Abstract

In the manufacturing industry, the process capability index (Cpk) measures the level and capability required to improve the processes. However, the Cpk is not enough to represent the process capability and performance of the manufacturing processes. In other words, considering that the smart manufacturing environment can accommodate the big data collected from various facilities, we need to understand the state of the process by comprehensively considering diverse factors contained in the manufacturing. In this paper, a two-stage method is proposed to analyze the process quality performance (PQP) and predict future process quality. First, we propose the PQP as a new measure for representing process capability and performance, which is defined by a composite statistical process analysis of such factors as manufacturing cycle time analysis, process trajectory of abnormal detection, statistical process control analysis, and process capability control analysis. Second, PQP analysis results are used to predict and estimate the stability of the production process using a long short-term memory (LSTM) neural network, which is a deep learning algorithm-based method. The present work compares the LSTM prediction model with the random forest, autoregressive integrated moving average, and artificial neural network models to convincingly demonstrate the effectiveness of our proposed approach. Notably, the LSTM model achieved higher accuracy than the other models.

Highlights

  • The fourth industrial revolution (Industry 4.0) refers to the current trend of automation and data exchange in the manufacturing industry

  • We have proposed a method for predicting process quality performance (PQP) using statistical analysis and long short-term memory

  • We have demonstrated that long short-term memory (LSTM), a deep learning algorithm-based method, can evaluate the stability of the production process with the highest accuracy compared with other state-of-the-art artificial neural network (ANN), Random Forest (RF), and ANN methods

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Summary

Introduction

The fourth industrial revolution (Industry 4.0) refers to the current trend of automation and data exchange in the manufacturing industry. A huge increase in data volume has created a new paradigm in product quality management and predictive maintenance [5]. Consider a manufacturing environment where most facilities repeatedly and periodically make the same products with certain properties In this case, several process condition variables represent these properties that are used collectively to determine facilities’ process capability and performance. We can collect process condition variables over time by monitoring the states of product manufacturing and use these variables to predict possible failures, process capability, and performance in the future. LSTM is especially appealing for predictive maintenance because it is suitable for learning complex sequences and functions over longer periods of time to detect failure patterns [17]. We propose a methodology for predicting process quality performance (PQP) using statistical analysis and LSTM.

Literature Review
Manufacturing Cycle Time Analysis
PPrrocess Trajectory of Abnormal Detection
Statistical Process Control Analysis
Process Capability Control Analysis
Long Short-Term Memory
Softmax Classification
Evaluation Metrics
Results
Result of Composite Statistical Analysis Using PPD
Result of Model Comparison
Conclusions
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