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Q-Learning Based Social Community-Aware Energy Efficient Cooperative Caching in 5G Networks

机译:5G网络中基于Q学习的社交社区感知节能合作缓存

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To satisfy the vast demand of data traffic caused by various mobile devices, caching contents at Base Stations (BSs) and User Equipment (UE) has become a promising solution. A lot of recent works have proved that an approach of caching at edge devices is efficient to reduce latency and alleviate backhaul load so that the probability to meet users' Quality of Service (QoS) is much higher. However, due to the selfishness of mobile users, it is hard to convince users to store contents for other users. In this regard, we consider the social connection between users in order to induce users to store contents for the social community. So, to implement the socially aware Device to Device (D2D) caching, we construct two types of graphs: i) physical D2D graph which is constructed based on users communication over D2D links and ii) logical social graph which is consist of a group of people who share the common interest. Then, we formulate socially aware D2D caching problem into Markov Decision Process (MDP). Additionally, we consider the distance and the social ties between users, and mobile devices' capacity to optimally store contents under the constraint that energy consumption of cellular link is much higher than D2D link. Finally, we solve the D2D caching problem by using Q-learning where the goal is to minimize the total energy consumption over Macrocell Base Station (MBS) and mobile devices.
机译:为了满足由各种移动设备引起的大量数据业务需求,在基站(BS)和用户设备(UE)上缓存内容已成为一种有前途的解决方案。最近的许多工作证明,在边缘设备上进行缓存的方法可有效减少延迟并减轻回程负载,从而满足用户服务质量(QoS)的可能性更高。但是,由于移动用户的自私,很难说服用户为其他用户存储内容。在这方面,我们考虑用户之间的社交联系,以诱使用户存储社交社区的内容。因此,为了实现具有社交意识的设备到设备(D2D)缓存,我们构建了两种类型的图:i)物理D2D图,它是基于用户通过D2D链接进行通信而构建的; ii)逻辑社交图,它由一组拥有共同利益的人们。然后,我们将具有社会意识的D2D缓存问题公式化为Markov决策过程(MDP)。此外,在蜂窝链路能耗远高于D2D链路的约束下,我们考虑了用户之间的距离和社交关系,以及移动设备最佳存储内容的能力。最后,我们通过使用Q学习解决D2D缓存问题,其目的是最大程度地减少Macrocell基站(MBS)和移动设备的总能耗。

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