Creator of Knowledge
Information Resources Management Association
Advancing the Concepts & Practices of Information Resources Management in Modern Organizations

Graph Database to Enhance Supply Chain Resilience for Industry 4.0

Graph Database to Enhance Supply Chain Resilience for Industry 4.0
View Sample PDF
Author(s): Young-Chae Hong (Ford Motor Company, USA) and Jing Chen (Ford Motor Company, USA)
Copyright: 2022
Volume: 15
Issue: 1
Pages: 19
Source title: International Journal of Information Systems and Supply Chain Management (IJISSCM)
Editor(s)-in-Chief: John Wang (Montclair State University, USA)
DOI: 10.4018/IJISSCM.2022010104


View Graph Database to Enhance Supply Chain Resilience for Industry 4.0 on the publisher's website for pricing and purchasing information.


Supply chain network in the automotive industry has complex, interconnected, multiple-depth relationships. Recently, the volume of supply chain data increases significantly with Industry 4.0. The complex relationships and massive volume of supply chain data can cause visibility and scalability issues in big data analysis and result in less responsive and fragile inventory management. The authors develop a graph data modeling framework to address the computational problem of big supply chain data analysis. In addition, this paper introduces Time-to-Stockout analysis for supply chain resilience and shows how to compute it through a labeled property graph model. The computational result shows that the proposed graph data model is efficient for recursive and variable-length data in supply chain, and relationship-centric graph query language has capable of handling a wide range of business questions with impressive query time.

Related Content

Hui Li. © 2022. 24 pages.
Anil Jindal, Satyendra Kumar Sharma, Srikanta Routroy. © 2022. 17 pages.
Menaouer Brahami, Abdeldjouad Fatma Zahra, Sabri Mohammed, Khalissa Semaoune, Nada Matta. © 2022. 21 pages.
Young-Chae Hong, Jing Chen. © 2022. 19 pages.
Jirasak Ji, Navee Chiadamrong. © 2022. 30 pages.
Guanghua Qiu. © 2022. 16 pages.
Ziyue Chen, Lizhen Huang. © 2022. 28 pages.
Body Bottom