• Title of article

    Dam Seepage Prediction Using RBF and GFF Models of Artificial Neural Network; Case Study: Boukan Shahid Kazemi's Dam

  • Author/Authors

    Parsa, J Water Engineering Department - Faculty of Agriculture - University of Tabriz - Tabriz, Iran , Emami, S Water Engineering Department - Faculty of Agriculture - University of Tabriz - Tabriz, Iran , Choopan, Y Water Engineering Department - Faculty of Agriculture - University of Gorgan - Gorgan, Iran

  • Pages
    18
  • From page
    15
  • To page
    32
  • Abstract
    Dams have been always considered as the important infrastructures and their critical values measured. Hence, evaluation and avoidance of dams’ destruction have a specific importance. In this study seepage of the embankmentof Boukan Shahid Kazemi’s dam in Iran has been analyzed via RBF (radial basis function network) and GFF (Feed-Forward neural networks) models of Artificial Neural Network (ANN). RBF and GFF of ANN models were trained and verified using each piezometer’s data and the water levels difference of the dam. To achieve this goal,based on the number of data and inputs,864piezometric data set were used, of which 80% (691 data) was used for the training and 20% (174 data) for the testing the network.The results showed good agreement between observed and predicted values and concluded the RBF model has high potential in estimating seepage with Levenberg Marquardt training and 4 hidden layers. Also the values of statistical parameters R2 and RMSE were 0.81 and the 33.12.
  • Keywords
    Boukanshahidkazemi's Dam , Gff Model , Rbf Model , Ann , Embankment Dam Seepage
  • Journal title
    Astroparticle Physics
  • Serial Year
    2019
  • Record number

    2467774