Abstract
Integrating production and maintenance planning is challenging. Many companies follow a planned maintenance approach that relies on maintenance intervals proposed by the original equipment manufacturer (OEM). As the latter are estimated in a rather conservative manner to avoid reliability guarantees, valuable production time is lost due to unnecessary maintenance actions. Principles and technologies of Industry 4.0 (I4.0) enable companies to gain visibility of their processes and support the planning and scheduling functions with real-time data. We propose a framework for building an integrated smart production and condition-based maintenance (CBM) planning and scheduling system incorporating I4.0 components that increase valuable production time while keeping the shop floor in best condition. We discuss specific challenges that should motivate for more research.
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Notes
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https://www.iso.org/standard/55088.html, last call 06.05.2023.
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https://www.iso.org/standard/21832.html, last call 06.05.2023.
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https://webstore.ansi.org/standards/tappi/tappitip0305342008, last call 06.05.2023.
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https://www.mimosa.org/, last call 06.05.2023.
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https://www.iiconsortium.org/iira/, last call 06.05.2023.
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Pahl, J., Rødseth, H., Strandhagen, J.O. (2023). Towards Smart Maintenance and Integrated Production Planning. In: Alfnes, E., Romsdal, A., Strandhagen, J.O., von Cieminski, G., Romero, D. (eds) Advances in Production Management Systems. Production Management Systems for Responsible Manufacturing, Service, and Logistics Futures. APMS 2023. IFIP Advances in Information and Communication Technology, vol 691. Springer, Cham. https://doi.org/10.1007/978-3-031-43670-3_53
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