Comparison of Forecasting Models for Real-Time Monitoring of Water Quality Parameters Based on Hybrid Deep Learning Neural Networks

被引:35
|
作者
Sha, Jian [1 ]
Li, Xue [1 ]
Zhang, Man [2 ]
Wang, Zhong-Liang [1 ]
机构
[1] Tianjin Normal Univ, Tianjin Key Lab Water Resources & Environm, Tianjin 300387, Peoples R China
[2] Tsinghua Univ, State Key Lab Hydrosci & Engn, Beijing 100084, Peoples R China
基金
中国国家自然科学基金;
关键词
convolutional neural network (CNN); long short-term memory neural network (LSTM); complete ensemble empirical mode decomposition algorithm with adaptive noise (CEEMDAN); real-time monitoring; water quality parameters; ADAPTIVE NOISE; WAVELET ANALYSIS; DECOMPOSITION; PREDICTION; STREAMFLOW; OPTIMIZATION; MACHINES; DESIGN;
D O I
10.3390/w13111547
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Accurate real-time water quality prediction is of great significance for local environmental managers to deal with upcoming events and emergencies to develop best management practices. In this study, the performances in real-time water quality forecasting based on different deep learning (DL) models with different input data pre-processing methods were compared. There were three popular DL models concerned, including the convolutional neural network (CNN), long short-term memory neural network (LSTM), and hybrid CNN-LSTM. Two types of input data were applied, including the original one-dimensional time series and the two-dimensional grey image based on the complete ensemble empirical mode decomposition algorithm with adaptive noise (CEEMDAN) decomposition. Each type of input data was used in each DL model to forecast the real-time monitoring water quality parameters of dissolved oxygen (DO) and total nitrogen (TN). The results showed that (1) the performances of CNN-LSTM were superior to the standalone model CNN and LSTM; (2) the models used CEEMDAN-based input data performed much better than the models used the original input data, while the improvements for non-periodic parameter TN were much greater than that for periodic parameter DO; and (3) the model accuracies gradually decreased with the increase of prediction steps, while the original input data decayed faster than the CEEMDAN-based input data and the non-periodic parameter TN decayed faster than the periodic parameter DO. Overall, the input data preprocessed by the CEEMDAN method could effectively improve the forecasting performances of deep learning models, and this improvement was especially significant for non-periodic parameters of TN.
引用
收藏
页数:20
相关论文
共 50 条
  • [1] Real-time deep learning-based market demand forecasting and monitoring
    Guo, Yuan
    Luo, Yuanwei
    He, Jingjun
    He, Yun
    COMPUTERS & ELECTRICAL ENGINEERING, 2022, 100
  • [2] Real-time image-based air quality estimation by deep learning neural networks
    Kow, Pu-Yun
    Hsia, I-Wen
    Chang, Li-Chiu
    Chang, Fi-John
    JOURNAL OF ENVIRONMENTAL MANAGEMENT, 2022, 307
  • [3] Real-Time Anomaly Detection for Water Quality Sensor Monitoring Based on Multivariate Deep Learning Technique
    El-Shafeiy, Engy
    Alsabaan, Maazen
    Ibrahem, Mohamed I.
    Elwahsh, Haitham
    SENSORS, 2023, 23 (20)
  • [4] Weather parameters forecasting with time series using deep hybrid neural networks
    Yalcin, Sercan
    CONCURRENCY AND COMPUTATION-PRACTICE & EXPERIENCE, 2022, 34 (21):
  • [5] Real-time forecasting of key coking coal quality parameters using neural networks and artificial intelligence
    Dyczko, Artur
    RUDARSKO-GEOLOSKO-NAFTNI ZBORNIK, 2023, 38 (03): : 105 - 117
  • [6] Daily Streamflow Forecasting Using Networks of Real-Time Monitoring Stations and Hybrid Machine Learning Methods
    Zhang, Yue
    Zhou, Zimo
    Deng, Ying
    Pan, Daiwei
    Van Griensven The, Jesse
    Yang, Simon X.
    Gharabaghi, Bahram
    WATER, 2024, 16 (09)
  • [7] Real-time and Embedded Compact Deep Neural Networks for Seagrass Monitoring
    Wang, Jiangtao
    Li, Baihua
    Zhou, Yang
    Meng, Qinggang
    Rende, Sante Francesco
    Rocco, Emanuele
    2020 IEEE INTERNATIONAL CONFERENCE ON SYSTEMS, MAN, AND CYBERNETICS (SMC), 2020, : 3570 - 3575
  • [8] Real-time water quality prediction in water distribution networks using graph neural networks with sparse monitoring data
    Li, Zilin
    Liu, Haixing
    Zhang, Chi
    Fu, Guangtao
    WATER RESEARCH, 2024, 250
  • [9] A novel deep neural network architecture for real-time water demand forecasting
    Salloom, Tony
    Kaynak, Okyay
    He, Wei
    JOURNAL OF HYDROLOGY, 2021, 599
  • [10] Real-time electricity price forecasting of wind farms with deep neural network transfer learning and hybrid datasets
    Yang, Haolin
    Schell, Kristen R.
    APPLIED ENERGY, 2021, 299