• Title of article

    Prediction of two-phase mixture density using artificial neural networks

  • Author/Authors

    Lombardi، نويسنده , , C.; Mazzola، نويسنده , , A، نويسنده ,

  • Issue Information
    روزنامه با شماره پیاپی سال 1997
  • Pages
    15
  • From page
    1373
  • To page
    1387
  • Abstract
    In nuclear power plants, the density of boiling mixtures has a significant relevance due to its influence on the neutronic balance, the power distribution and the reactor dynamics. Since the determination of the two-phase mixture density on a purely analytical basis is in fact impractical in many situations of interest, heuristic relationships have been developed based on the parameters describing the two-phase system. However, the best or even a good structure for the correlation cannot be determined in advance, also considering that it is usually desired to represent the experimental data with the most compact equation. A possible alternative to empirical correlations is the use of artificial neural networks, which allow one to model complex systems without requiring the explicit formulation of the relationships existing among the variables. In this work, the neural network methodology was applied to predict the density data of two-phase mixtures up-flowing in adiabatic channels under different experimental conditions. The trained network predicts the density data with a root-me an-square error of 5.33%, being ʹ" 93% of the data points predicted within 10%. When compared with those of two conventional well-proven correlations, i.e. the Zuber-Findlay and the elSE correlations, the neural network performances are significantly better. In spite of the good accuracy of the neural network predictions, the ʹblack-boxʹ characteristic of the neural model does not allow an easy physical interpretation of the knowledge integrated in the network weights. Therefore, the neural network methodology has the advantage of not requiring a formal correlation structure and of giving very accurate results, but at the expense of a loss of model transparency
  • Journal title
    Annals of Nuclear Energy
  • Serial Year
    1997
  • Journal title
    Annals of Nuclear Energy
  • Record number

    405174