A Hybrid Deep Learning Model for Air Quality Prediction Based on the Time-Frequency Domain Relationship

被引:5
|
作者
Xu, Rui [1 ]
Wang, Deke [1 ]
Li, Jian [1 ]
Wan, Hang [2 ,3 ]
Shen, Shiming [1 ]
Guo, Xin [1 ]
机构
[1] Guilin Univ Elect Technol, Sch Comp Sci & Informat Secur, Guilin 541004, Peoples R China
[2] Southern Marine Sci & Engn Guangdong Lab Guangzhou, Guangzhou 511458, Peoples R China
[3] Guangdong Univ Technol, Inst Environm & Ecol Engn, Guangdong Prov Key Lab Water Qual Improvement & Ec, Guangzhou 510006, Peoples R China
基金
中国国家自然科学基金;
关键词
wavelet transform; Transformer; time-frequency domain feature extraction; self-attention; correlation analysis; PARTICULATE MATTER; PM2.5; CONCENTRATIONS; URBAN; INDUSTRIALIZATION; URBANIZATION; NETWORK; CMAQ; COMBINATION; POLLUTION; AREA;
D O I
10.3390/atmos14020405
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Deep learning models have been widely used in time-series numerical prediction of atmospheric environmental quality. The fundamental feature of this application is to discover the correlation between influencing factors and target parameters through a deep network structure. These relationships in original data are affected by several different frequency factors. If the deep network is adopted without guidance, these correlations may be masked by entangled multifrequency data, which will cause the problem of insufficient correlation feature extraction and difficult model interpretation. Because the wavelet transform has the ability to separate these entangled multifrequency data, and these correlations can be extracted by deep learning methods, a hybrid model combining wavelet transform and transformer-like (WTformer) was designed to extract time-frequency domain features and prediction of air quality. The 2018-2021 hourly data in Guilin was used as the benchmark training dataset. Pollutants and meteorological variables in the local dataset are decomposed into five frequency bands by wavelet. The analysis of the WTformer model showed that particulate matter (PM2.5 and PM10) had an obvious correlation in the low-frequency band and a low correlation in the high-frequency band. PM2.5 and temperature had a negative correlation in the high-frequency band and an obvious positive correlation in the low-frequency band. PM2.5 and wind speed had a low correlation in the high-frequency band and an obvious negative correlation in the low-frequency band. These results showed that the laws of variables in the time-frequency domain could be found by the model, which made it possible to explain the model. The experimental results show that the prediction performance of the established model was better than that of multilayer perceptron (MLP), one-dimensional convolutional neural network (1D-CNN), gate recurrent unit (GRU), long short-term memory (LSTM) and Transformer, in all time steps (1, 4, 8, 24 and 48 h).
引用
收藏
页数:20
相关论文
共 50 条
  • [21] A Hybrid Spectrum Prediction Model Based on Deep Learning
    Xia, Jing
    Dou, Zheng
    Qi, Lin
    Si, Guangzhen
    2022 26TH INTERNATIONAL CONFERENCE ON PATTERN RECOGNITION (ICPR), 2022, : 2378 - 2384
  • [22] Joint Time-Frequency and Time Domain Learning for Speech Enhancement
    Tang, Chuanxin
    Luo, Chong
    Zhao, Zhiyuan
    Xie, Wenxuan
    Zeng, Wenjun
    PROCEEDINGS OF THE TWENTY-NINTH INTERNATIONAL JOINT CONFERENCE ON ARTIFICIAL INTELLIGENCE, 2020, : 3816 - 3822
  • [23] A Water Quality Prediction Model Based on Modal Decomposition and Hybrid Deep Learning Models
    Zhao, Shuo
    Liu, Ruru
    Liu, Yahui
    Zeng, Tao
    Chen, Chunpeng
    Xu, Liping
    WATER, 2025, 17 (02)
  • [24] Detection of pulmonary hypertension associated with congenital heart disease based on time-frequency domain and deep learning features
    Ge, Bingbing
    Yang, Hongbo
    Ma, Pengyue
    Guo, Tao
    Pan, Jiahua
    Wang, Weilian
    BIOMEDICAL SIGNAL PROCESSING AND CONTROL, 2023, 81
  • [25] Deep-learning-based time-frequency domain signal recovery for fiber-connected radar networks
    Zhou, Yuewen
    Zhang, Fangzheng
    Pan, Shilong
    OPTICS LETTERS, 2022, 47 (01) : 50 - 53
  • [26] Time-Frequency Filtering Based on Model Fitting in the Time-Frequency Plane
    Colominas, Marcelo A.
    Meignen, Sylvain
    Duong-Hung Pham
    IEEE SIGNAL PROCESSING LETTERS, 2019, 26 (05) : 660 - 664
  • [27] A systematic survey of air quality prediction based on deep learning
    Zhang, Zhen
    Zhang, Shiqing
    Chen, Caimei
    Yuan, Jiwei
    ALEXANDRIA ENGINEERING JOURNAL, 2024, 93 : 128 - 141
  • [28] Epileptic Seizure Detection with Hybrid Time-Frequency EEG Input: A Deep Learning Approach
    Pan, Yayan
    Zhou, Xiaoyu
    Dong, Fanying
    Wu, Jianxiang
    Xu, Yongan
    Zheng, Shilian
    COMPUTATIONAL AND MATHEMATICAL METHODS IN MEDICINE, 2022, 2022
  • [29] Extreme Learning Machine for Heartbeat Classification with Hybrid Time-Domain and Wavelet Time-Frequency Features
    Xu, Yuefan
    Zhang, Sen
    Cao, Zhengtao
    Chen, Qinqin
    Xiao, Wendong
    JOURNAL OF HEALTHCARE ENGINEERING, 2021, 2021
  • [30] Water Quality Prediction Based on Hybrid Deep Learning Algorithm
    Perumal, Bhagavathi
    Rajarethinam, Niveditha
    Velusamy, Anusuya Devi
    Sundramurthy, Venkatesa Prabhu
    ADVANCES IN CIVIL ENGINEERING, 2023, 2023