Abstract

A statistical process control (SPC) chart is one of the most important techniques for monitoring a process. Typically, a certain root cause or a disturbance in a process would result in the presence of a systematic control chart pattern (CCP). Consequently, the effective recognition of CCPs has received considerable attention in recent years for their potential use in improving process quality. However, most studies have focused on the recognition of CCPs for SPC applications alone. Specifically, even though numerous studies have addressed the increased use of the SPC and engineering process control (EPC) mechanisms, very little research has discussed the recognition of CCPs for multiple-input multiple-output (MIMO) systems. It is much more difficult to recognize the CCPs of an MIMO system since two or more disturbances are simultaneously involved in the process. The purpose of this study is thus to propose several machine learning (ML) classifiers to overcome the difficulties in recognizing CCPs in MIMO systems. Because of their efficient and fast algorithms and effective classification performance, the considered ML classifiers include an artificial neural network (ANN), support vector machine (SVM), extreme learning machine (ELM), and multivariate adaptive regression splines (MARS). Furthermore, one problem may arise due to the existence of embedded mixture CCPs (MCCPs) in MIMO systems. In contrast to using typical process outputs alone in a classifier, this study employs both process outputs and EPC compensation to ensure the effectiveness of CCP recognition. Experimental results reveal that the proposed classifiers are able to effectively recognize MCCPs for MIMO systems.

Highlights

  • Because of their ability to detect disturbances, statistical process control (SPC) charts are widely used in monitoring industrial processes

  • In [19], their control chart pattern (CCP) recognition designs were associated with engineering process control (EPC) actions, they only implemented their designs for a univariate SPC-EPC system

  • When an MSPC signal is triggered, remedial actions that include the recognition of CCPs, determination of faults, and removal of the root causes should be taken to stabilize the process and return to in control conditions

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Summary

Introduction

Because of their ability to detect disturbances, statistical process control (SPC) charts are widely used in monitoring industrial processes. A process is considered to be out of control when systematic patterns are exhibited in SPC charts [1,2]. Disturbances contribute to the presence of systematic control chart patterns (CCPs) for a process. Because it is important for process personnel to determine root causes for process improvement, many studies have discussed the effectiveness of CCP recognition through various machine learning (ML) mechanisms. ANNs were employed to identify a set of subclasses of abnormal multivariate CCPs, and the χ2 statistic served as the input to the ANNs. the proposed mechanism was evaluated for a real case study, and good results were reported. In [8], a hybrid

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