基于行为批判的强化学习,实现 5G RAN 切片中的联合资源分配和吞吐量最大化

IF 1.9 4区 计算机科学 Q3 TELECOMMUNICATIONS
Dhanashree Kulkarni, Mithra Venkatesan, Anju V. Kulkarni
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引用次数: 0

摘要

随着第五代(5G)移动通信网络切片技术的出现,应用场景的范围正在显著扩大。要使 5G 运行良好,就必须实现低延迟、快速数据传输速率和处理大量连接的能力。自动驾驶、远程手术等应用对服务质量(QoS)有着严格的要求,而目前的切片设计并不适合这些服务。因此,延迟被视为切片设计中的一个关键因素。传统的优化算法往往缺乏鲁棒性和对动态环境的适应性,会陷入局部最优状态,无法适应不同的条件。我们的解决方案利用强化学习(RL)为切片分配资源。通过重新配置切片,可以优化受限资源的利用率。RL 能够从周围环境中获取知识,这使我们的解决方案能够适应不同的网络条件,加强资源分配,并在一段时间内提高不同网络切片的服务质量。本研究介绍了深度行为批判强化学习-网络切片(DACRL-NS)技术,该技术利用深度行为批判强化学习为网络切片进行有效的资源分配。其目标是实现网络的最佳吞吐量。如果切片达不到最低标准,就会被从分配中省略。随着训练集数的增加,我们的 "行动者批判 "算法提高了平均累积奖励和资源分配效率,展示了持续学习和改进决策的效果。数据还显示,整体网络吞吐量提高了 17.14%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Actor Critic Based Reinforcement Learning for Joint Resource Allocation and Throughput Maximization in 5G RAN Slicing

Actor Critic Based Reinforcement Learning for Joint Resource Allocation and Throughput Maximization in 5G RAN Slicing

With the advent of fifth generation (5G) mobile communication network slicing technology, the range of application scenarios is expanding significantly. For 5G to function well, it necessitates little delay, a fast rate of data transfer, and the ability to handle a large number of connections. This demanding service requires the allocation of resources in a dynamic manner, while maintaining a very high level of reliability in terms of Quality of Service (QoS).The applications like autonomous driving, telesurgery, etc. have stringent QoS demands and the present design of slices is not suitable for these services. Therefore, latency has been regarded as a crucial factor in the design of the slices. Conventional optimization algorithms often lack robustness and adaptability to dynamic environments, getting stuck in local optima and failing to generalize to varying conditions. Our solution utilizes Reinforcement Learning (RL) to allocate resources to the slices. The utilization of restricted resources can be optimized through the reconfiguration of slices. The ability of RL to acquire knowledge from the surroundings enables our solution to adjust to varying network conditions, enhance the allocation of resources and improve quality of service over a period of time for different network slices. This study introduces the Deep Actor Critic Reinforcement Learning- Network Slicing (DACRL-NS) technique, which utilizes Deep Actor Critic Reinforcement learning for efficient resource allocation to network slices. The objective is to achieve optimal throughput in the network. If the slices fail to meet the minimum criteria, they will be omitted from the allocation. With increasing training episodes, our Actor-Critic algorithm enhances average cumulative rewards and resource allocation efficiency, demonstrating continuous learning and improved decision-making.The simulated suggested system demonstrates an average throughput improvement of 8.92% and 16.36% with respect to the rate requirement and latency requirement, respectively. The data also demonstrate a 17.14% increase in the overall network throughput.

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来源期刊
Wireless Personal Communications
Wireless Personal Communications 工程技术-电信学
CiteScore
5.80
自引率
9.10%
发文量
663
审稿时长
6.8 months
期刊介绍: The Journal on Mobile Communication and Computing ... Publishes tutorial, survey, and original research papers addressing mobile communications and computing; Investigates theoretical, engineering, and experimental aspects of radio communications, voice, data, images, and multimedia; Explores propagation, system models, speech and image coding, multiple access techniques, protocols, performance evaluation, radio local area networks, and networking and architectures, etc.; 98% of authors who answered a survey reported that they would definitely publish or probably publish in the journal again. Wireless Personal Communications is an archival, peer reviewed, scientific and technical journal addressing mobile communications and computing. It investigates theoretical, engineering, and experimental aspects of radio communications, voice, data, images, and multimedia. A partial list of topics included in the journal is: propagation, system models, speech and image coding, multiple access techniques, protocols performance evaluation, radio local area networks, and networking and architectures. In addition to the above mentioned areas, the journal also accepts papers that deal with interdisciplinary aspects of wireless communications along with: big data and analytics, business and economy, society, and the environment. The journal features five principal types of papers: full technical papers, short papers, technical aspects of policy and standardization, letters offering new research thoughts and experimental ideas, and invited papers on important and emerging topics authored by renowned experts.
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