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Throughput Maximization in C-RAN Enabled Virtualized Wireless Networks via Multi-Agent Deep Reinforcement Learning

机译:通过多智能体深度强化学习在启用C-RAN的虚拟无线网络中实现吞吐量最大化

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With the excessive growth in mobile users’ traffic, radio resource management (RRM) techniques should undergo revolutionary changes to be competent enough to meet the ever-increasing users’ demands. Virtualized wireless network (VWN) has emerged as a satisfactory solution in the fifth-generation (5G) cellular networks ensuring the required quality-of-service (QoS) of distinct slices. Yet, it seems that tackling RRM problems in VWNs using conventional optimization is not practical for real-time applications. In this paper, driven by the advancements of machine learning, we consider the throughput maximization problem in a cloud radio access network (C-RAN) assisted softly virtualized wireless network supporting different types of services and solve it with a deep Q-learning (DQL) algorithm. The performance of the proposed policy is thoroughly evaluated via simulation results with respect to the isolation rate, penalty value as well as the discount factor. It is shown that our proposed policy achieves a higher sum rate compared to the existing baseline namely a greedy search-based power allocation strategy.
机译:随着移动用户流量的过度增长,无线电资源管理(RRM)技术应进行革命性的更改,以足以满足日益增长的用户需求。在第五代(5G)蜂窝网络中,虚拟无线网络(VWN)已成为一种令人满意的解决方案,可确保不同分片的所需服务质量(QoS)。然而,对于常规应用而言,使用常规优化解决VWN中的RRM问题似乎不切实际。在本文中,随着机器学习的发展,我们考虑了在支持不同类型服务的云无线电接入网(C-RAN)辅助的软虚拟化无线网络中的吞吐量最大化问题,并通过深度Q学习(DQL)解决了该问题) 算法。通过仿真结果对隔离率,惩罚值以及折现因子进行了全面评估,从而对所提出策略的性能进行了全面评估。结果表明,与现有基准(即基于贪婪搜索的功率分配策略)相比,我们提出的策略可实现更高的总和率。

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