A dynamic classification-based long short-term memory network model for daily streamflow forecasting in different climate regions

被引:9
|
作者
Chu, Haibo [1 ]
Wu, Jin [1 ]
Wu, Wenyan [2 ]
Wei, Jiahua [3 ]
机构
[1] Beijing Univ Technol, Coll Architecture & Civil Engn, Beijing, Peoples R China
[2] Univ Melbourne, Dept Infrastruct Engn, Melbourne, Vic, Australia
[3] Tsinghua Univ, State Key Lab Hydrosci & Engn, Beijing, Peoples R China
基金
澳大利亚研究理事会;
关键词
Dynamic classification; Long short-term memory networks; Streamflow forecasting; Box-Cox method; INDEX;
D O I
10.1016/j.ecolind.2023.110092
中图分类号
X176 [生物多样性保护];
学科分类号
090705 ;
摘要
Daily streamflow forecasting is a major determinant of ecological processes in running waters, healthy stream ecology and surrounding environment, and accurate streamflow forecasting provides a powerful foundation for ecological assessment, management, and decision-making. Recently, data-driven models for different flow re-gimes have shown excellent potential in streamflow forecasting. However, the boundaries between different flow regimes were selected arbitrarily without considering the changes in boundaries that often occur over time in the real world. Therefore, in this paper, an integrated modelling approach that couples a dynamic classification method with a long short-term memory networks (LSTM) model without data transformation (the DC-LSTM model) and an LSTM with Box-Cox data transformation (the DC-B-LSTM model) is developed to improve the performance of streamflow forecasting considering different flow regimes. The boundaries of dynamic classifi-cation are dynamic changing interval values of related hydrological variables improved from traditional clas-sification method just using static single-variable threshold, so dynamic classification can more fully explore the relationship and information of hydrological data. The performance of both the DC-LSTM and DC-B-LSTM models is compared to that of the LSTM model without data classification (the traditional LSTM model) and with data classification using a traditional static method (the C-LSTM model) based on data from 8 stations within 4 river basins in different climate regions in the United States. The results show that both the DC-LSTM and DC-B-LSTM models out-perform the traditional LSTM models (with or without static data classification) for all river basins considered. Furthermore, the DC-B-LSTM model displays better performance than the DC-LSTM model in arid areas.
引用
收藏
页数:11
相关论文
共 50 条
  • [1] Long-lead daily streamflow forecasting using Long Short-Term Memory model with different predictors
    Li, Jiayuan
    Yuan, Xing
    Ji, Peng
    JOURNAL OF HYDROLOGY-REGIONAL STUDIES, 2023, 48
  • [2] Climate-driven Model Based on Long Short-Term Memory and Bayesian Optimization for Multi-day-ahead Daily Streamflow Forecasting
    Lian, Yani
    Luo, Jungang
    Wang, Jingmin
    Zuo, Ganggang
    Wei, Na
    WATER RESOURCES MANAGEMENT, 2022, 36 (01) : 21 - 37
  • [3] Climate-driven Model Based on Long Short-Term Memory and Bayesian Optimization for Multi-day-ahead Daily Streamflow Forecasting
    Yani Lian
    Jungang Luo
    Jingmin Wang
    Ganggang Zuo
    Na Wei
    Water Resources Management, 2022, 36 : 21 - 37
  • [4] An improved long short-term memory network for streamflow forecasting in the upper Yangtze River
    Shuang Zhu
    Xiangang Luo
    Xiaohui Yuan
    Zhanya Xu
    Stochastic Environmental Research and Risk Assessment, 2020, 34 : 1313 - 1329
  • [5] An improved long short-term memory network for streamflow forecasting in the upper Yangtze River
    Zhu, Shuang
    Luo, Xiangang
    Yuan, Xiaohui
    Xu, Zhanya
    STOCHASTIC ENVIRONMENTAL RESEARCH AND RISK ASSESSMENT, 2020, 34 (09) : 1313 - 1329
  • [6] Cause-driven Streamflow Forecasting Framework Based on Linear Correlation Reconstruction and Long Short-term Memory
    Yani Lian
    Jungang Luo
    Wei Xue
    Ganggang Zuo
    Shangyao Zhang
    Water Resources Management, 2022, 36 : 1661 - 1678
  • [7] Cause-driven Streamflow Forecasting Framework Based on Linear Correlation Reconstruction and Long Short-term Memory
    Lian, Yani
    Luo, Jungang
    Xue, Wei
    Zuo, Ganggang
    Zhang, Shangyao
    WATER RESOURCES MANAGEMENT, 2022, 36 (05) : 1661 - 1678
  • [8] A Deep Neural Network Model for Short-Term Load Forecast Based on Long Short-Term Memory Network and Convolutional Neural Network
    Tian, Chujie
    Ma, Jian
    Zhang, Chunhong
    Zhan, Panpan
    ENERGIES, 2018, 11 (12)
  • [9] Assessment of the Short-Term Streamflow Forecasting Using Machine Learning Fed by Deutscher Wetterdienst ICON Climate Forecasting Model
    Menapace, Andrea
    Dalla Torre, Daniele
    Zanfei, Ariele
    Dhawano, Pranav
    Larcher, Michele
    Righetti, Maurizio
    PROCEEDINGS OF THE 39TH IAHR WORLD CONGRESS, 2022, : 4915 - 4921
  • [10] Dynamic classification and attention mechanism-based bidirectional long short-term memory network for daily runoff prediction in Aksu River basin, Northwest China
    Wei, Qing
    Yang, Ju
    Fu, Fangbing
    Xue, Lianqing
    APPLIED MATHEMATICS AND COMPUTATION, 2025, 494