室内毫米波网络的学习辅助波束搜索

Yu-Jia Chen, Wei-Yuan Cheng, Li-Chun Wang
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引用次数: 14

摘要

提出了一种用于多基站室内毫米波网络的学习辅助波束搜索方案。近年来,在毫米波频率范围内,定向天线常被用于实现高数据速率和补偿高自由空间损耗。然而,由于扇区搜索空间随设备移动性和基站密度的变化而变化,在室内移动环境中建立具有窄波束宽度的可靠通信链路是一项具有挑战性的任务。为了解决这个问题,我们开发了一种多状态q学习方法,将基站选择纳入波束选择过程。通过利用射线追踪模拟的无线电环境数据,该学习方法可以针对不同的室内环境和移动模式实现快速可靠的波束选择。仿真结果表明,该方案在波束搜索延迟、链路中断时间和聚合吞吐量方面优于基于现有穷举搜索方法和原始q -学习方法的波束搜索方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Learning-assisted beam search for indoor mmWave networks
This paper proposes a learning-assisted beam search scheme for indoor millimeter wave (mmWave) networks with multi-base stations. Recently, directional antennas are often used to achieve the high data rates and compensate the high freespace loss in the mmWave frequency range. However, establishing reliable communication links with narrow beamwidth is a challenging task in indoor moving environments since the sector search space scales with device mobility and base station density. To tackle such an issue, we develop a multi-state Q-learning approach that incorporates the base station selection into the beam selection process. By exploiting the radio environment data from ray tracing simulation, the proposed learning approach can enable fast and reliable beam selection for different indoor environments and mobility patterns. Simulation results show that the proposed scheme outperforms the beam search schemes based on the existing exhaustive search approach and the original Q-learning approach in terms of beam search latency, link outage times, and aggregated throughput.
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