Abstract

• Proposes a MES based data-driven algorithm to predict throughput bottlenecks. • Devised an approach to determine the size historical machine data to predict bottlenecks. • Proposes an evaluation framework to evaluate the algorithm performance. • Compared the performance of the algorithm with naïve bottleneck prediction method. • Proposed algorithm outperformed naïve method of bottleneck prediction. Smart manufacturing is reshaping the manufacturing industry by boosting the integration of information and communication technologies and manufacturing process. As a result, manufacturing companies generate large volumes of machine data which can be potentially used to make data-driven operational decisions using informative computerized algorithms. In the manufacturing domain, it is well-known that the productivity of a production line is constrained by throughput bottlenecks. The operational dynamics of the production system causes the bottlenecks to shift among the production resources between the production runs. Therefore, prediction of the throughput bottlenecks of future production runs allows the production and maintenance engineers to proactively plan for resources to effectively manage the bottlenecks and achieve higher throughput. This paper proposes an active period based data-driven algorithm to predict throughput bottlenecks in the production system for the future production run from the large sets of machine data. To facilitate the prediction, we employ an auto-regressive integrated moving average (ARIMA) method to predict the active periods of the machine. The novelty of the work is the integration of ARIMA methodology with the data-driven active period technique to develop a bottleneck prediction algorithm. The proposed prediction algorithm is tested on real-world production data from an automotive production line. The bottleneck prediction algorithm is evaluated by treating it as a binary classifier problem and adapted the appropriate evaluation metrics. Furthermore, an attempt is made to determine the amount of past data needed for better forecasting the active periods.

Highlights

  • Digital Manufacturing and Industrial Internet of Things (IIoT) are new emerging technologies to increase the productivity in manufacturing (Lee, Lapira, Bagheri, & Kao, 2013)

  • A data-driven algorithm is proposed to predict the throughput bottlenecks in a production system based on the active periods of the machines

  • The inputs to the algorithm are the states of the machines and the corresponding time stamps of those states across different production runs

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Summary

Introduction

Digital Manufacturing and Industrial Internet of Things (IIoT) are new emerging technologies to increase the productivity in manufacturing (Lee, Lapira, Bagheri, & Kao, 2013). With the exponential growth in the data acquired from the machines, new opportunities emerge to leverage data science to enhance the state of manufacturing and enable more data-driven decision making (Shao, Shin, & Jain, 2015) To enable such data-driven decision making, companies need informative analytical algorithms to turn high volumes of fast-moving data into meaningful insights (Lavalle, Lesser, Shockley, Hopkins, & Kruschwitz, 2011; Bokrantz, Skoogh, Berlin, & Stahre, 2017). This necessitates research into data analytics which can enable efficient and effective extraction of information from the raw data to derive new knowledge and insights, which can further be applied to introduce intelligence into the control of production processes and can improve the system-level operation of manufacturing enterprises (Wuest et al, 2016)

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