Cell selection using distributed Q-learning in heterogeneous networks

Toshihito Kudo, T. Ohtsuki
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引用次数: 14

Abstract

Cell selection with cell range expansion (CRE) that is a technique to expand a pico cell range virtually by adding a bias value to the pico received power, instead of increasing transmit power of the pico base station (PBS), can make coverage, cell-edge throughput, and overall network throughput improved. Many studies about CRE have used a common bias value among all user equipments (UEs), while the optimal bias values that minimize the number of UE outages vary from one UE to another. The optimal bias value that minimizes the number of UE outages depends on several factors such as the dividing ratio of radio resources between macro base stations (MBSs) and PBSs, it is given only by the trial and error method. In this paper, we propose a scheme to select a cell by using Q-learning algorithm where each UE learns which cell to select to minimize the number of UE outages from its past experience independently. Simulation results show that, compared to the practical common bias value setting, the proposed scheme reduces the number of UE outages and improves network throughput in the most cases. Moreover, instead of the degradation of the performances, it also solves the storage problem of our previous work.
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异构网络中使用分布式q学习的细胞选择
小区选择与小区范围扩展(CRE)是一种通过在小区接收功率上增加偏置值来虚拟地扩大小区范围的技术,而不是增加小区基站(PBS)的发射功率,可以提高覆盖范围、小区边缘吞吐量和整体网络吞吐量。许多关于CRE的研究在所有用户设备(UE)中使用了一个共同的偏置值,而最小化UE中断次数的最佳偏置值因UE而异。最大限度地减少终端中断次数的最优偏置值取决于宏基站(mbs)和PBSs之间的无线电资源分配比例等几个因素,它只能通过试错法得到。在本文中,我们提出了一种使用q -学习算法选择单元的方案,其中每个UE从其过去的经验中独立地学习选择哪个单元以最小化UE中断次数。仿真结果表明,与实际的共偏置值设置相比,该方案在大多数情况下减少了UE中断次数,提高了网络吞吐量。而且,它不仅没有降低性能,还解决了我们之前工作中的存储问题。
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