Affiliation:
1. Department of Computer Science and System Engineering, University of Zaragoza, 50018 Zaragoza, Spain
2. Departament of Computer Engineering (DISCA), Universitat Politècnica de València, 46022 Valencia, Spain
Abstract
Proprietary systems used to modernize Industry 4.0 usually involve high financial costs. Consequently, using low-cost devices with the same functionalities, capable of replacing these proprietary systems but at a lower cost, has become an incipient trend. However, these low-cost devices usually come with electromagnetic interference problems as they are encapsulated in electrical panels, sitting alongside electromechanical devices. In this article, we present Mode Binary Search, an algorithm specifically designed for use in a low-cost automated-industrial-productivity-data-collection system. Specifically, productivity data are obtained from the availability and sealing signals of the thermoplastic sealing machines in production lines belonging to the agri-food industry. Mode Binary Search was designed to cluster sealing signals, thus enabling us to identify which products have been made. Furthermore, the algorithm determines when the manufacturing of each product starts and ends, in other words, the exact moment a product change occurs and all this without the need for operator supervision or intervention. Finally, we compared our algorithm, based on binary search, with three clustering mechanisms: k-means, k-rms and x-means. Out of all the cases we analyzed, the maximum error committed by Mode Binary Search is limited to 2.69%, thereby outperforming all others.
Subject
Electrical and Electronic Engineering,Computer Networks and Communications,Hardware and Architecture,Signal Processing,Control and Systems Engineering
Reference20 articles.
1. Industry 4.0 Implementation Challenges and Opportunities: A Managerial Perspective;Bajic;IEEE Syst. J.,2021
2. Driving forces and barriers of Industry 4.0: Do multinational and small and medium-sized companies have equal opportunities?;Technol. Forecast. Soc. Chang.,2019
3. Nakajima, S. (1988). Introduction to TPM: Total Productive Maintenance, Productivity Press.
4. Herrero, A.C., Martinez, F.J., Garrido, P., Sanguesa, J.A., and Calafate, C.T. (2020, January 18–21). An interference-resilient IIoT solution for measuring the effectiveness of industrial processes. Proceedings of the 46th Annual Conference of the IEEE Industrial Electronics Society (IECON), Singapore.
5. Mitigating Electromagnetic Noise When Using Low-Cost Devices in Industry 4.0;Herrero;IEEE Access,2021