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Reinforcement Learning to Minimize Age of Information with an Energy Harvesting Sensor with HARQ and Sensing Cost

机译:加强学习,以最大限度地利用带有HARQ和感测成本的能量收集传感器的信息年龄

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The time average expected age of information (AoI) is studied for status updates sent from an energy-harvesting transmitter with a finite-capacity battery. The optimal scheduling policy is first studied under different feedback mechanisms when the channel and energy harvesting statistics are known. For the case of unknown environments, an average-cost reinforcement learning algorithm is proposed that learns the system parameters and the status update policy in real time. The effectiveness of the proposed methods is verified through numerical results.
机译:研究了信息(AOI)的时间平均预期年龄(AOI)的状态更新,通过有限容量电池从能量收集发射器发送的状态更新。首先在已知信道和能量收集统计数据时在不同反馈机制下研究最佳调度策略。对于未知环境的情况,提出了平均成本的增强学习算法,从而实时了解系统参数和状态更新策略。通过数值结果验证了所提出的方法的有效性。

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