A Layered Architecture Enabling Metaverse Applications in Smart Manufacturing Environments
Armir Bujari, Alessandro Calvio, Andrea Garbugli, Paolo Bellavista

TL;DR
This paper proposes a layered architecture that integrates IIoT, Digital Twins, and the Metaverse to enable real-time monitoring and management in smart manufacturing environments, enhancing efficiency and human oversight.
Contribution
It introduces a novel layered middleware architecture that supports real-time data collection, representation, and visualization for Metaverse applications in manufacturing.
Findings
Effective real-time monitoring of network fabric activity.
Enhanced asset visualization through Metaverse integration.
Middleware supports differentiated QoS for OT processes.
Abstract
The steady rollout of Industrial IoT (IIoT) technology in the manufacturing domain embodies the potential to implement smarter and more resilient production processes. To this end, it is expected that there will be a strong reliance of manufacturing processes on cloud/edge services so as to act intelligently and flexibly. While automation is necessary to handle the environment's complexity, human-in-the-loop design approaches are paramount. In this context, Digital Twins play a crucial role by allowing human operators to inspect and monitor the environment to ensure stability and reliability. Integrating the IIoT with the Metaverse enhances the system's capabilities even further, offering new opportunities for efficiency and collaboration while enabling integrated management of assets and processes. This article presents a layered conceptual architecture as an enabler for smart…
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Taxonomy
TopicsDigital Transformation in Industry · IoT and Edge/Fog Computing · Flexible and Reconfigurable Manufacturing Systems
