A novel insight on input variable and time lag selection in daily streamflow forecasting using deep learning models

被引:0
|
作者
Khatun, Amina [1 ]
Nisha, M. N. [2 ]
Chatterjee, Siddharth [3 ]
Sridhar, Venkataramana [4 ]
机构
[1] Assam Agr Univ, Nat Resource Management Agr Engn, Nalbari, India
[2] Indian Inst Technol Kharagpur, Agr & Food Engn Dept, Kharagpur, India
[3] Indian Inst Engn Sci & Technol, Civil Engn Dept, Sibpur, India
[4] Virginia Tech, Dept Biol Syst Engn, Blacksburg, VA 24061 USA
基金
美国食品与农业研究所;
关键词
LSTM; GRU; CNN-LSTM; CNN-GRU; Flood forecasting; NEURAL-NETWORK MODEL; DATA SET; FLOOD; SIMULATION; PREDICTION; UNCERTAINTY; WATER; INUNDATION; FREQUENCY; SANDHILLS;
D O I
10.1016/j.envsoft.2024.106126
中图分类号
TP39 [计算机的应用];
学科分类号
081203 ; 0835 ;
摘要
This study investigates the feasibility of using hybrid models namely Convolutional Neural Network (CNN)-Long Short-Term Memory (LSTM) and Convolutional Neural Network (CNN)-Gated Recurrent Unit (GRU), for short-tomedium range streamflow forecasting in the Mahanadi River basin in India. The performance of these hybrid models is compared with that of standalone models. It investigates the impact of selected parameters and associated time lags on the model performance and offers valuable insights into the use of hybrid models for runoff simulation. The hybrid CNN-LSTM model proves to be robust in capturing the overall time series and the typical high peak flows in both the correlation-based and constant lag cases. Also, the upstream discharges play a significant role in improving the streamflow forecasting. Furthermore, the consideration of all input variables with a constant time lag equal to the basin lag time may yield better flood forecasts, even in cases where computational resources are limited.
引用
下载
收藏
页数:16
相关论文
共 50 条
  • [41] PHILNet: A novel efficient approach for time series forecasting using deep learning
    Jimenez-Navarro, M. J.
    Martinez-Ballesteros, M.
    Martinez-Alvarez, F.
    Asencio-Cortes, G.
    INFORMATION SCIENCES, 2023, 632 : 815 - 832
  • [42] A novel time series forecasting model with deep learning
    Shen, Zhipeng
    Zhang, Yuanming
    Lu, Jiawei
    Xu, Jun
    Xiao, Gang
    NEUROCOMPUTING, 2020, 396 : 302 - 313
  • [43] Using Optimized Deep Learning to Predict Daily Streamflow: A Comparison to Common Machine Learning Algorithms
    Khabat Khosravi
    Ali Golkarian
    John P. Tiefenbacher
    Water Resources Management, 2022, 36 : 699 - 716
  • [44] Using Optimized Deep Learning to Predict Daily Streamflow: A Comparison to Common Machine Learning Algorithms
    Khosravi, Khabat
    Golkarian, Ali
    Tiefenbacher, John P.
    WATER RESOURCES MANAGEMENT, 2022, 36 (02) : 699 - 716
  • [45] Intercomparison of deep learning models in predicting streamflow patterns: insight from CMIP6
    Anwar, Hamid
    Khan, Afed Ullah
    Ullah, Basir
    Taha, Abubakr Taha Bakheit
    Najeh, Taoufik
    Badshah, Muhammad Usman
    Ghanim, Abdulnoor A. J.
    Irfan, Muhammad
    SCIENTIFIC REPORTS, 2024, 14 (01):
  • [46] Partial Mutual Information Based Algorithm For Input Variable Selection For time series forecasting
    Darudi, Ali
    Rczacifar, Shidch
    Bayaz, Mohammd Hossein Javidi Dasht
    2013 13TH INTERNATIONAL CONFERENCE ON ENVIRONMENT AND ELECTRICAL ENGINEERING (EEEIC), 2013, : 313 - 318
  • [47] A novel forecasting strategy for improving the performance of deep learning models
    Livieris, Ioannis E.
    EXPERT SYSTEMS WITH APPLICATIONS, 2023, 230
  • [48] Deep learning models for forecasting aviation demand time series
    Kanavos, Andreas
    Kounelis, Fotios
    Iliadis, Lazaros
    Makris, Christos
    NEURAL COMPUTING & APPLICATIONS, 2021, 33 (23): : 16329 - 16343
  • [49] Review on deep learning models for time series forecasting in industry
    Li X.-R.
    Ban X.-J.
    Yuan Z.-L.
    Qiao H.-R.
    Gongcheng Kexue Xuebao/Chinese Journal of Engineering, 2022, 44 (04): : 757 - 766
  • [50] Deep learning models for forecasting aviation demand time series
    Andreas Kanavos
    Fotios Kounelis
    Lazaros Iliadis
    Christos Makris
    Neural Computing and Applications, 2021, 33 : 16329 - 16343