Journal of Hydroinformatics (Sep 2023)

Data-driven modeling of sluice gate flows using a convolutional neural network

  • Xiaohui Yan,
  • Yan Wang,
  • Boyuan Fan,
  • Abdolmajid Mohammadian,
  • Jianwei Liu,
  • Zuhao Zhu

DOI
https://doi.org/10.2166/hydro.2023.200
Journal volume & issue
Vol. 25, no. 5
pp. 1629 – 1647

Abstract

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Predicting the flow field around sluice gates is essential for controlling water levels and discharges in open channels and rivers. Smooth particle hydrodynamics (SPH) models can satisfactorily reproduce such free-surface flows, but they typically require long computational time and extensive computational resources. In this work, we propose a convolutional neural network (CNN) to predict the flow field around a sluice gate. A validated SPH model is used to carry out extensive simulations, and the generated data set is used to train and test CNN-based models. The results demonstrated that the developed CNN can accurately reproduce sluice gate flows, with R2 values exceeding 90% and significantly reducing the computational costs. Furthermore, various traditional machine learning algorithms comprising adaptive neuro-fuzzy inference system, genetic programing, multigene genetic programing, and one-dimensional CNN were also evaluated, and a comparison of the results showed that the developed CNN performed better than the traditional data-driven algorithms in predicting sluice gate flows. Therefore, the proposed method is a promising tool for providing rapid prediction of the spatial distribution of flow fields near the sluice, and potentially for predicting other spatially distributed hydrologic variables. HIGHLIGHTS We developed a parameter-based convolutional neural network to predict the flow field around sluice gates.; Smooth particle hydrodynamics results were utilized to train, validate, and test the developed algorithm.; The developed model can accurately reproduce sluice gate flows and performed better than traditional data-driven algorithms.;

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