학술논문

Survey on Machine Learning-Enabled Network Slicing: Covering the Entire Life Cycle
Document Type
Periodical
Source
IEEE Transactions on Network and Service Management IEEE Trans. Netw. Serv. Manage. Network and Service Management, IEEE Transactions on. 21(1):994-1011 Feb, 2024
Subject
Communication, Networking and Broadcast Technologies
Computing and Processing
Surveys
Resource management
5G mobile communication
Admission control
Prediction algorithms
3GPP
Task analysis
Network slicing
ML-enabled slicing
machine learning
slicing-as-a-service
ML-enabled resource orchestration
allocation
Language
ISSN
1932-4537
2373-7379
Abstract
Network slicing (NS) is becoming an essential element of service management and orchestration in communication networks, starting from mobile cellular networks and extending to a global initiative. NS can reshape the deployment and operation of traditional services, support the introduction of new ones, vastly advance how resource allocation performs in networks, and notably change the user experience. Most of these promises still need to reach the real world, but they have already demonstrated their capabilities in many experimental infrastructures. However, complexity, scale, and dynamism are pressuring for a Machine Learning (ML)-enabled NS approach in which autonomy and efficiency are critical features. This trend is relatively new but growing fast and attracting much attention. This article surveys Artificial Intelligence-enabled NS and its potential use in current and future infrastructures. We have covered state-of-the-art ML-enabled NS for all network segments and organized the literature according to the phases of the NS life cycle. We also discuss challenges and opportunities in research on this topic.