Author
Listed:
- Kasin Ransikarbum
(Department of Industrial Engineering, Ubonratchathani University, Ubonratchathani 34190, Thailand)
- Chanipa Nivasanon
(Department of Industrial Engineering, Kasetsart University, Bangkok 10900, Thailand)
- Pornthep Anussornnitisarn
(Department of Industrial Engineering, Kasetsart University, Bangkok 10900, Thailand)
Abstract
Background : This study evaluates an additive manufacturing (AM) network designed to balance economic performance, lead time, and environmental impact within the healthcare logistics and supply chain. Methods : An integrated framework is proposed that identifies optimal AM facility locations using spatial K-means clustering and optimizes delivery routes through a multi-objective vehicle routing problem with time windows (MOVRPTW). This framework was applied to a case study in Phra Nakhon Si Ayutthaya, Thailand, utilizing hospital geocoordinates, demand profiles, and CO 2 emission factors to evaluate centralized versus decentralized network configurations. Results : Findings demonstrate that hub structures derived from K-means clustering achieve the highest economic efficiency, reducing the AM part cost per unit to 698.51 Baht. In contrast, a fully centralized network resulted in a significantly higher unit cost of 4759.79 Baht, while clustering based on hospital types yielded a unit cost of 959.34 Baht. Quantitative results indicate that the multi-objective approach provides a superior trade-off, achieving lead time requirements while maintaining operational costs and emissions. Conclusions : The results indicate that the proposed framework, particularly through spatial clustering, offers a practical decision-support tool for designing AM networks that achieve a balance between operational efficiency and sustainability objectives in healthcare logistics.
Suggested Citation
Kasin Ransikarbum & Chanipa Nivasanon & Pornthep Anussornnitisarn, 2026.
"Designing Sustainable Healthcare Additive Manufacturing Networks Using a Multi-Objective Spatial Routing Framework,"
Logistics, MDPI, vol. 10(2), pages 1-26, February.
Handle:
RePEc:gam:jlogis:v:10:y:2026:i:2:p:35-:d:1855389
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