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Reinforcement learning based resource allocation in cache-enabled small cell networks with mobile users

机译:基于加强学习的基于缓存的高速缓存的资源分配,具有移动用户的缓存的小型小区网络

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In this paper, the resource allocation problem for cloud-based cache-enabled small cell networks (SCNs) is studied. In the cloud-based cache-enabled SCN, the contents that the users request are stored both at the cloud pool and at the cache storage of each small base station (SBS). In our model, the cloud pool can predict the users' mobility patterns and determine the resource allocation scheme in a period of time. The problem is formulated as a game problem which jointly considers the network throughput and the power consumption of the SBSs. To solve this problem, we propose a machine learning based resource allocation method. First, we use a neural network framework of long short-term memory to predict the users' mobility patterns and further to determine the associated users based on the users' mobility patterns. Then we propose a reinforcement learning based resource allocation algorithm to maximize the network throughput. Simulation results show that the proposed algorithm achieves up to 58.2% and 26.1% gains, respectively, in terms of network throughput compared to random and the nearest algorithms.
机译:在本文中,研究了基于云的高速缓存的小小区网络(SCNS)的资源分配问题。在基于云的高速缓存的SCN中,用户请求的内容在云池和每个小型基站(SBS)的高速缓存存储中存储。在我们的模型中,云池可以预测用户的移动模式并在一段时间内确定资源分配方案。该问题被制定为一个游戏问题,它共同考虑了网络吞吐量和SBS的功耗。要解决这个问题,我们提出了一种基于机器学习的资源分配方法。首先,我们使用长短期存储器的神经网络框架来预测用户的移动模式,并进一步基于用户的移动模式来确定相关的用户。然后我们提出了一种基于加强学习的资源分配算法,可以最大化网络吞吐量。仿真结果表明,与随机和最近的算法相比,该算法分别在网络吞吐量方面达到了高达58.2 %和26.1 %的增益。

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