Global Multidisciplinary Journal

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Architecting Resilience in Socio-Technical Systems: A Synthesis of Chaos Engineering, Industrial Data Spaces, and Healthcare 4.0 for High-Reliability Operations

4 Department of Systems Engineering and Operational Excellence, University of Zurich, Switzerland

Abstract

The transition toward hyper-connected industrial and healthcare ecosystems, characterized by Industry 4.0 and Healthcare 4.0, has introduced unprecedented complexity into modern value chains. As systems become more autonomous and data-driven, the traditional paradigms of risk management and reliability engineering are increasingly insufficient. This research article provides a comprehensive investigation into the integration of resilience frameworks across manufacturing and clinical domains. By synthesizing foundational principles of industrial data spaces with contemporary methodologies such as Chaos Engineering, the study explores how intentional, controlled turbulence can be leveraged to build systemic robustness and high-reliability teams. The article investigates the application of system dynamics, multi-agent systems, and dynamic value stream mapping to identify vulnerabilities in supply chains and manufacturing lines. Simultaneously, it addresses the critical intersection of patient safety and medical device reliability, exploring the role of artificial intelligence and machine learning in predicting performance and mitigating human errors. Through an extensive theoretical elaboration, the research argues for a human-centered model where technology acts as a catalyst for cognitive adaptability. The findings suggest that true resilience is achieved only when data-driven infrastructures are coupled with a cultural shift toward proactive experimentation and learning. This study provides a publication-ready framework for researchers and practitioners aiming to navigate the ethical, regulatory, and operational challenges of the next industrial revolution.

Keywords

References

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How to Cite

Timi Tsunoda. (2026). Architecting Resilience in Socio-Technical Systems: A Synthesis of Chaos Engineering, Industrial Data Spaces, and Healthcare 4.0 for High-Reliability Operations. Global Multidisciplinary Journal, 5(02), 94-101. https://www.grpublishing.org/journals/index.php/gmj/article/view/371

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