Power consumption is one of the major issues in massive MIMO (multiple input multiple output) systems, causing increased long-term operational cost and overheating issues. In this paper, we consider per-antenna power allocation with a given finite set of power levels towards maximizing the long-term energy efficiency of the multi-user systems, while satisfying the QoS (quality of service) constraints at the end users in terms of required SINRs (signal-to-interference-plus-noise ratio), which depends on channel information. Assuming channel states to vary as a Markov process, the constraint problem is modeled as an unconstraint problem, followed by the power allocation based on Q-learning algorithm. Simulation results are presented to demonstrate the successful minimization of power consumption while achieving the SINR threshold at users.
翻译:电力消耗是大型MIMO(多重投入多重产出)系统的主要问题之一,这导致长期运营成本增加和过热问题。 在本文中,我们考虑在一定限度的电量范围内,以一定的电量水平进行全天线电力分配,以最大限度地提高多用户系统的长期能源效率,同时满足终端用户在需要的SINIRS(信号对干涉+噪音比率)方面所面临的质量限制,这取决于频道信息。 假设频道州因马尔科夫程序而变化,限制问题被模拟为非约束性问题,其次是基于Q学习算法的电力分配。 模拟结果显示在用户达到SINIR门槛的同时成功最大限度地减少电力消耗。