Abstract

For implementing data analytic tools in real-world applications, researchers face major challenges such as the complexity of machines or processes, their dynamic operating regimes and the limitations on the availability, sufficiency and quality of the data measured by sensors. The limits on using sensors are often related to the costs associated with them and the inaccessibility of critical locations within machines or processes. Manufacturing processes, as a large group of applications in which data analytics can bring significant value to, are the focus of this study. As the cost of instrumenting the machines in a manufacturing process is significant, an alternative solution which relies solely on product quality measurements is greatly desirable in the manufacturing industry. In this paper, a minimal-sensing framework for machine anomaly detection in multistage manufacturing processes based on product quality measurements is introduced. This framework, which relies on product quality data along with products’ manufacturing routes, allows the detection of variations in the quality of the products and is able to pinpoint the machine which is the cause of anomaly. A moving window is applied to the data, and a statistical metric is extracted by comparing the performance of a machine to its peers. This approach is expanded to work for multistage processes. The proposed method is validated using a dataset from a real-world manufacturing process and additional simulated datasets. Moreover, an alternative approach based on Bayesian Networks is provided and the performance of the two proposed methods is evaluated from an industrial implementation perspective. The results showed that the proposed similarity-based approach was able to successfully identify the root cause of the quality variations and pinpoint the machine that adversely impacted the product quality.

Highlights

  • The complexity of manufacturing processes presents a major challenge for understanding the variations in the process and minimizing them to reach consistent quality of the products.Recent advancements in technology, provides significant opportunities for manufacturers to create value by implementing Internet of Things (IoT) and big data analytic tools and move towards smart enterprises with increased efficiency and profitability

  • A gamma distribution was fit to the data for each variable within a moving time window

  • Using the method described above, a metric was calculated for each variable to represent the the method described above, a metric was calculated for each variable to represent the performance performance of each machine in a stage compared to its peers producing the same product

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Summary

Introduction

Provides significant opportunities for manufacturers to create value by implementing Internet of Things (IoT) and big data analytic tools and move towards smart enterprises with increased efficiency and profitability. From a manufacturing perspective, such trend is driving the manufacturers to improve their product quality and productivity by deploying advanced and reliable manufacturing process monitoring systems. Machines 2018, 6, 1 recent advances in modern manufacturing with regard to intelligent maintenance, scheduling and control is provided in [1]. An increasing number of researchers have focused on the development of data-driven monitoring systems for manufacturing processes [3,4,5,6,7,8]. A comprehensive review of the current methodologies for quality control in multistage systems is provided in [9]

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