Journal of Changjiang River Scientific Research Institute ›› 2025, Vol. 42 ›› Issue (4): 80-86.DOI: 10.11988/ckyyb.20240008

• Water Resources • Previous Articles     Next Articles

LSTM-based Prediction of Short-term Water Level for Three Gorges and Gezhouba Cascade Powerplants

WANG Tao1,2(), XU Yang1,2, CAO Hui1,2(), LIU Ya-xin1,2, MA Hao-yu1,2, ZHANG Zheng1,2, XIE Shuai3, CHANG Xin-yu4   

  1. 1 Hubei Provincial Key Laboratory of Smart Yangtze River and Hydropower Science,China Yangtze Power;Co.,Ltd.,Yichang 443000,China
    2 Cascade Dispatching Communication Center for the Three Gorges Project,China Yangtze Power Co., Ltd., Yichang 443000,China
    3 Water Resources Department, Changjiang RiverScientific Research Institute, Wuhan 430000,China
    4 School of Civil and Hydraulic Engineering, HuazhongUniversity of Science and Technology, Wuhan 430000,China
  • Received:2024-01-03 Revised:2024-02-21 Published:2025-04-01 Online:2025-04-01
  • Contact: CAO Hui

Abstract:

Water level prediction for the Three Gorges-Gezhouba cascade hydropower stations is crucial for their safe and stable operation and overall benefits. Nevertheless, due to the combined effects of multiple factors, such as the complex transformation between dynamic and static storage-capacity calculations and the unsteady flow downstream of the stations, traditional methods struggle to accurately predict short-term water levels. When the stations perform peak-shaving and frequency-regulation tasks under complex operating conditions, there is a risk of violating scheduling regulations and opening the gates, which may lead to engineering safety hazards and economic losses. In this study, we employed the Long Short-Term Memory (LSTM) deep-learning method to develop an ultra-short-term water-level prediction model for the Three Gorges-Gezhouba Hydropower Stations. We utilized water-level, inflow, and output data to forecast the ultra-short-term water-level processes of the stations. Subsequently, we analyzed the prediction accuracy of the model using data from peak-shaving scenarios. The results show that the model exhibits high overall accuracy, stability, and adaptability, and maintains stable prediction accuracy under different peak-shaving conditions. However, the prediction results tend to be homogenized at extreme water levels. The average error of 24-hour water-level prediction for the upstream of the Three Gorges and Gezhouba is less than 0.05 m. These findings can offer technical support for the refined scheduling of cascade hydropower stations.

Key words: water level prediction, cascade powerplant, LSTM, Three Gorges powerplant, Gezhouba powerplant, error analysis

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