Rate splitting (RS) systems can better deal with imperfect channel state information at the transmitter (CSIT) than conventional approaches. However, this requires an appropriate power allocation that often has a high computational complexity, which might be inadequate for practical and large systems. To this end, adaptive power allocation techniques can provide good performance with low computational cost. This work presents novel robust and adaptive power allocation technique for RS-based multiuser multiple-input multiple-output (MU-MIMO) systems. In particular, we develop a robust adaptive power allocation based on stochastic gradient learning and the minimization of the mean-square error between the transmitted symbols of the RS system and the received signal. The proposed robust power allocation strategy incorporates knowledge of the variance of the channel errors to deal with imperfect CSIT and adjust power levels in the presence of uncertainty. An analysis of the convexity and stability of the proposed power allocation algorithms is provided, together with a study of their computational complexity and theoretical bounds relating the power allocation strategies. Numerical results show that the sum-rate of an RS system with adaptive power allocation outperforms RS and conventional MU-MIMO systems under imperfect CSIT. %\vspace{-0.75em}
翻译:分散电率系统比常规方法更能处理发报机(发报机)不完善的频道状态信息不完善的问题。然而,这需要适当的电力分配,而这种分配往往具有很高的计算复杂性,对实用和大型系统来说可能不够。为此,适应性电力分配技术可以以低计算成本提供良好的性能。这项工作为基于RS的多用户多投入产出(MU-MIMO)系统提供了新颖的强大和适应性强力分配技术。特别是,我们根据随机梯度学习和最大限度地减少RS系统传输符号与接收信号之间的平均差值差,制定强有力的电力分配战略。拟议的强力分配战略包括了解处理不完善的CSIT的频道差,并在存在不确定性的情况下调整电力水平。对基于RS的多用户多投入多产出(MU-MIMO)系统的拟议电分配算法(MU-MIMO)的精度和稳定性进行了分析,同时研究其计算复杂性和与权力分配战略有关的理论界限。数字结果显示,在不完善的C-MUS-MIS-MIS-MIM系统下,具有适应性动力分配超出RS-MIS-MIS-MIS5MY-MY-MY系统的总率。