LPWAN系统中电池寿命延长的学习辅助多鼠操作

Martin Stusek, D. Moltchanov, Pavel Mašek, Jiri Hosek, S. Andreev, Y. Koucheryavy
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引用次数: 9

摘要

终端设备(ED)寿命被认为是用于大规模机器型通信的无线电系统的一个关键设计因素。该参数受到ED和基站之间不断变化的传播条件的严重影响。为了延长ED的寿命,我们考虑在单个ED中配置多种低功耗广域网(LPWAN)技术,以动态选择能耗较低的ED。为了促进这一过程,我们建议采用强化学习(RL)算法。为了评估最终的性能,我们进行了两次大规模的测量活动,以表征NB-IoT、Sigfox和LoRaWAN技术的ED功耗和随时间变化的传播条件。数值结果表明,所设计的方案能及时响应不同的无线电条件,有效地降低了ED功耗。因此,ED的预期寿命延长了10%左右。例如,汤普森采样技术提供了最一致的结果,优于同类技术,允许利用高达99%的理论增益,同时只收敛25-50个样本。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Learning-Aided Multi-RAT Operation for Battery Lifetime Extension in LPWAN Systems
End-device (ED) lifetime is considered to be a crucial design factor in radio systems for massive machine-type communications. This parameter is heavily impacted by the continuously changing propagation conditions between the ED and the base station. In this paper, to extend the ED lifetime, we consider equipping a single ED with multiple low-power wide-area network (LPWAN) technologies to dynamically select the one with lower energy consumption. To facilitate this process, we propose to employ reinforcement learning (RL) algorithms. Assessing the resultant performance, we conduct two large-scale measurement campaigns that characterize the ED power consumption and the time-dependent propagation conditions for NB-IoT, Sigfox, and LoRaWAN technologies. Our numerical results demonstrate that the designed schemes effectively reduce ED power consumption by timely reacting to the varying radio conditions. Consequently, the ED lifetime expectancy is prolonged by around 10%. For instance, the Thompson sampling technique delivers the most consistent results by outperforming its counterparts and allowing to exploit up to 99% of the theoretical gains while converging over only 25-50 samples.
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