• Title of article

    Online Mean Shift Detection in Multivariate Quality Control Using Boosted Decision Tree learnings

  • Author/Authors

    Asadi ، Abbas Abbas - Islamic Azad University , Farjami ، Yaghoub - University of Qom

  • Pages
    26
  • From page
    81
  • To page
    106
  • Abstract
    The rapid development of communication technologies and information and online computers and their usage in processes of the industrial production have facilitated simultaneous monitoring of multiple variables (characteristics) in a process. In this work, we applied boosted decision tree ( DT_boost) and Monte Carlo simulation to propose an efficient method for detecting incontrol and outofcontrol states in multivariate control processes.In this work, four classifiers (methods) χ_¯X^2, χ_(X_new)^2, DT_(χ^2 ), T_c– are used for detecting the process control states. Then, with converting detection results these four classifiers, the boosted decision tree is made and provides the ultimate result as the incontrol or the outofcontrol states. To show how the proposed model works and the superiority of this method over χ_¯X^2, χ_(X_new)^2, DT_(χ^2 ), andT_cmethods, we run it on a standardized trivariate normal process. To compare and evaluate the performance of classifiers, we used ARL functions and the evaluation measures including Accuracy (ACC), Sensitivity (TPR), Specificity (SPC), and Precision (PPV).The findings not only showed the superiority of the proposed method over the tradition Chisquare but also confirmed former results on the efficiency of decision tree for rapid detecting of mean shifts in multivariate processes in which data are gathered automatically.
  • Keywords
    Multivariate quality control , mean shift detection , boosted decision tree learning , moving window
  • Journal title
    Journal of System Management
  • Serial Year
    2019
  • Journal title
    Journal of System Management
  • Record number

    2468972