Beamforming is an essential technology in the 5G massive multiple-input-multiple-output (MMIMO) communications, which are subject to many impairments due to the nature of wireless transmission channel, i.e. the air. The inter-cell interference (ICI) is one of the main impairments faced by 5G communications due to frequency-reuse technologies. In this paper, we propose a reinforcement learning (RL) assisted full dynamic beamforming for ICI mitigation in 5G downlink. The proposed algorithm is a joint of beamforming and full dynamic Q-learning technology to minimize the ICI, and results in a low-complexity method without channel estimation. Performance analysis shows the quality of service improvement in terms of signal-to-interference-plus-noise-ratio (SINR) and computational complexity compared to other algorithms.
翻译:红外线是5G型大规模多投入-多产出(MIMO)通信中的一项基本技术,由于无线传输频道的性质,即空气,这些通信受到许多障碍。细胞间干扰(ICI)是5G型通信由于频率再利用技术而面临的主要缺陷之一。在本文件中,我们提议在5G下行链路中,加强学习(RL)协助全面动态波束,以减缓 ICI。提议的算法是波形和全动态Q学习技术的结合,以尽量减少ICI,结果采用低兼容性方法,而没有频道估计。绩效分析表明,与其他算法相比,信号对干扰+-噪音-拉迪奥(SINR)和计算复杂性方面的服务改进质量。