern in the present day, causing multiple illnesses and deaths, specifically in developing countries in Asia and Africa. While it has drawn worldwide attention as governments try to issue laws to meet certain criteria for air pollution levels, pollution concentration forecasting has become a major challenge. Particularly, short term forecasting will help to gain information regarding concentrations of harmful pollutants for the upcoming hours and enable better decision-making with regards to controlling air pollution. In this paper, we investigate spatio-temporal graph-based models to determine the best methods for spatial and temporal analysis of data. The models have the additional capacity to perform multi-variate predictions of correlated data, i.e., predicting multiple pollutant concentrations simultaneously, thus requiring lower computational efforts. A real-world pollution dataset measured over Delhi, India, is used to comparing the proposed models with baselines, which shows the Spatio-Temporal Graph Convolution Neural Network (STGCN) models to be performing better than others. For a better understanding of model architectures with the most effective strategies for spatial and temporal data analysis, three models, namely STGCN-A, STGCNB, STGCN-C have been developed. The models have been compared with 6 other baselines over multiple forecasting horizons of 1 h, 24 h, and 48 h timesteps using various metrics such as mean absolute error (MAE), root mean square error (RMSE), mean absolute percent error (MAPE). On the PM 2.5 dataset of Delhi, STGCN-B achieves a performance of 10.53 MAE, 6.92 RMSE and 25.25 MAPE for a 1 h forecast, while STGCN-C achieves 20.18 MAE, 14.73 RMSE and 55.45 MAPE for a 24 h forecast. In general, both structures achieve similar results, with STGCN-C being better in many cases. They are further analysed through observation-prediction graphs and Taylor diagrams, which give an insight into our findings. The models are additionally validated on a benchmark real-world dataset from California, USA for better understanding of the spatio-temporal relations and model performances on a more stable dataset, where STGCN-C performs best for PM 2.5 with 4.30 RMSE, 1.98 MAE, 25.96 MAPE for 1 h predictions for univariate data and 3.63 RMSE, 1.88 MAE and 25.91 MAPE in multivariate forecasting. The developed spatio-temporal graph-based models hold promising applications in urban air quality management, aiding policymakers in implementing targeted interventions to mitigate pollution-related health risks. Furthermore, these models can support public health agencies by providing timely and accurate forecasts of pollutant concentrations, enabling proactive measures to safeguard community well-being. Our study showcases the efficacy of spatio-temporal graph-based models in accurately forecasting air pollutant concentrations, with particular emphasis on short-term predictions. By leveraging multi-variate capabilities, our proposed models demonstrate superior performance compared to baseline approaches across various forecasting horizons.
引用
收藏
页数:20
相关论文
共 50 条
  • [41] Short-Term Traffic Prediction With Deep Neural Networks: A Survey
    Lee, Kyungeun
    Eo, Moonjung
    Jung, Euna
    Yoon, Yoonjin
    Rhee, Wonjong
    IEEE ACCESS, 2021, 9 : 54739 - 54756
  • [42] Predicting Station-Level Short-Term Passenger Flow in a Citywide Metro Network Using Spatiotemporal Graph Convolutional Neural Networks
    Han, Yong
    Wang, Shukang
    Ren, Yibin
    Wang, Cheng
    Gao, Peng
    Chen, Ge
    ISPRS INTERNATIONAL JOURNAL OF GEO-INFORMATION, 2019, 8 (06)
  • [43] An Intelligent Approach to Short-Term Wind Power Prediction Using Deep Neural Networks
    Niksa-Rynkiewicz, Tacjana
    Stomma, Piotr
    Witkowska, Anna
    Rutkowska, Danuta
    Slowik, Adam
    Cpalka, Krzysztof
    Jaworek-Korjakowska, Joanna
    Kolendo, Piotr
    JOURNAL OF ARTIFICIAL INTELLIGENCE AND SOFT COMPUTING RESEARCH, 2023, 13 (03) : 197 - 210
  • [44] Remaining useful life prediction of PEMFC based on long short-term memory recurrent neural networks
    Liu, Jiawei
    Li, Qi
    Chen, Weirong
    Yan, Yu
    Qiu, Yibin
    Cao, Taiqiong
    INTERNATIONAL JOURNAL OF HYDROGEN ENERGY, 2019, 44 (11) : 5470 - 5480
  • [45] Using long short-term memory networks for river flow prediction
    Xu, Wei
    Jiang, Yanan
    Zhang, Xiaoli
    Li, Yi
    Zhang, Run
    Fu, Guangtao
    HYDROLOGY RESEARCH, 2020, 51 (06): : 1358 - 1376
  • [46] A hybrid prediction method for short-term load based on temporal convolutional networks and attentional mechanisms
    Li, Min
    Tian, Hangwei
    Chen, Qinghui
    Zhou, Mingle
    Li, Gang
    IET GENERATION TRANSMISSION & DISTRIBUTION, 2024, 18 (05) : 885 - 898
  • [47] Short-term Network-wide Traffic Prediction Based on Graph Convolutional Network
    Chen X.-Q.
    Zhou L.-X.
    Cao Z.
    Jiaotong Yunshu Xitong Gongcheng Yu Xinxi/Journal of Transportation Systems Engineering and Information Technology, 2020, 20 (04): : 49 - 55
  • [48] Multi-step short-term wind power prediction based on spatio-temporal graph convolutional networks
    Liu, Zheng
    Xiao, SiYuan
    Liu, Hongliang
    2023 6TH INTERNATIONAL CONFERENCE ON RENEWABLE ENERGY AND POWER ENGINEERING, REPE 2023, 2023, : 352 - 357
  • [49] Short-term traffic speed forecasting based on graph attention temporal convolutional networks
    Guo, Ge
    Yuan, Wei
    NEUROCOMPUTING, 2020, 410 : 387 - 393
  • [50] Prediction of Sea Ice Motion With Convolutional Long Short-Term Memory Networks
    Petrou, Zisis I.
    Tian, Yingli
    IEEE TRANSACTIONS ON GEOSCIENCE AND REMOTE SENSING, 2019, 57 (09): : 6865 - 6876