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Q-Learning Algorithm for VoLTE Closed Loop Power Control in Indoor Small Cells

机译:室内小型小区中VoLTE闭环功率控制的Q学习算法

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We propose a reinforcement learning (RL) based closed loop power control algorithm for the downlink of the voice over LTE (VoLTE) radio bearer for an indoor environment served by small cells. The main contributions of our paper are to 1) use RL to solve performance tuning problems in an indoor cellular network for voice bearers and 2) show that our derived lower bound loss in effective signal to interference plus noise ratio due to neighboring cell failure is sufficient for VoLTE power control purposes in practical cellular networks. In our simulation, the proposed RL-based power control algorithm significantly improves both voice retainability and mean opinion score compared to current industry standards. The improvement is due to maintaining an effective downlink signal to interference plus noise ratio against adverse network operational issues and faults.
机译:我们为小型小区服务的室内环境中的LTE语音(VoLTE)无线电承载下行链路提出了一种基于强化学习(RL)的闭环功率控制算法。本文的主要贡献在于:1)使用RL解决室内蜂窝网络中用于语音承载的性能调整问题,以及2)表明我们得出的有效信噪比下限损失(由于邻小区故障而引起的噪声和噪声比)已足够在实际的蜂窝网络中用于VoLTE功率控制目的。在我们的仿真中,与当前行业标准相比,基于RL的功率控制算法可以显着提高语音保留性和平均意见得分。改进归因于针对不利的网络运行问题和故障,维持了有效的下行链路信噪比与噪声比。

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