• Title of article

    Prediction of Dispersed Phase Holdup in the Kühni Extraction Column Using a New Experimental Correlation and Artificial Neural Network

  • Author/Authors

    Keshavarz ، Mohsen School of Chemical, Petroleum, and Gas Engineering - Iran University of Science and Technology , Ghaemi ، Ahad School of Chemical Engineering - Iran University of Science and Technology , Shirvani ، Mansour School of Chemical Engineering - Iran University of Science and Technology , Arab ، Ebrahim School of Chemical Engineering - Iran University of Science and Technology

  • Pages
    21
  • From page
    85
  • To page
    105
  • Abstract
    In this work, the dispersed phase holdup in a Kühni extraction column is predicted using intelligent methods and a new empirical correlation. Intelligent techniques, including multilayer perceptron and radial basis functions network are used in the prediction of the dispersed phase holdup. To design the network structure and train and test the networks, 174 sets of experimental data are used. The effects of rotor speed and the flow rates of the dispersed and continuous phases on the dispersed phase holdup are experimentally investigated, and then the artificial neural networks are designed. Performance evaluation criteria consisting of R², RMSE, and AARE are used for the models. The RBF method with R2, RMSE, and AARE respectively equal to 0.9992, 0.0012, and 0.9795 is the best model. The results show that the RBF method well matches the experimental data with the lowest absolute percentage error (2.1917%). The rotor speed has the most significant effect on the dispersed phase holdup comparing to the flow rates of the continuous and dispersed phases.
  • Keywords
    Solvent extraction , Dispersed Phase Holdup , Multilayer Perceptron , radial basis function
  • Journal title
    Iranian Journal of Oil and Gas Science and Technology
  • Serial Year
    2019
  • Journal title
    Iranian Journal of Oil and Gas Science and Technology
  • Record number

    2484124