In this paper, we address inter-beam inter-cell interference mitigation in 5G networks that employ millimeter-wave (mmWave), beamforming and non-orthogonal multiple access (NOMA) techniques. Those techniques play a key role in improving network capacity and spectral efficiency by multiplexing users on both spatial and power domains. In addition, the coverage area of multiple beams from different cells can intersect, allowing more flexibility in user-cell association. However, the intersection of coverage areas also implies increased inter-beam inter-cell interference, i.e. interference among beams formed by nearby cells. Therefore, joint user-cell association and inter-beam power allocation stand as a promising solution to mitigate inter-beam, inter-cell interference. In this paper, we consider a 5G mmWave network and propose a reinforcement learning algorithm to perform joint user-cell association and inter-beam power allocation to maximize the sum rate of the network. The proposed algorithm is compared to a uniform power allocation that equally divides power among beams per cell. Simulation results present a performance enhancement of 13-30% in network's sum-rate corresponding to the lowest and highest traffic loads, respectively.
翻译:在本文中,我们处理5G网络中使用毫米波(mmWave)、波形和非光度多存(NOMA)技术的跨波间细胞干扰减缓问题。这些技术在提高空间和电力领域的多路用户网络能力和光谱效率方面发挥着关键作用。此外,不同细胞的多光束覆盖区可以相互交叉,使用户-细胞联系具有更大的灵活性。但是,覆盖区的交叉也意味着增加跨波间细胞干扰,即附近细胞组成的波束之间的干扰。因此,用户-细胞联合联系和波束间电力分配站是减缓跨波束、跨细胞干扰的一个有希望的解决办法。在本文中,我们考虑建立一个5GmmWave网络,并提议一个强化学习算法,以实施用户-细胞联合联系和跨波束权力分配,以尽量扩大网络的总和率。提议的算法与统一的权力分配相比,每个细胞之间的权力分配是相等的。模拟结果显示在网络最高流量和最高总和最高流量中分别提高13-30%的性能。