论文标题

强化学习用于减轻Terahertz通信网络中间歇性干扰

Reinforcement Learning for Mitigating Intermittent Interference in Terahertz Communication Networks

论文作者

Barazideh, Reza, Semiari, Omid, Niknam, Solmaz, Natarajan, Balasubramaniam

论文摘要

具有极高数据速率要求的新兴无线服务,例如实时扩展现实应用程序,要求新颖的解决方案进一步提高未来无线网络的能力。在这方面,在Terahertz频带上利用大型可用带宽被视为关键推动器。为了克服在这些高频率下的巨大传播损失,不可避免地要在高度方向的链接上进行传输。但是,大量用户的不协调的方向传输可能会对Terahertz网络引起重大干扰。虽然将在短时间间隔内收到这种干扰,但收到的功率可能很大。在这项工作中,提出了一个基于强化学习的新框架,该框架使用自适应的多阈值策略来有效地检测和减轻时间域中的方向链接的间歇性干扰。为了找到最佳阈值,该问题被公式为多维多臂匪徒系统。然后,提出了一种算法,该算法允许接收器以非常低的复杂性学习最佳阈值。提出的方法的另一个主要优点是,它不依赖有关干扰统计的任何先验知识,因此,它适合在动态场景中缓解干扰。与两种传统的时间域干扰方法相比,仿真结果证实了该方法的出色位误差性能。

Emerging wireless services with extremely high data rate requirements, such as real-time extended reality applications, mandate novel solutions to further increase the capacity of future wireless networks. In this regard, leveraging large available bandwidth at terahertz frequency bands is seen as a key enabler. To overcome the large propagation loss at these very high frequencies, it is inevitable to manage transmissions over highly directional links. However, uncoordinated directional transmissions by a large number of users can cause substantial interference in terahertz networks. While such interference will be received over short random time intervals, the received power can be large. In this work, a new framework based on reinforcement learning is proposed that uses an adaptive multi-thresholding strategy to efficiently detect and mitigate the intermittent interference from directional links in the time domain. To find the optimal thresholds, the problem is formulated as a multidimensional multi-armed bandit system. Then, an algorithm is proposed that allows the receiver to learn the optimal thresholds with very low complexity. Another key advantage of the proposed approach is that it does not rely on any prior knowledge about the interference statistics, and hence, it is suitable for interference mitigation in dynamic scenarios. Simulation results confirm the superior bit-error-rate performance of the proposed method compared with two traditional time-domain interference mitigation approaches.

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