• Author/Authors

    Hamza Albazzaz، نويسنده , , Xue Z. Wang and Fatma Marhoon، نويسنده ,

  • DocumentNumber
    1384654
  • Title Of Article

    Multidimensional visualisation for process historical data analysis: a comparative study with multivariate statistical process control

  • شماره ركورد
    11294
  • Latin Abstract
    This paper describes a comparative study of a multidimensional visualisation technique and multivariate statistical process control (MSPC) for process historical data analysis. The visualisation technique uses parallel coordinates which visualise multidimensional data using two dimensional presentations and allow identification of clusters and outliers, therefore, can be used to detect abnormal events. The study is based on a database covering 527 days of operation of an industrial wastewater treatment plant. It was found that both the visualisation technique and MSPC based on T 2 chart captured the same 17 days as ‘‘clearly abnormal’’ and another eight days as ‘‘likely abnormal’’. Pattern recognition using K-means clustering was also applied to the same data in literature and was found to have identified 14 out of the 17 ‘‘clearly abnormal’’ days.
  • From Page
    285
  • NaturalLanguageKeyword
    Fault diagnosis , Multivariate statistical process control , Multidimensional visualisation , Parallel coordinates , wastewater treatment plant
  • JournalTitle
    Studia Iranica
  • To Page
    294
  • To Page
    294