Deep learning-based streamflow prediction for western Himalayan river basins

被引:1
|
作者
Majeed, Tabasum [1 ]
Mir, Riyaz Ahmad [2 ]
Dar, Rayees Ahmad [1 ]
Haq, Mohd Anul [3 ]
Rasool, Shabana Nargis [4 ]
Assad, Assif [1 ]
机构
[1] Islamic Univ Sci & Technol, Dept Comp Sci & Engn, Awantipora, Kashmir, India
[2] Natl Inst Hydrol, Western Himalayan Reg Ctr, Jammu, Jammu & Kashmir, India
[3] Majmaah Univ, Coll Comp & Informat Sci, Dept Comp Sci, Al Majmaah, Saudi Arabia
[4] Islamic Univ Sci & Technol, Dept Comp Sci, Awantipora, Kashmir, India
关键词
Streamflow; Prediction; Deep learning; N-BEATS; Western Himalayan; River basins; ARTIFICIAL NEURAL-NETWORKS; SUPPORT VECTOR MACHINES; GLACIER MELT; RUNOFF; MODEL; GROUNDWATER; THICKNESS; SYSTEM; WATER; SNOW;
D O I
10.1007/s13198-024-02403-x
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
Accurate streamflow (Qflow) forecasting plays a pivotal role in water resource monitoring and management, presenting a complex challenge for water managers and engineers. Effective streamflow prediction enables the optimized operation of water resource systems in alignment with technological, financial, ethical, and political objectives. Traditional data-driven models like the Autoregressive model and Autoregressive Moving Average model are widely used for water resource management. However, these models show limitations in handling intricate nonlinear hydrological phenomena. To address these limitations, Deep Learning models emerge as promising alternatives, given their inherent ability to handle nonlinearity. Nonlinearity in time series modeling is formidable due to factors like long-term trends, seasonal variations, cyclical oscillations, and external disturbances. This study proposes a deep neural network architecture based on Neural Basis Expansion Analysis for Time Series (N-BEATS) to predict the daily Qflow of western Himalayan river basins. The study employs datasets collected from the Rampur station of the Satluj basin and the Pandoh and Manali stations of the Beas basin. The experimental results unequivocally demonstrate the superiority of the proposed deep neural network model over benchmarked conventional deep learning models such as Long Short-Term Memory, Feedforward Neural Network, Gated Recurrent Unit, and Recurrent Neural Network. The proposed deep neural network model achieves remarkable accuracy, exhibiting a root mean square error below 0.05 m3/s when comparing actual and predicted Qflow values across all datasets. Consequently, the proposed deep neural network model based on N-BEATS emerges as an efficient and invaluable solution for precise Qflow prediction, empowering efficient water resource management and control. The results suggest that the proposed model can serve for streamflow prediction and water management in Himalayan river basins.
引用
收藏
页数:14
相关论文
共 50 条
  • [21] Comparative Evaluation of Deep Learning Techniques in Streamflow Monthly Prediction of the Zarrine River Basin
    Nakhaei, Mahdi
    Zanjanian, Hossein
    Nakhaei, Pouria
    Gheibi, Mohammad
    Moezzi, Reza
    Behzadian, Kourosh
    Campos, Luiza C.
    WATER, 2024, 16 (02)
  • [22] Streamflow Prediction Using Deep Learning Neural Network: Case Study of Yangtze River
    Liu, Darong
    Jiang, Wenchao
    Mu, Lin
    Wang, Si
    IEEE ACCESS, 2020, 8 : 90069 - 90086
  • [23] Prediction of Yangtze River streamflow based on deep learning neural network with El Niño–Southern Oscillation
    Si Ha
    Darong Liu
    Lin Mu
    Scientific Reports, 11
  • [24] Prediction of Yangtze River streamflow based on deep learning neural network with El Nino-Southern Oscillation
    Ha, Si
    Liu, Darong
    Mu, Lin
    SCIENTIFIC REPORTS, 2021, 11 (01)
  • [25] Machine Learning and Deep Learning-Based Students’ Grade Prediction
    Korchi A.
    Messaoudi F.
    Abatal A.
    Manzali Y.
    Operations Research Forum, 4 (4)
  • [26] A deep learning-based hybrid method for PM2.5 prediction in central and western China
    Zuhan Liu
    Zihai Fang
    Yuanhao Hu
    Scientific Reports, 15 (1)
  • [27] A deep learning-based hybrid approach for multi-time-ahead streamflow prediction in an arid region of Northwest China
    Fang, J. J.
    Yang, Linshan
    Wen, Xiaohu
    Li, Weide
    Yu, Haijiao
    Zhou, Ting
    HYDROLOGY RESEARCH, 2024, 55 (02): : 180 - 204
  • [28] Evaluation of Deep Learning-based prediction models in Microgrids
    Gyoeri, Alexey
    Niederau, Mathis
    Zeller, Violett
    Stich, Volker
    2019 IEEE CONFERENCE ON ENERGY CONVERSION (CENCON), 2019, : 95 - 99
  • [29] A Deep learning-based rainfall prediction for flood management
    Babar, Mohammad
    Rani, Maneeha
    Ali, Ihtisham
    2022 17TH INTERNATIONAL CONFERENCE ON EMERGING TECHNOLOGIES (ICET'22), 2022, : 196 - 199
  • [30] Deep Learning-Based Traffic Prediction for Network Optimization
    Troia, Sebastian
    Alvizu, Rodolfo
    Zhou, Youduo
    Maier, Guido
    Pattavina, Achille
    2018 20TH ANNIVERSARY INTERNATIONAL CONFERENCE ON TRANSPARENT OPTICAL NETWORKS (ICTON), 2018,