基于q -学习算法的双层飞蜂窝网络小区选择

Xu Tan, Xi Luan, Yuxin Cheng, Aimin Liu, Jianjun Wu
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引用次数: 9

摘要

下一代无线网络将产生具有微型基站(MBS)和飞蜂窝的异构网络,其中蜂窝选择对于平衡整个网络的利用率至关重要。在本文中,我们研究了包含一个MBS和几个具有开放/封闭接入方法和覆盖区域的飞蜂窝网络中的蜂窝选择问题。在不同服务区域的用户群之间的选择过程被描述为一个动态的进化博弈。为了达到平衡,我们提出了q -学习算法,该算法可以帮助分布的个体用户适应情况并独立做出单元选择决策。利用自己过去的知识,用户可以学习实现平衡,而不需要中央控制器来收集其他用户的信息。仿真结果表明了该算法的收敛性和有效性。
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Cell selection in two-tier femtocell networks using Q-learning algorithm
Next-generation wireless networks will generate a heterogeneous network with micro base station (MBS) and femtocells where cell selection becomes crucial for balancing the utilization of the whole network. In this paper, we investigate cell selection problem in a two-tier femtocell network that contains a MBS and several femtocells with open/closed access methods and coverage areas. The selection process among groups of users in different service areas is formulated as a dynamic evolutionary game. In order to achieve an equilibrium, we present the Q-learning algorithm that can help distributed individual users adapt the situation and make cell selection decisions independently. With their own knowledge of the past, the users can learn to achieve the equilibrium without a centralized controller to gather other users information. Finally, simulation results present the convergence and effectiveness of the proposed algorithm.
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