An EWMA chart for high dimensional process with multi-class out-of-control information via random forest learning

  • Mingze Sun
  • , Lei Qian
  • , Amitava Mukherjee
  • , Dongdong Xiang*
  • *Corresponding author for this work

Research output: Contribution to journalArticlepeer-review

9 Scopus citations

Abstract

Modern manufacturing and quality monitoring involve multi-class out-of-control (OOC) information from the training sample. It is essential to use such information during online monitoring of data streams from complex processes. In this paper, a monitoring framework is designed by combining the random forest technique with the exponentially weighted moving average method for monitoring complex processes with multi-class OOC information. To be specific, a process surveillance technique in the form of a control chart is proposed based on the probability that the online data is classified as an in-control (IC) sample, and the control chart triggers an alarm when the probability is lower than the control limit. Our numerical findings based on the Monte–Carlo simulation show that the proposed control chart performs more effectively than its competitors under various distributions and data types, especially for high-dimensional cases when multi-class OOC information is known in advance. Moreover, the proposed method is illustrated with an application using the data related to the hard disk manufacturing processes.

Original languageEnglish
Pages (from-to)722-748
Number of pages27
JournalQuality Technology and Quantitative Management
Volume21
Issue number5
DOIs
StatePublished - 2024

Keywords

  • Complex process
  • MEWMA
  • random forest
  • statistical process control

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