Abstract

Control charts are an important tool in statistical process control (SPC). They have been commonly used for monitoring process variation in many industries. Recognition of non-random patterns is an important task in SPC. The presence of non-random patterns implies that a process is affected by certain assignable causes, and some corrective actions should be taken. In recent years, a great deal of research has been devoted to the application of machine learning (ML) based approaches to control chart pattern recognition (CCPR). However, there are some gaps that hinder the application of the CCPR methods in practice. In this study, we applied a control chart pattern recognition method based on an end-to-end one-dimensional convolutional neural network (1D CNN) model. We proposed some methods to generate datasets with high intra-class diversity aiming to create a robust classification model. To address the data scarcity issue, some data augmentation operations suitable for CCPR were proposed. This study also investigated the usefulness of transfer learning techniques for the CCPR task. The pre-trained model using normally distributed data was used as a starting point and fine-tuned on the unknown non-normal data. The performance of the proposed approach was evaluated by real-world data and simulation experiments. Experimental results indicate that our proposed method outperforms the traditional machine learning methods and could be a promising tool to effectively classify control chart patterns. The results and findings of this study are crucial for the further realization of smart statistical process control.

Highlights

  • Control charts are an important tool in statistical process control (SPC) used to determine if a manufacturing or business process is in a state of statistical control

  • The TSF was implemented in sktime—a scikit-learn compatible Python library for machine learning with time series [53]

  • We proposed a method based on 1D convolutional neural network (CNN) to classify control chart patterns

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Summary

Introduction

Control charts are an important tool in statistical process control (SPC) used to determine if a manufacturing or business process is in a state of statistical control. When a non-random pattern appears in the control chart, it means that one or more assignable causes which will gradually degrade the process quality exist. The importance of nonrandom pattern lies in the fact that it can provide relevant information about process diagnosis. Montgomery [1] pointed out that every non-random pattern can be mapped to a set of assignable causes. If the pattern type can be correctly recognized and identified, it will help to diagnose the possible causes of the manufacturing process problem. Some real-world examples that used non-random patterns to identify potential causes can be found in [2,3]

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