Transfer learning for neural network model in chlorophyll-a dynamics prediction

被引:0
作者
Wenchong Tian
Zhenliang Liao
Xuan Wang
机构
[1] Tongji University,UNEP
[2] Shanghai Institute of Pollution Control and Ecological Security,Tongji Institute of Environment for Sustainable Development, College of Environmental Science and Engineering
[3] Tongji University,Key Laboratory of Yangtze River Water Environment (Ministry of Education),
[4] Xinjiang University,College of Civil Engineering and Architecture
来源
Environmental Science and Pollution Research | 2019年 / 26卷
关键词
Transfer learning; Chlorophyll-a dynamics; Feedforward neural networks; Recurrent neural network; Long short-term memory;
D O I
暂无
中图分类号
学科分类号
摘要
Neural network models have been used to predict chlorophyll-a concentration dynamics. However, as model generalization ability decreases, (i) the performance of the models gradually decreases over time; (ii) the accuracy and performance of the models need to be improved. In this study, Transfer learning (TL) is employed to optimize neural network models (including feedforward neural networks (FNN), recurrent neural networks (RNN) and long short-term memory (LTSM)) and overcome these problems. Models using TL are able to reduce the influence of mutable data distribution and enhance generalization ability. Thus, it can improve the accuracy of prediction and maintain high performance in long-term applications. Also, TL is compared with parameter norm penalties (PNP) and dropout—two other methods used to improve model generalization ability. In general, TL has a better prediction effect than PNP and dropout. All the models, including FNN with different architectures, RNN and LSTM, as well as models optimized by PNP, dropout, and TL, are applied to an estuary reservoir in eastern China to predict chlorophyll-a dynamics at 5-min intervals. According to the results of this study, (i) models with TL produce the best prediction results; (ii) the original models and the models with PNP and dropout lose their ability to predict within 3 months, while TL models retain a high prediction accuracy.
引用
收藏
页码:29857 / 29871
页数:14
相关论文
共 50 条
  • [41] Prediction of medial knee contact force using multisource fusion recurrent neural network and transfer learning
    Zou, Jianjun
    Zhang, Xiaogang
    Zhang, Yali
    Jin, Zhongmin
    MEDICAL & BIOLOGICAL ENGINEERING & COMPUTING, 2024, 62 (05) : 1333 - 1346
  • [42] Prediction of medial knee contact force using multisource fusion recurrent neural network and transfer learning
    Jianjun Zou
    Xiaogang Zhang
    Yali Zhang
    Zhongmin Jin
    Medical & Biological Engineering & Computing, 2024, 62 : 1333 - 1346
  • [43] Automated spectral transfer learning strategy for semi-supervised regression on Chlorophyll-a retrievals with Sentinel-2 imagery
    Shi, Xuming
    Gu, Lingjia
    Li, Xiaofeng
    Jiang, Tao
    Gao, Tong
    INTERNATIONAL JOURNAL OF DIGITAL EARTH, 2024, 17 (01)
  • [44] A hybrid neural network model based on transfer learning for Arabic sentiment analysis of customer satisfaction
    Bakhit, Duha Mohamed Adam
    Nderu, Lawrence
    Ngunyi, Antony
    ENGINEERING REPORTS, 2024, 6 (10)
  • [45] Broad Transfer Learning Network based Li-ion battery lifetime prediction model
    Kuo, Ping-Huan
    Tseng, Yung-Ruen
    Luan, Po-Chien
    Yau, Her-Terng
    ENERGY REPORTS, 2023, 10 : 881 - 893
  • [46] Physically Guided Neural Network Based on Transfer Learning (TL-PGNN) for Hypersonic Heat Flux Prediction
    Chen, Biao
    Zhang, Jifa
    Zhang, Shuai
    Song, Xiaoxiao
    Zheng, Yao
    COMMUNICATIONS IN COMPUTATIONAL PHYSICS, 2024, 36 (03) : 651 - 672
  • [47] Deep convolutional neural network with transfer learning for rectum toxicity prediction in cervical cancer radiotherapy: a feasibility study
    Zhen, Xin
    Chen, Jiawei
    Zhong, Zichun
    Hrycushko, Brian
    Zhou, Linghong
    Jiang, Steve
    Albuquerque, Kevin
    Gu, Xuejun
    PHYSICS IN MEDICINE AND BIOLOGY, 2017, 62 (21) : 8246 - 8263
  • [48] Production prediction of extra high water cut oil well based on convolution neural network and transfer learning
    Jiang C.
    Fang S.
    Liu W.
    Shao K.
    Chen P.
    Zhongguo Shiyou Daxue Xuebao (Ziran Kexue Ban)/Journal of China University of Petroleum (Edition of Natural Science), 2023, 47 (06): : 162 - 170
  • [49] Neural Network Based Transfer Learning for Robot Path Generation
    Tang, Houcheng
    Notash, Leila
    JOURNAL OF MECHANISMS AND ROBOTICS-TRANSACTIONS OF THE ASME, 2022, 14 (04):
  • [50] Transfer learning of deep neural network representations for fMRI decoding
    Svanera, Michele
    Savardi, Mattia
    Benini, Sergio
    Signoroni, Alberto
    Raz, Gal
    Hendler, Talma
    Muckli, Lars
    Goebel, Rainer
    Valente, Giancarlo
    JOURNAL OF NEUROSCIENCE METHODS, 2019, 328