Journal of Enterprise and Business Intelligence


Standards for Enabling Integration and Interoperability in Smart Manufacturing



Journal of Enterprise and Business Intelligence

Received On : 05 April 2024

Revised On : 20 May 2024

Accepted On : 30 May 2024

Published On : 05 October 2024

Volume 04, Issue 04

Pages : 223-231


Abstract


This study focuses on the significance of standards in facilitating the integration and interoperability within the realm of smart manufacturing. The integration of information communication technology with the manufacturing sector, often known as smart manufacturing, presents novel prospects for the efficient allocation of production resources and the implementation of predictive maintenance strategies. Nevertheless, a notable deficiency exists in terms of complete standards that establish the defining attributes, technology, and facilitating elements of smart manufacturing. This article emphasizes the need of implementing cross-manufacturer standards, worldwide standardization activities, and standards pertaining to product lifecycle management and manufacturing processes. The paper also examines the significance of standards in facilitating data sharing, equipment connectivity, and product inspection within the context of smart manufacturing. The study highlights the significance of a set of standardized protocols that can effectively interoperate with one another, hence enabling efficient interchange of product data and promoting the seamless integration of intelligent manufacturing systems.


Keywords


Smart Manufacturing, Product Lifecycle Management, Manufacturing Processes, Data Exchange, Equipment Communication, Product Inspection.


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Acknowledgements


Author(s) thanks to Dr. Anandakumar Haldorai for this research completion and support.


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Cite this article


Karthikeyan K and Anandakumar Haldorai, “Standards for Enabling Integration and Interoperability in Smart Manufacturing”, Journal of Enterprise and Business Intelligence, vol.4, no.4, pp. 223-231, October 2024. doi: 10.53759/5181/JEBI202404023.


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© 2024 Karthikeyan K and Anandakumar Haldorai. This is an open access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.