Federated Deep Reinforcement Learning for THz-Beam Search with Limited CSI

Po-chun Hsu, Li-Hsiang Shen, Chun-Hung Liu, Kai-Ten Feng
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引用次数: 3

Abstract

Terahertz (THz) communication with ultra-wide available spectrum is a promising technique that can achieve the stringent requirement of high data rate in the next-generation wireless networks, yet its severe propagation attenuation significantly hinders its implementation in practice. Finding beam directions for a large-scale antenna array to effectively overcome severe propagation attenuation of THz signals is a pressing need. This paper proposes a novel approach of federated deep reinforcement learning (FDRL) to swiftly perform THz-beam search for multiple base stations (BSs) coordinated by an edge server in a cellular network. All the BSs conduct deep deterministic policy gradient (DDPG)-based DRL to obtain THz beamforming policy with limited channel state information (CSI). They update their DDPG models with hidden information in order to mitigate inter-cell interference. We demonstrate that the cell network can achieve higher throughput as more THz CSI and hidden neurons of DDPG are adopted. We also show that FDRL with partial model update is able to nearly achieve the same performance of FDRL with full model update, which indicates an effective means to reduce communication load between the edge server and the BSs by partial model uploading. Moreover, the proposed FDRL outperforms conventional non-learning-based and existing non-FDRL benchmark optimization methods.
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有限CSI下太赫兹波束搜索的联合深度强化学习
太赫兹(THz)超宽可用频谱通信是一种很有前途的技术,可以满足下一代无线网络对高数据速率的严格要求,但其严重的传播衰减严重阻碍了其在实际应用中的实现。为有效克服太赫兹信号严重的传播衰减,确定大规模天线阵列的波束方向是一个迫切需要。本文提出了一种新的联合深度强化学习(FDRL)方法,以快速执行蜂窝网络中由边缘服务器协调的多个基站(BSs)的太赫兹波束搜索。所有的BSs都进行了基于深度确定性策略梯度(DDPG)的DRL,以获得有限信道状态信息(CSI)的太赫兹波束形成策略。他们用隐藏的信息更新他们的DDPG模型,以减轻细胞间的干扰。研究表明,采用更多的太赫兹CSI和DDPG隐藏神经元可以提高细胞网络的吞吐量。模型部分更新后的FDRL几乎可以达到完全更新后的FDRL的性能,这表明通过模型部分上传可以有效地减少边缘服务器与BSs之间的通信负荷。此外,所提出的FDRL优于传统的非基于学习和现有的非FDRL基准优化方法。
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