Internet of Everything in the 6G Era: Research Overview of IoE Architecture, Technologies, and Challenges
A comprehensive academic paper examines the Internet of Everything (IoE)—an evolution of IoT that integrates people, data, processes, and things into unified intelligent ecosystems. The paper reviews IoE's core components, architectural foundations, and enabling technologies across applications like smart cities and healthcare. The work is significant because it outlines research directions for 6G-enabled IoE systems with focus on scalability, security, privacy, and energy efficiency.
This arXiv preprint provides a structured overview of the Internet of Everything concept and its role in next-generation wireless networks. IoE represents an advancement beyond traditional Internet of Things by creating more integrated and intelligent ecosystems that combine multiple data sources, automated processes, and connected devices. The paper spans 48 pages with 15 figures and 6 tables, drawing on 272 references to synthesize current knowledge. It addresses core architectural foundations and enabling technologies while identifying major research challenges in the field. The authors emphasize open research directions specifically for 6G-enabled IoE systems, with particular attention to critical concerns including scalability, security, privacy, and energy efficiency—factors essential for practical deployment at scale.
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- arXiv cs.AICenter
Internet of Everything in the 6G Era: Paradigms, Enablers, Potentials and Future Directions
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