QoS-Aware Resource Allocation of Two-tier HetNet: A Q-learning Approach

Waleed Al Sobhi, H. Aghvami
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引用次数: 8

Abstract

Data applications account for the magnitude of traffic generated in the Cellular Networks. To meet the ever-increasing traffic demand, advancement in resource allocation is crucial. Dense Heterogeneous Networks (HetNets) aim at meeting the high data rate requirements of the future 5G communications. The paper's main contribution is to maximize the capacity of 5G dense networks via machine learning type Q-learning control algorithms in the Downlink. For broader comparison, we proposed two Power Allocation Q-learning algorithms, namely Distributed and Formulated. To investigate the impact of femto user equipment (FUE) in the network, the location of macro user equipment (MUE) is considered in the reward function. Furthermore, a cooperative approach is utilized to decrease the time search complexity. This approach is complex and requires further improvement. The obtained simulation results showed that the proposed Distributed algorithm outperformed the Formulated and Cooperative approaches. Accordingly, in the latter approaches the number of served FUEs increased however, at the expenses of the MUE Quality of Service (QoS).
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基于qos感知的两层HetNet资源分配:一种q学习方法
数据应用占蜂窝网络中产生的流量的规模。为了满足日益增长的交通需求,资源配置的进步是至关重要的。高密度异构网络(HetNets)旨在满足未来5G通信的高数据速率要求。该论文的主要贡献是通过下行链路中的机器学习型q -学习控制算法,最大限度地提高5G密集网络的容量。为了进行更广泛的比较,我们提出了两种Power Allocation Q-learning算法,即Distributed和Formulated。为了研究微用户设备(FUE)在网络中的影响,在奖励函数中考虑了宏用户设备的位置。此外,还采用了一种协作的方法来降低时间搜索复杂度。这种方法很复杂,需要进一步改进。仿真结果表明,所提出的分布式算法优于公式化算法和协同算法。因此,在后一种方法中,服务的fue数量增加,但以牺牲MUE的服务质量(QoS)为代价。
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