Multi-Step Forecasting of Chlorophyll Concentration with Multi-Attention Collaborative Network

被引:0
作者
Jin, Yingying [1 ]
Zhang, Feng [1 ]
Wang, Xia [2 ]
Wang, Lei [3 ]
Chen, Kuo [1 ]
Chen, Liangyu [1 ]
Qin, Yutao [4 ]
Wu, Ping [3 ]
机构
[1] State Ocean Adm, East Sea Informat Ctr, Shanghai 200136, Peoples R China
[2] Shangqiu Normal Univ, Sch Teacher Educ, Shangqiu 476000, Peoples R China
[3] Minist Nat Resources, East China Sea Forecasting & Disaster Reduct Ctr, Shanghai 200136, Peoples R China
[4] Minist Nat Resources, East China Sea Ecol Ctr, Shanghai 200136, Peoples R China
关键词
chlorophyll concentration forecasting; multi-attention collaborative; deep neural network; long-term forecasting; RELATIVE IMPORTANCE; TIME; PHYTOPLANKTON; WATER; MODEL;
D O I
10.3390/jmse13010151
中图分类号
U6 [水路运输]; P75 [海洋工程];
学科分类号
0814 ; 081505 ; 0824 ; 082401 ;
摘要
In a marine environment, the concentration of chlorophyll is an important indicator of quality, which is also considered an indicator used to predict the marine ecological environment, which is further considered an important means of predicting red tide disasters. Although existing methods for predicting chlorophyll concentration have achieved encouraging performance, there are still two limitations: (i) they primarily focus on the correlation between variables while ignoring negative noise from non-predictive variables and (ii) they are unable to distinguish the impact of chlorophyll from that of non-predictive variables on chlorophyll concentration at future time points. In order to overcome these obstacles, we propose a Multi-Attention Collaborative Network (MACN)-based triangle-structured prediction system. In particular, the MACN consists of two branch networks, with one named NP-net, focusing on non-predictive variables, and the other named T-net, applied to the target variable. NP-net incorporates variable-distillation attention to eliminate the negative effects of irrelevant variables, and its outputs are used as auxiliary information for T-net. T-net works on the target variable, and both its encoder and decoder are related to NP-net to use the output of NP-net for assistance in learning and prediction. Two actual datasets are used in the experiments, which show that the MACN performs better than various kinds of state-of-the-art techniques.
引用
收藏
页数:16
相关论文
共 30 条
  • [1] Deep learning-based algorithms for long-term prediction of chlorophyll-a in catchment streams
    Abbas, Ather
    Park, Minji
    Baek, Sang-Soo
    Cho, Kyung Hwa
    [J]. JOURNAL OF HYDROLOGY, 2023, 626
  • [2] Short-term water quality variable prediction using a hybrid CNN-LSTM deep learning model
    Barzegar, Rahim
    Aalami, Mohammad Taghi
    Adamowski, Jan
    [J]. STOCHASTIC ENVIRONMENTAL RESEARCH AND RISK ASSESSMENT, 2020, 34 (02) : 415 - 433
  • [3] The relative importance of water temperature and residence time in predicting cyanobacteria abundance in regulated rivers
    Cha, YoonKyung
    Cho, Kyung Hwa
    Lee, Hyuk
    Kang, Taegu
    Kim, Joon Ha
    [J]. WATER RESEARCH, 2017, 124 : 11 - 19
  • [4] Multivariate time series forecasting via attention-based encoder-decoder framework
    Du, Shengdong
    Li, Tianrui
    Yang, Yan
    Horng, Shi-Jinn
    [J]. NEUROCOMPUTING, 2020, 388 (388) : 269 - 279
  • [5] Mechanism of skillful seasonal surface chlorophyll prediction over the southern Pacific using a global earth system model
    Ham, Yoo-Geun
    Joo, Young-Sik
    Park, Jong-Yeon
    [J]. CLIMATE DYNAMICS, 2021, 56 (1-2) : 45 - 64
  • [6] A deep learning model to effectively capture mutation information in multivariate time series prediction
    Hu, Jun
    Zheng, Wendong
    [J]. KNOWLEDGE-BASED SYSTEMS, 2020, 203
  • [7] Long-term prediction of algal chlorophyll based on empirical models and the machine learning approach in relation to trophic variation in Juam Reservoir, Korea
    Jin, Sang-Hyeon
    Jargal, Namsrai
    Khaing, Thet Thet
    Cho, Min Jae
    Choi, Hyeji
    Ariunbold, Bilguun
    Donat, Mnyagatwa Geofrey
    Yoo, Haechan
    Mamun, Md
    An, Kwang-Guk
    [J]. HELIYON, 2024, 10 (11)
  • [8] Modeling Long- and Short-Term Temporal Patterns with Deep Neural Networks
    Lai, Guokun
    Chang, Wei-Cheng
    Yang, Yiming
    Liu, Hanxiao
    [J]. ACM/SIGIR PROCEEDINGS 2018, 2018, : 95 - 104
  • [9] Li H., 2018, P 10 ASIAN C MACHINE, P454
  • [10] Prediction on daily spatial distribution of chlorophyll-a in coastal seas using a synthetic method of remote sensing, machine learning and numerical modeling
    Li, Hai
    Li, Xiuren
    Song, Dehai
    Nie, Jie
    Liang, Shengkang
    [J]. SCIENCE OF THE TOTAL ENVIRONMENT, 2024, 910