A new attention-based CNN_GRU model for spatial–temporal PM2.5 prediction

被引:0
|
作者
Sara Haghbayan [1 ]
Mehdi Momeni [2 ]
Behnam Tashayo [1 ]
机构
[1] University of Isfahan,Department of Civil Engineering and Transportation
[2] University of Isfahan,Department of Civil Engineering and Transportation
关键词
PM; Imputation; Deep learning; Attention mechanism; Machine learning algorithms; Prediction spatial–temporal;
D O I
10.1007/s11356-024-34690-z
中图分类号
学科分类号
摘要
Accurately predicting the spatial-temporal distribution of PM2.5 is challenging due to missing data and selecting an appropriate modeling method. Effective imputation of missing data must consider the relationships between variables while preserving their inherent variability and uncertainty. In this study, we employed machine learning techniques to impute missing data by analyzing the relationships between meteorological variables and other pollutants. Subsequently, we introduced an innovative spatiotemporal hybrid model, AC_GRU, which integrates a one-dimensional convolutional neural network (CNN), GRU, and an attention-based network to predict PM2.5 concentrations in urban areas. The AC_GRU model utilizes meteorological variables, PM2.5 concentrations from nearby air quality monitoring stations, and concentrations of other pollutants as inputs. This approach allows the model to learn spatiotemporal correlations within the time-series data, enhancing the accuracy of PM2.5 predictions. Additionally, the attention mechanism improves prediction accuracy by automatically weighting the past input variables based on their importance for future PM2.5 predictions. The experimental results demonstrate that our AC_GRU model outperforms state-of-the-art methods, making it a valuable tool for urban air quality management and public health protection.
引用
收藏
页码:53140 / 53155
页数:15
相关论文
共 50 条
  • [21] A spatial correlation prediction model of urban PM2.5 concentration based on deconvolution and LSTM
    Zhang, Bo
    Liu, Yuan
    Yong, RuiHan
    Zou, Guojian
    Yang, Ru
    Pan, Jianguo
    Li, Maozhen
    NEUROCOMPUTING, 2023, 544
  • [22] Spatial and temporal variations of PM2.5 mass closure and inorganic PM2.5 in the Southeastern US
    Cheng, Bin
    Wang-Li, Lingjuan
    Meskhidze, Nicholas
    Classen, John
    Bloomfield, Peter
    ENVIRONMENTAL SCIENCE AND POLLUTION RESEARCH, 2019, 26 (32) : 33181 - 33191
  • [23] A Temporal Attention-based Model for Social Event Prediction
    Wang Yinsen
    Zhang Xin
    Pan Yan
    Fu Zexin
    2023 INTERNATIONAL JOINT CONFERENCE ON NEURAL NETWORKS, IJCNN, 2023,
  • [24] A new ensemble spatio-temporal PM2.5 prediction method based on graph attention recursive networks and reinforcement learning
    Tan, Jing
    Liu, Hui
    Li, Yanfei
    Yin, Shi
    Yu, Chengqing
    CHAOS SOLITONS & FRACTALS, 2022, 162
  • [25] A new ensemble spatio-temporal PM2.5 prediction method based on graph attention recursive networks and reinforcement learning
    Tan, Jing
    Liu, Hui
    Li, Yanfei
    Yin, Shi
    Yu, Chengqing
    Chaos, Solitons and Fractals, 2022, 162
  • [26] Enhancing PM2.5 Prediction Using NARX-Based Combined CNN and LSTM Hybrid Model
    Moursi, Ahmed Samy AbdElAziz
    El-Fishawy, Nawal
    Djahel, Soufiene
    Shouman, Marwa A.
    SENSORS, 2022, 22 (12)
  • [27] Spatial-temporal correlation-based LSTM algorithm and its application in PM2.5 prediction
    Zhao Y.
    Revue d'Intelligence Artificielle, 2020, 34 (01) : 29 - 38
  • [28] Resource Demand Prediction of Cloud Workloads Using an Attention-based GRU Model
    Shu, Wenjuan
    Zeng, Fanping
    Ling, Zhen
    Liu, Junyi
    Lu, Tingting
    Chen, Guozhu
    2021 17TH INTERNATIONAL CONFERENCE ON MOBILITY, SENSING AND NETWORKING (MSN 2021), 2021, : 428 - 437
  • [29] Spatial and Temporal Variability of PM2.5 Concentration in China
    XU Gang
    JIAO Limin
    ZHAO Suli
    CHENG Jiaqi
    Wuhan University Journal of Natural Sciences, 2016, 21 (04) : 358 - 368
  • [30] Spatial and Temporal Variations of PM2.5 in North Carolina
    Cheng, Bin
    Wang-Li, Lingjuan
    AEROSOL AND AIR QUALITY RESEARCH, 2019, 19 (04) : 698 - 710