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Self-Organizing mm Wave Networks: A Power Allocation Scheme Based on Machine Learning

机译:自组织毫米波网络:一种基于机器学习的功率分配方案

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Millimeter-wave (mmWave) communication is anticipated to provide significant throughout gains in urban scenarios. To this end, network densification is a necessity to meet the high traffic volume generated by smart phones, tablets, and sensory devices while overcoming large pathloss and high blockages at mmWaves frequencies. These denser networks are created with users deploying small mm Wave base stations (BSs) in a plug-and-play fashion. Although, this deployment method provides the required density, the amorphous deployment of BSs needs distributed management. To address this difficulty, we propose a self-organizing method to allocate power to mm Wave BSs in an ultra dense network. The proposed method consists of two parts: clustering using fast local clustering and power allocation via Q-learning. The important features of the proposed method are its scalability and self-organizing capabilities, which are both important features of 5G. Our simulations demonstrate that the introduced method, provides required quality of service (QoS) for all the users independent of the size of the network.
机译:预计毫米波(mmWave)通信将在城市场景中带来巨大的收益。为此,网络密度必须满足智能手机,平板电脑和感官设备产生的高流量,同时还要克服毫米波频率下的大路径损耗和高阻塞。这些密集的网络是由用户以即插即用的方式部署小毫米波基站(BS)来创建的。尽管此部署方法提供了所需的密度,但BS的无定形部署仍需要分布式管理。为解决此难题,我们提出了一种自组织方法,可在超密集网络中为毫米波BS分配功率。所提出的方法包括两部分:使用快速局部聚类的聚类和通过Q学习进行功率分配。该方法的重要特征是其可扩展性和自组织能力,这都是5G的重要特征。我们的仿真表明,引入的方法可为所有用户提供所需的服务质量(QoS),而与网络的大小无关。

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