Bibliographische Detailangaben
| Titel: |
Towards resilient product-service systems in Industry 5.0: a self-adaptive resilience management framework. |
| Autoren: |
Song, Wenyan1 (AUTHOR), Zhang, Tao1 (AUTHOR), Zhou, Caibo1 (AUTHOR) zhoucaibo1998@163.com |
| Quelle: |
International Journal of Production Research. Jul2025, p1-23. 23p. 10 Illustrations. |
| Schlagwörter: |
*RISK managers, *ORGANIZATIONAL resilience, *SYSTEM of systems, *INDUSTRY 4.0, DISASTER resilience, COMPUTER simulation, DRONE aircraft |
| Abstract: |
Product-Service System (PSS) in the Industry 5.0 era has become more complex, while facing complex risk situations, which puts higher requirements on its resilience. Traditional PSS resilience management frameworks ignore the interconnections and dynamics of risks and the combined impact of interconnected risks and PSS structural complexity on PSS performance, resulting in ineffective resilience management. Meanwhile, the proactive or reactive frameworks cannot support PSS in dynamically adjusting resilience enhancement strategies, which may lead to their failure when facing changing risk situations. This paper proposes a self-adaptive resilience management framework for PSS. The framework integrates three key modules: interconnected risk situation awareness, PSS resilience assessment under interconnected risk, and PSS resilience self-adaptive enhancement. By incorporating the interconnections and dynamics of risks, and the PSS structure complexity, the framework can accurately assess the risk situation and PSS resilience, helping to achieve resilience self-adaptive enhancement. The applicability and effectiveness of the proposed framework were verified through simulation based on case studies of unmanned aerial vehicle (UAV) and healthcare service systems. The framework provides a guidance for researchers and practitioners to ensure high resilience and stability of PSS in the Industry 5.0 era. [ABSTRACT FROM AUTHOR] |
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| Datenbank: |
Business Source Index |