Application of a Deep Learning Fusion Model in Fine Particulate Matter Concentration Prediction

被引:2
|
作者
Li, Xizhe [1 ]
Zou, Nianyu [1 ]
Wang, Zhisheng [2 ]
机构
[1] Dalian Polytech Univ, Res Inst Photon, Dalian 116034, Peoples R China
[2] Guizhou Zhifu Opt Valley Investment Management Co, Bijie 551700, Peoples R China
关键词
deep learning; fine particulate matter; meteorological elements; AMBIENT AIR-POLLUTION; NEURAL-NETWORK; CHINA; LSTM;
D O I
10.3390/atmos14050816
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
With the rapid development of urbanization, ambient air pollution is becoming increasingly serious. Out of many pollutants, fine particulate matter (PM2.5) is the pollutant that affects the urban atmospheric environment to the greatest extent. Fine particulate matter (PM2.5) concentration prediction is of great significance to human health and environmental protection. This paper proposes a CNN-SSA-DBiLSTM-attention deep learning fusion model. This paper took the meteorological observation data and pollutant data from eight stations in Bijie from 1 January 2015 to 31 December 2022 as the sample data for training and testing. For the obtained data, the missing values and the data obtained from the correlation analysis performed were first processed. Secondly, a convolutional neural network (CNN) was used for the feature selection. DBILSTM was then used to establish a network model for the relationship between the input and actual output sequences, and an attention mechanism was added to enhance the impact of the relevant information. The number of units in the DBILSTM and the epoch of the whole network were optimized using the sparrow search algorithm (SSA), and the predicted value was the output after optimization. This paper predicts the concentration of PM2.5 in different time spans and seasons, and makes a comparison with the CNN-DBILSTM, BILSTM, and LSTM models. The results show that the CNN-SSA-DBiLSTM-attention model had the best prediction effect, and its accuracy improved with the increasing prediction time span. The coefficient of determination (R-2) is stable at about 0.95. The results revealed that the proposed CNN-SSA-DBiLSTM-attention ensemble framework is a reliable and accurate method, and verifies the research results of this paper in regard to the prediction of PM2.5 concentration. This research has important implications for human health and environmental protection. The proposed method could inspire researchers to develop even more effective methods for atmospheric environment pollution modeling.
引用
收藏
页数:19
相关论文
共 50 条
  • [31] Hybrid Model for Prediction of Carbon Monoxide and Fine Particulate Matter Concentrations near a Road Intersection
    Wang, Zhanyong
    He, Hong-Di
    Lu, Feng
    Lu, Qing-Chang
    Peng, Zhong-Ren
    TRANSPORTATION RESEARCH RECORD, 2015, (2503) : 29 - 38
  • [32] A novel structure grey prediction model with strong compatibility and its application in forecasting the annual average concentration of particulate matter in Beijing
    Zeng, Bo
    Zheng, Tingting
    Xu, Xiaozeng
    Wang, Jianzhou
    ENGINEERING APPLICATIONS OF ARTIFICIAL INTELLIGENCE, 2024, 136
  • [33] An integrated assessment model for fine particulate matter in Europe
    Amann, M
    Johansson, M
    Lükewille, A
    Schöpp, W
    Apsimon, H
    Warren, R
    Gonzales, T
    Tarrason, L
    Tsyro, S
    WATER AIR AND SOIL POLLUTION, 2001, 130 (1-4): : 223 - 228
  • [34] An Integrated Assessment Model for Fine Particulate Matter in Europe
    M. Amann
    M. Johansson
    A. Lükewille
    W. Schöpp
    H. Apsimon
    R. Warren
    T. Gonzales
    L. Tarrason
    S. Tsyro
    Water, Air, and Soil Pollution, 2001, 130 : 223 - 228
  • [35] Application of a Fusion Model Based on Machine Learning in Visibility Prediction
    Zhen, Maochan
    Yi, Mingjian
    Luo, Tao
    Wang, Feifei
    Yang, Kaixuan
    Ma, Xuebin
    Cui, Shengcheng
    Li, Xuebin
    REMOTE SENSING, 2023, 15 (05)
  • [36] Deep Learning Drone Flying Height Prediction for Efficient Fine Dust Concentration Measurement
    Yoon, Ji Hyun
    Li, Yunjie
    Lee, Moon Suk
    Jo, Minho
    PROCEEDINGS OF THE 13TH INTERNATIONAL CONFERENCE ON UBIQUITOUS INFORMATION MANAGEMENT AND COMMUNICATION (IMCOM) 2019, 2019, 935 : 1112 - 1119
  • [37] Integration of complete ensemble empirical mode decomposition with deep long short-term memory model for particulate matter concentration prediction
    Minglei Fu
    Caowei Le
    Tingchao Fan
    Ryhor Prakapovich
    Dmytro Manko
    Oleh Dmytrenko
    Dmytro Lande
    Shamsuddin Shahid
    Zaher Mundher Yaseen
    Environmental Science and Pollution Research, 2021, 28 : 64818 - 64829
  • [38] The impacts of coal plants relocation on the concentration of fine particulate matter in China
    Mou, Dunguo
    Herington, Matthew
    Omoju, Oluwasola E.
    ENERGY & ENVIRONMENT, 2016, 27 (6-7) : 741 - 754
  • [39] Estimating Fine Particulate Matter Concentration using GLDAS Hydrometeorological Data
    Lee, Seulchan
    Jeong, Jaehwan
    Park, Jongmin
    Jeon, Hyunho
    Choi, Minha
    KOREAN JOURNAL OF REMOTE SENSING, 2019, 35 (06) : 919 - 932
  • [40] Integration of complete ensemble empirical mode decomposition with deep long short-term memory model for particulate matter concentration prediction
    Fu, Minglei
    Le, Caowei
    Fan, Tingchao
    Prakapovich, Ryhor
    Manko, Dmytro
    Dmytrenko, Oleh
    Lande, Dmytro
    Shahid, Shamsuddin
    Yaseen, Zaher Mundher
    ENVIRONMENTAL SCIENCE AND POLLUTION RESEARCH, 2021, 28 (45) : 64818 - 64829