Utilizing Edge Computing for Monitoring Plant Productivity in Print Industry

Authors

  • Vladimir Stanisavljević University North, Croatia

Keywords:

Internet of Things, edge computing, print industry, Industry 4.0, data aggregation, multi-source data

Abstract

Automated monitoring of a whole production plant, equipped with a variety of different machines is a challenging task. Particular industries are introducing their own XML based schemas to ease the integration process. Print industry attempts to accomplish this with Job Description Format (JDF). However, a number of older print industry machines is rarely ready for such an integration. For integrating a real production plant, here is proposed a novel approach in utilizing a concept from Internet of Things (IoT) called edge computing, to enhance and integrate various printing and finishing equipment status in a unified manner. Edge computing assumes that a lot of processing is on a remote node and that the data is eventually aggregated to another location. For edge nodes small board computers (SBC) with wireless connectivity were used to collect data from machine sensors and store it locally. The data collected on the edge indicates status and operational speed over time of a machine and could be used for various analysis later. Edge node stores all data to a local database that could be accessed remotely or the node could be converted to a JDF compliant producer. The data from edges is then collected to establish a plant wide monitoring system that is a part of management information system. The concept presented here was successfully implemented in a real production environment.

Creative Commons License
This work is licensed under a Creative Commons Attribution-NonCommercial 4.0 International License.

References

Bagui, S., Nguyen, L. T. (2015), “Database sharding: to provide fault tolerance and scalability of big data on the cloud”, International Journal of Cloud Applications and Computing (IJCAC), Vol. 5, No. 2, pp. 36-52.

Hajibaba, M., Gorgin, S. (2014), “A Review on Modern Distributed Computing Paradigms - Cloud Computing, Jungle Computing and Fog Computing”, Journal of computing and information technology, Vol. 22, No. 2, pp. 69-84.

Karanikolas, N. N. (2007), “Low cost, cross-language and cross-platform Information Retrieval and Documentation tools”, Journal of computing and information technology, Vol. 15, No. 1, pp. 71-84.

Severance, C. (2013), “Eben Upton: Raspberry Pi”, Computer, Vol. 46, No. 10, pp. 14-16.

Vijayasanthi, M., Jayachandra, S. (2018), “IOT: An Overview on Internet of Restorative Things”, in the Proceedings of the 2018 IADS International Conference on Computing, Communications & Data Engineering (CCODE).

Zeid, A., Sundaram, S., Moghaddam, M., Kamarthi, S., Marion, T. (2019), “Interoperability in Smart Manufacturing: Research Challenges”, Machines, Vol. 7, No. 2.

Downloads

Published

2019-10-31

How to Cite

Stanisavljević, V. (2019). Utilizing Edge Computing for Monitoring Plant Productivity in Print Industry. ENTRENOVA - ENTerprise REsearch InNOVAtion, 5(1), 60–67. Retrieved from https://hrcak.srce.hr/ojs/index.php/entrenova/article/view/13731

Issue

Section

Mathematical and Quantitative Methods