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A Multistep Prediction of Hydropower Station Inflow Based on Bagging-LSTM Model
2021
Discrete Dynamics in Nature and Society
The inflow forecasting is one of the most important technologies for modern hydropower station. Under the joint influence of soil, upstream inflow, and precipitation, the inflow is often characterized by time lag, nonlinearity, and uncertainty and then results in the difficulty of accurate multistep prediction of inflow. To address the coupling relationship between inflow and the related factors, this paper proposes a long short-term memory deep learning model based on the Bagging algorithm
doi:10.1155/2021/1031442
fatcat:uabliba7tbhhxifie4ljfcn5mq