Jiang Bin, Ren Bowen, Huang Yufei, Chen Tingting, You Li, Wang Wenjin
National Mobile Communications Research Laboratory, Southeast University, Nanjing 210096, China.
Key Laboratory of Dynamic Cognitive System of Electromagnetic Spectrum Space, Ministry of Industry and Information Technology, Ministry of Industry and Information Technology, Nanjing University of Aeronautics and Astronautics, Nanjing 210016, China.
Entropy (Basel). 2020 Sep 18;22(9):1045. doi: 10.3390/e22091045.
As the core technology of 5G mobile communication systems, massive multi-input multi-output (MIMO) can dramatically enhance the energy efficiency (EE), as well as the spectral efficiency (SE), which meets the requirements of new applications. Meanwhile, physical layer multicast technology has gradually become the focus of next-generation communication technology research due to its capacity to efficiently provide wireless transmission from point to multipoint. The availability of channel state information (CSI), to a large extent, determines the performance of massive MIMO. However, because obtaining the perfect instantaneous CSI in massive MIMO is quite challenging, it is reasonable and practical to design a massive MIMO multicast transmission strategy using statistical CSI. In this paper, in order to optimize the system resource efficiency (RE) to achieve EE-SE balance, the EE-SE trade-offs in the massive MIMO multicast transmission are investigated with statistical CSI. Firstly, we formulate the eigenvectors of the RE optimization multicast covariance matrices of different user terminals in closed form, which illustrates that in the massive MIMO downlink, optimal RE multicast precoding is supposed to be done in the beam domain. On the basis of this viewpoint, the optimal RE precoding design is simplified into a resource efficient power allocation problem. Via invoking the quadratic transform, we propose an iterative power allocation algorithm, which obtains an adjustable and reasonable EE-SE tradeoff. Numerical simulation results reveal the near-optimal performance and the effectiveness of our proposed statistical CSI-assisted RE maximization in massive MIMO.
作为5G移动通信系统的核心技术,大规模多输入多输出(MIMO)能够显著提高能量效率(EE)以及频谱效率(SE),满足新应用的需求。同时,物理层组播技术因其能够高效提供从点到多点的无线传输能力,逐渐成为下一代通信技术研究的重点。信道状态信息(CSI)的可用性在很大程度上决定了大规模MIMO的性能。然而,由于在大规模MIMO中获取完美的瞬时CSI颇具挑战性,使用统计CSI来设计大规模MIMO组播传输策略是合理且实际的。在本文中,为了优化系统资源效率(RE)以实现EE-SE平衡,利用统计CSI对大规模MIMO组播传输中的EE-SE权衡进行了研究。首先,我们以封闭形式给出了不同用户终端RE优化组播协方差矩阵的特征向量,这表明在大规模MIMO下行链路中,最优的RE组播预编码应该在波束域中进行。基于这一观点,最优的RE预编码设计被简化为一个资源高效的功率分配问题。通过调用二次变换,我们提出了一种迭代功率分配算法,该算法获得了一个可调整且合理的EE-SE权衡。数值模拟结果揭示了我们提出的统计CSI辅助的大规模MIMO中RE最大化的近最优性能和有效性。