A Survey of Intelligent Network Slicing Management for Industrial IoT: Integrated Approaches for Smart Transportation, Smart Energy, and Smart Factory
Wu, Y; Dai, H-N; Wang, H; et al.Xiong, Z; Guo, S
Date: 10 March 2022
Article
Journal
IEEE Communications Surveys and Tutorials
Publisher
Institute of Electrical and Electronics Engineers (IEEE)
Publisher DOI
Abstract
Network slicing has been widely agreed as a promising technique to accommodate diverse services for the Industrial Internet of Things (IIoT). Smart transportation, smart energy, and smart factory/manufacturing are the three key services to form the backbone of IIoT. Network slicing management is of paramount importance in the face of ...
Network slicing has been widely agreed as a promising technique to accommodate diverse services for the Industrial Internet of Things (IIoT). Smart transportation, smart energy, and smart factory/manufacturing are the three key services to form the backbone of IIoT. Network slicing management is of paramount importance in the face of IIoT services with diversified requirements. It is important to have a comprehensive survey on intelligent network slicing management to provide guidance for future research in this field. In this paper, we provide a thorough investigation and analysis of network slicing management in its general use cases as well as specific IIoT services including smart transportation, smart energy and smart factory, and highlight the advantages and drawbacks across many existing works/surveys and this current survey in terms of a set of important criteria. In addition, we present an architecture for intelligent network slicing management for IIoT focusing on the above three IIoT services. For each service, we provide a detailed analysis of the application requirements and network slicing architecture, as well as the associated enabling technologies. Further, we present a deep understanding of network slicing orchestration and management for each service, in terms of orchestration architecture, AI-assisted management and operation, edge computing empowered network slicing, reliability, and security. For the presented architecture for intelligent network slicing management and its application in each IIoT service, we identify the corresponding key challenges and open issues that can guide future research. To facilitate the understanding of the implementation, we provide a case study of the intelligent network slicing management for integrated smart transportation, smart energy, and smart factory. Some lessons learnt include: 1) For smart transportation, it is necessary to explicitly identify service function chains (SFCs) for specific applications along with the orchestration of underlying VNFs/PNFs for supporting such SFCs; 2) For smart energy, it is crucial to guarantee both ultra-low latency and extremely high reliability; 3) For smart factory, resource management across heterogeneous network domains is of paramount importance. We hope that this survey is useful for both researchers and engineers on the innovation and deployment of intelligent network slicing management for IIoT.
Computer Science
Faculty of Environment, Science and Economy
Item views 0
Full item downloads 0
Related items
Showing items related by title, author, creator and subject.
-
Smart meters, smart water, smart societies: The iWIDGET project
Savic, Dragan; Vamvakeridou-Lyroudia, Lydia S.; Kapelan, Zoran (Elsevier, 17 December 2014)Population growth and economic development are main causes for increases in the demand for freshwater throughout the world. The likely impacts of climate change and increased urbanisation will result in the increase of the ... -
Spaces of visibility in the smart city: flagship urban spaces and the smart urban imaginary
Caprotti, F (SAGE Publications, 16 October 2018)Smart urbanism is a currently popular and widespread way of conceptualising the future city. At the same time, the smart city is critiqued by several scholars as difficult to define, and as being almost invisible to the ... -
The DHSmart model for smart product-service system (smart PSS): dynamic, data-driven, human-centred
Mirshafiee, N; Han, J; Ahmed-Kristensen, S (Cambridge University Press (CUP), 16 May 2024)Despite its transformative impact, a systematic approach to Smart PSS development remains elusive. Addressing this, the study introduces a dynamic conceptual model named DHSmart and its accompanying canvas, adaptable to ...