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A Predictive Maintenance System for Reverse Supply Chain Operations

Background: Reverse supply chains of machinery and equipment face significant challenges, and overcoming them is critical for effective customer service and sustainable operation. Maintenance and repair services, strongly associated with the reverse movement of equipment, are among the most demandin...

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Published in:Logistics 2022-03, Vol.6 (1), p.4
Main Authors: Gayialis, Sotiris P., Kechagias, Evripidis P., Konstantakopoulos, Grigorios D., Papadopoulos, Georgios A.
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container_title Logistics
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creator Gayialis, Sotiris P.
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description Background: Reverse supply chains of machinery and equipment face significant challenges, and overcoming them is critical for effective customer service and sustainable operation. Maintenance and repair services, strongly associated with the reverse movement of equipment, are among the most demanding reverse supply chain operations. Equipment is scattered in various locations, and multiple suppliers are involved in its maintenance, making it challenging to manage the related reverse supply chain operations. Effective maintenance is essential for businesses-owners of the equipment, as reducing costs while improving service quality helps them gain a competitive advantage. Methods: To enhance reverse supply chain operations related to equipment maintenance, this paper presents the operational framework, the methodological approach, and the architecture for developing a system that covers the needs for predictive maintenance in the service supply chain. It is based on Industry 4.0 technologies, such as the Internet of things, machine learning, and cloud computing. Results: As a result of the successful implementation of the system, effective equipment maintenance and service supply chain management is achieved supporting the reverse supply chain. Conclusions: This will eventually lead to fewer good-conditioned spare part replacements, just in time replacements, extended equipment life cycles, and fewer unnecessary disposals.
doi_str_mv 10.3390/logistics6010004
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subjects Decision making
framework
industry 4.0
Information systems
Internet of Things
Logistics
methodology
predictive maintenance
Research methodology
reverse supply chain
supply chain 4.0
title A Predictive Maintenance System for Reverse Supply Chain Operations
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