用DRL优化5G网络切片:用OMA、NOMA和RSMA平衡eMBB、URLLC和mMTC

IF 7.7 2区 计算机科学 Q1 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE Journal of Network and Computer Applications Pub Date : 2024-11-28 DOI:10.1016/j.jnca.2024.104068
Silvestre Malta , Pedro Pinto , Manuel Fernández-Veiga
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引用次数: 0

摘要

第五代(5G)网络的出现引入了网络切片策略作为一种范式转变,使提供具有不同服务质量(QoS)要求的服务成为可能。第5代新无线电(5G NR)标准符合增强型移动宽带(eMBB)、超可靠低延迟通信(URLLC)和大规模机器类型通信(mMTC)用例,这些用例需要动态适应网络切片,以满足不同的流量需求。这种动态适应是提高5G网络效率的重大挑战,也是重大机遇。本文提出了一种深度强化学习(DRL)智能体,该智能体根据5G用例的流量需求,在带URLLC的eMBB和带mMTC的eMBB两种场景下,对5G无线网络切片进行动态资源分配。DRL代理对OMA (Orthogonal Multiple Access)、NOMA (Non-Orthogonal Multiple Access)、RSMA (Rate Splitting Multiple Access)等不同的译码方案的性能进行评估,并在不同的网络条件下应用最佳的译码方案。已经测试了DRL代理在带URLLC的eMBB场景中最大限度地提高和速率,在带mMTC的eMBB场景中最大限度地提高成功解码设备的数量,这两种情况都采用了设备数量、功率增益和分配频率数量的不同组合。结果表明,在两种情况下,DRL代理动态选择最佳解码方案,并且在最大化和率和解码设备之间具有84%到100%的效率。
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Optimizing 5G network slicing with DRL: Balancing eMBB, URLLC, and mMTC with OMA, NOMA, and RSMA
The advent of 5th Generation (5G) networks has introduced the strategy of network slicing as a paradigm shift, enabling the provision of services with distinct Quality of Service (QoS) requirements. The 5th Generation New Radio (5G NR) standard complies with the use cases Enhanced Mobile Broadband (eMBB), Ultra-Reliable Low Latency Communications (URLLC), and Massive Machine Type Communications (mMTC), which demand a dynamic adaptation of network slicing to meet the diverse traffic needs. This dynamic adaptation presents both a critical challenge and a significant opportunity to improve 5G network efficiency. This paper proposes a Deep Reinforcement Learning (DRL) agent that performs dynamic resource allocation in 5G wireless network slicing according to traffic requirements of the 5G use cases within two scenarios: eMBB with URLLC and eMBB with mMTC. The DRL agent evaluates the performance of different decoding schemes such as Orthogonal Multiple Access (OMA), Non-Orthogonal Multiple Access (NOMA), and Rate Splitting Multiple Access (RSMA) and applies the best decoding scheme in these scenarios under different network conditions. The DRL agent has been tested to maximize the sum rate in scenario eMBB with URLLC and to maximize the number of successfully decoded devices in scenario eMBB with mMTC, both with different combinations of number of devices, power gains and number of allocated frequencies. The results show that the DRL agent dynamically chooses the best decoding scheme and presents an efficiency in maximizing the sum rate and the decoded devices between 84% and 100% for both scenarios evaluated.
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来源期刊
Journal of Network and Computer Applications
Journal of Network and Computer Applications 工程技术-计算机:跨学科应用
CiteScore
21.50
自引率
3.40%
发文量
142
审稿时长
37 days
期刊介绍: The Journal of Network and Computer Applications welcomes research contributions, surveys, and notes in all areas relating to computer networks and applications thereof. Sample topics include new design techniques, interesting or novel applications, components or standards; computer networks with tools such as WWW; emerging standards for internet protocols; Wireless networks; Mobile Computing; emerging computing models such as cloud computing, grid computing; applications of networked systems for remote collaboration and telemedicine, etc. The journal is abstracted and indexed in Scopus, Engineering Index, Web of Science, Science Citation Index Expanded and INSPEC.
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