QoS-Aware Content Delivery in 5G-Enabled Edge Computing: Learning-Based Approaches

被引:6
作者
Maleki, Erfan Farhangi [1 ]
Ma, Weibin [1 ]
Mashayekhy, Lena [1 ]
La Roche, Humberto J. [2 ]
机构
[1] Univ Delaware, Dept Comp & Informat Sci, Newark, DE 19716 USA
[2] Cisco Syst, Moorestown, NJ 07733 USA
关键词
5G mobile communication; Quality of service; Deep learning; Optimization; Decision making; Routing; Real-time systems; Multi-access edge computing; 5G; mobility; content delivery; online sequential decision-making; deep learning; RESOURCE-ALLOCATION; 5G; COMMUNICATION; NETWORKS; VIDEO;
D O I
10.1109/TMC.2024.3363143
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
The increasing demand for high-volume multimedia services through mobile user equipment (UEs) has imposed a significant burden on mobile networks. To cope with this growth in demand, it is necessary to extend the 5G network's ability to meet quality-of-service (QoS) requirements. The integration of Multi-access Edge Computing (MEC) with 5G technology, 5G-MEC, emerges as a pivotal solution, offering ultra-low latency, ultra-high reliability, and continuous connectivity to support various latency-sensitive applications for UEs. Despite these advancements, the mobility of UEs introduces significant spatio-temporal uncertainties, posing a major challenge on optimizing content delivery routes and directly impacting both latency and service continuity for UEs. Addressing this challenge necessitates suitable approaches for selecting optimal 5G-MEC components, with the goal of minimizing latency and reducing the frequency of handovers, ultimately ensuring a seamless content delivery experience. This paper proposes two learning-based approaches to tackle the problem of 5G-MEC component selection to facilitate QoS-aware content delivery in the absence of complete information about the dynamics of the 5G-MEC environment. First, we design an online sequential decision-making approach, called QCS-MAB, to decide on the content delivery routes in real-time while achieving a bounded performance. We then propose a deep learning approach, called QCS-DNN, to efficiently solve large-scale 5G-MEC component selection problems. We evaluate the effectiveness of our proposed approaches through extensive experiments using a real-world dataset. The results demonstrate that both QCS-MAB and QCS-DNN achieve near-optimal latency and significantly reduced handover times, significantly enhancing the 5G-MEC content delivery experience.
引用
收藏
页码:9324 / 9336
页数:13
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