• Title of article

    Variance decomposition-based sensitivity analysis via neural networks

  • Author/Authors

    Marseguerra، نويسنده , , Marzio and Masini، نويسنده , , Riccardo and Zio، نويسنده , , Enrico and Cojazzi، نويسنده , , Giacomo، نويسنده ,

  • Issue Information
    روزنامه با شماره پیاپی سال 2003
  • Pages
    10
  • From page
    229
  • To page
    238
  • Abstract
    This paper illustrates a method for efficiently performing multiparametric sensitivity analyses of the reliability model of a given system. These analyses are of great importance for the identification of critical components in highly hazardous plants, such as the nuclear or chemical ones, thus providing significant insights for their risk-based design and management. The technique used to quantify the importance of a component parameter with respect to the system model is based on a classical decomposition of the variance. When the model of the system is realistically complicated (e.g. by aging, stand-by, maintenance, etc.), its analytical evaluation soon becomes impractical and one is better off resorting to Monte Carlo simulation techniques which, however, could be computationally burdensome. Therefore, since the variance decomposition method requires a large number of system evaluations, each one to be performed by Monte Carlo, the need arises for possibly substituting the Monte Carlo simulation model with a fast, approximated, algorithm. Here we investigate an approach which makes use of neural networks appropriately trained on the results of a Monte Carlo system reliability/availability evaluation to quickly provide with reasonable approximation, the values of the quantities of interest for the sensitivity analyses. The work was a joint effort between the Department of Nuclear Engineering of the Polytechnic of Milan, Italy, and the Institute for Systems, Informatics and Safety, Nuclear Safety Unit of the Joint Research Centre in Ispra, Italy which sponsored the project.
  • Keywords
    Sensitivity analysis , NEURAL NETWORKS , Monte Carlo
  • Journal title
    Reliability Engineering and System Safety
  • Serial Year
    2003
  • Journal title
    Reliability Engineering and System Safety
  • Record number

    1571218