PM2.5 Prediction Based on the CEEMDAN Algorithm and a Machine Learning Hybrid Model

被引:15
作者
Ban, Wenchao [1 ]
Shen, Liangduo [1 ]
机构
[1] Zhejiang Ocean Univ, Sch Ocean Engn Equipment, Zhoushan 316000, Peoples R China
关键词
timeseries data; PM2; 5 concentration prediction; CEEMDAN-LSTM-BP-ARIMA coupling model; TERM PREDICTION;
D O I
10.3390/su142316128
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
The current serious air pollution problem has become a closely investigated topic in people's daily lives. If we want to provide a reasonable basis for haze prevention, then the prediction of PM2.5 concentrations becomes a crucial task. However, it is difficult to complete the task of PM2.5 concentration prediction using a single model; therefore, to address this problem, this paper proposes a fully adaptive noise ensemble empirical modal decomposition (CEEMDAN) algorithm combined with deep learning hybrid models. Firstly, the CEEMDAN algorithm was used to decompose the PM2.5 timeseries data into different modal components. Then long short-term memory (LSTM), a backpropagation (BP) neural network, a differential integrated moving average autoregressive model (ARIMA), and a support vector machine (SVM) were applied to each modal component. Lastly, the best prediction results of each component were superimposed and summed to obtain the final prediction results. The PM2.5 data of Hangzhou in recent years were substituted into the model for testing, which was compared with eight models, namely, LSTM, ARIMA, BP, SVM, CEEMDAN-ARIMA, CEEMDAN-LSTM, CEEMDAN-SVM, and CEEMDAN-BP. The results show that for the coupled CEEMDAN-LSTM-BP-ARIMA model, the prediction ability was better than all the other models, and the timeseries decomposition data of PM2.5 had their own characteristics. The data with different characteristics were predicted separately using appropriate models and the final combined model results obtained were the most satisfactory.
引用
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页数:15
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共 33 条
  • [1] Aero O., 2016, Ssrn, V8, P296, DOI DOI 10.2139/SSRN.2861505
  • [2] Hybrid Machine Learning Models for Forecasting Surgical Case Volumes at a Hospital
    Aravazhi, Agaraoli
    [J]. AI, 2021, 2 (04) : 512 - 526
  • [3] Adaptive filtering for MEMS gyroscope with dynamic noise model
    Bai, Yuting
    Wang, Xiaoyi
    Jin, Xuebo
    Su, Tingli
    Kong, Jianlei
    Zhang, Baihai
    [J]. ISA TRANSACTIONS, 2020, 101 : 430 - 441
  • [4] Problem formulations and solvers in linear SVM: a review
    Chauhan, Vinod Kumar
    Dahiya, Kalpana
    Sharma, Anuj
    [J]. ARTIFICIAL INTELLIGENCE REVIEW, 2019, 52 (02) : 803 - 855
  • [5] Prediction algorithm of PM2.5 mass concentration based on adaptive BP neural network
    Chen, Yegang
    [J]. COMPUTING, 2018, 100 (08) : 825 - 838
  • [6] Hybrid algorithm for short-term forecasting of PM2.5 in China
    Cheng, Yong
    Zhang, Hong
    Liu, Zhenhai
    Chen, Longfei
    Wang, Ping
    [J]. ATMOSPHERIC ENVIRONMENT, 2019, 200 : 264 - 279
  • [7] Deep Learning: Methods and Applications
    Deng, Li
    Yu, Dong
    [J]. FOUNDATIONS AND TRENDS IN SIGNAL PROCESSING, 2013, 7 (3-4): : I - 387
  • [8] A hybrid prediction model for PM2.5 mass and components using a chemical transport model and land use regression
    Di, Qian
    Koutrakis, Petros
    Schwartz, Joel
    [J]. ATMOSPHERIC ENVIRONMENT, 2016, 131 : 390 - 399
  • [9] Gradient estimation algorithms for the parameter identification of bilinear systems using the auxiliary model
    Ding, Feng
    Xu, Ling
    Meng, Dandan
    Jin, Xue-Bo
    Alsaedi, Ahmed
    Hayat, Tasawar
    [J]. JOURNAL OF COMPUTATIONAL AND APPLIED MATHEMATICS, 2020, 369
  • [10] Particle filtering based parameter estimation for systems with output-error type model structures
    Ding, Jie
    Chen, Jiazhong
    Lin, Jinxing
    Wan, Lijuan
    [J]. JOURNAL OF THE FRANKLIN INSTITUTE-ENGINEERING AND APPLIED MATHEMATICS, 2019, 356 (10): : 5521 - 5540