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Industrial digital twins at the nexus of NextG wireless networks and computational intelligence: A survey

Journal

Publisher

ACADEMIC PRESS LTD- ELSEVIER SCIENCE LTD
DOI: 10.1016/j.jnca.2021.103309

Keywords

Industry 4.0; Digital twin; Industrial Internet of things; Cyber-physical systems; Machine learning; Artificial intelligence; Computational intelligence; Multi-access edge computing; 5G-and-Beyond/6G; Green communication; Age of information

Funding

  1. KKS Research Profile NIIT

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By integrating communication and control technologies, computing and data analytics techniques, and modular manufacturing, Industry 4.0 promotes the integration of cyber-physical worlds through cyber-physical systems and digital twin. Digital twin plays a significant role in simulating, analyzing, and controlling real-time operations in smart industries. However, there is a lack of research on the role and requirements of these technologies in DT-enabled industries from the communication and computing perspective.
By amalgamating recent communication and control technologies, computing and data analytics techniques, and modular manufacturing, Industry 4.0 promotes integrating cyber-physical worlds through cyber-physical systems (CPS) and digital twin (DT) for monitoring, optimization, and prognostics of industrial processes. A DT enables interaction with the digital image of the industrial physical objects/processes to simulate, analyze, and control their real-time operation. DT is rapidly diffusing in numerous industries with the interdisciplinary advances in the industrial Internet of things (IIoT), edge and cloud computing, machine learning, artificial intelligence, and advanced data analytics. However, the existing literature lacks in identifying and discussing the role and requirements of these technologies in DT-enabled industries from the communication and computing perspective. In this article, we first present the functional aspects, appeal, and innovative use of DT in smart industries. Then, we elaborate on this perspective by systematically reviewing and reflecting on recent research trends in next-generation (NextG) wireless technologies (e.g., 5G-and-Beyond networks) and design tools, and current computational intelligence paradigms (e.g., edge and cloud computing-enabled data analytics, federated learning). Moreover, we discuss the DT deployment strategies at different communication layers to meet the monitoring and control requirements of industrial applications. We also outline several key reflections and future research challenges and directions to facilitate industrial DT's adoption.

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