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Digital Twin Virtualization with Machine Learning for IoT and Beyond 5G Networks

Jithin Jagannath, Keyvan Ramezanpour, Anu Jagannath

202234 citationsDOI

Abstract

Digital twin (DT) technologies have emerged as a solution for real-time data-driven modeling of cyber physical systems (CPS) using the vast amount of data available by Internet of Things (IoT) networks. In this position paper, we elucidate unique characteristics and capabilities of a DT framework that enables realization of such promises as online learning of a physical environment, real-time monitoring of assets, Monte Carlo heuristic search for predictive prevention, on-policy, and off-policy reinforcement learning in real-time. We establish a conceptual layered architecture for a DT framework with decentralized implementation on cloud computing and enabled by artificial intelligence (AI) services for modeling and decision-making processes. The DT framework separates the control functions, deployed as a system of logically centralized process, from the physical devices under control, much like software-defined networking (SDN) in fifth generation (5G) wireless networks. To clarify the significance of DT in lowering the risk of development and deployment of innovative technologies on existing system, we discuss the application of implementing zero trust architecture (ZTA) as a necessary security framework in future data-driven communication networks.

Topics & Concepts

Computer scienceCloud computingReinforcement learningVirtualizationDistributed computingSoftware deploymentSoftware-defined networkingCyber-physical systemPosition paperArtificial intelligenceSoftware engineeringWorld Wide WebOperating systemDigital Transformation in IndustrySmart Grid Security and ResilienceSoftware-Defined Networks and 5G
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