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Learning-based Cell Selection Method for Femtocell Networks

机译:基于学习的毫微微小区网络的单元选择方法

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In open-access non-stationary femtocell networks, cellular users (also known as macro users or MU) may join, through a handover procedure, one of the neighboring femtocells so as to enhance their communications/increase their respective channel capacities. To avoid frequent communication disruptions owing to effects such as the ping-pong effect, it is necessary to ensure the effectiveness of the cell selection method. Traditionally, such selection method is usually a measured channel/cell quality metric such as the channel capacity, the load of the candidate cell, the received signal strength (RSS), etc. However, one problem with such approaches is that present measured performance does not necessarily reflect the future performance, thus the need for novel cell selection that can predict the horizon. Subsequently, we present in this paper a reinforcement learning (RL), i.e, Q-learning algorithm, as a generic solution for the cell selection problem in a non-stationary femtocell network. After comparing our solution for cell selection with different methods in the literature (least loaded (LL), random and capacity-based), simulation results demonstrate the benefits of using learning in terms of the gained capacity and the number of handovers.
机译:在开放访问非静止的毫微微小区网络中,蜂窝用户(也称为宏用户或MU)可以通过切换过程加入相邻的毫微微小区之一,以便增强它们的通信/增加它们各自的信道容量。为了避免频繁的沟通中断,由于乒乓效应等效果,有必要确保细胞选择方法的有效性。传统上,这种选择方法通常是测量的信道/小区质量度量,例如信道容量,候选小区的负载,接收的信号强度(RSS)等,但是,这种方法的一个问题是存在测量的性能不一定反映未来的表现,因此需要预测地平线的新细胞选择。随后,我们在本文中呈现了一种加强学习(RL),即Q学习算法,作为非静止毫微微小区网络中的小区选择问题的通用解决方案。在比较我们在文献中的不同方法(最少负载(LL),随机和容量的方法的细胞选择解决方案之后,仿真结果表明了在获得的能力和切换次数方面使用学习的好处。

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