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Dynamic Network Slice for Bursty Edge Traffic | IEEE Journals & Magazine | IEEE Xplore

Dynamic Network Slice for Bursty Edge Traffic


Abstract:

Edge network slicing promises better utilization of network resources by dynamically allocating resources on demand. However, addressing the imbalance between slice resou...Show More

Abstract:

Edge network slicing promises better utilization of network resources by dynamically allocating resources on demand. However, addressing the imbalance between slice resources and user demands becomes challenging when complex user behaviors lead to bursty traffic within the edge network. Hence, we propose a comprehensive dynamic slice strategy with two coupled sub-strategies (i) bursty-sensitive slice resource coordination and (ii) proactive demand resource matching to find an optimal balance. For obtaining stable strategies, the edge network with bursty traffic is formulated as a bi-level Lyapunov optimization problem. Then we propose a resource allocation and request redirection (RA-RR) algorithm with polynomial complexity by introducing deep reinforcement learning to guarantee real-time. Specifically, two agents are trained to solve two sub-strategies, and the Lyapunov drift-plus-penalty function is used as the reward to keep queues stable. RA-RR is responsive to fluctuations in demand and realizes an efficient interaction of coupled decision-making. Moreover, a training method based on alternating optimization is designed to ensure convergence of the RA-RR algorithm. Experiments demonstrate that the proposal can maximize network revenue while ensuring the stability of slice services when edge traffic bursts, and has an average improvement of 20.4% compared with comparisons.
Published in: IEEE/ACM Transactions on Networking ( Volume: 32, Issue: 4, August 2024)
Page(s): 3142 - 3157
Date of Publication: 26 March 2024

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I. Introduction

Network slices are independent logical networks that share the same underlying network infrastructures. Network slices can flexibly meet the service level agreement (SLA) requirements and provide various services [1], [2]. In recent years, network slicing based on edge computing has made it possible to access customized services with low latency. It is significantly important for computational-intensive and latency-sensitive applications such as autonomous driving and mobile AR/VR [3], [4], [5].

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