Reconfigurable intelligent surface based hybrid precoding for THz communications

Yu Lu;Mo Hao;Richard Mackenzie
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引用次数: 30

Abstract

Benefiting from the growth of the bandwidth, Terahertz (THz) communication can support the new application with explosive requirements of the ultra-high-speed rates for future 6G wireless systems. In order to compensate for the path loss of high frequency, massive Multiple-Input Multiple-Output (MIMO) can be utilized for high array gains by beamforming. However, the existing THz communication with massive MIMO has remarkably high energy consumption because a large number of analog phase shifters should be used to realize the analog beamforming. To solve this problem, a Reconfigurable Intelligent Surface (RIS) based hybrid precoding architecture for THz communication is developed in this paper, where the energy-hungry phased array is replaced by the energy-efficient RIS to realize the analog beamforming of the hybrid precoding. Then, based on the proposed RIS-based architecture, a sum-rate maximization problem for hybrid precoding is investigated. Since the phase shifts implemented by RIS in practice are often discrete, this sum-rate maximization problem with a non-convex constraint is challenging. Next, the sum-rate maximization problem is reformulated as a parallel Deep Neural Network (DNN) based classification problem, which can be solved by the proposed low-complexity Deep Learning based Multiple Discrete Classification (DL-MDC) hybrid precoding scheme. Finally, we provide numerous simulation results to show that the proposed DL-MDC scheme works well both in the theoretical Saleh-Valenzuela channel model and practical 3GPP channel model. Compared with existing iterative search algorithms, the proposed DL-MDC scheme significantly reduces the runtime with a negligible performance loss.
太赫兹通信的可重构智能表面混合预编码
得益于带宽的增长,太赫兹通信可以支持未来6G无线系统对超高速率的爆炸性需求。为了补偿高频的路径损耗,可以通过波束成形利用大规模多输入多输出(MIMO)来获得高阵列增益。然而,由于需要使用大量的模拟移相器来实现模拟波束形成,现有的大规模MIMO太赫兹通信具有非常高的能耗。为了解决这一问题,本文提出了一种基于可重构智能表面(RIS)的太赫兹通信混合预编码结构,用高能效RIS代替高能耗相控阵,实现混合预编的模拟波束形成。然后,基于所提出的基于RIS的体系结构,研究了混合预编码的和速率最大化问题。由于RIS在实践中实现的相移通常是离散的,因此这种具有非凸约束的和速率最大化问题具有挑战性。接下来,将和速率最大化问题重新表述为基于并行深度神经网络(DNN)的分类问题,该问题可以通过所提出的基于深度学习的多离散分类(DL-MDC)混合预编码方案来解决。最后,我们提供了大量的仿真结果,表明所提出的DL-MDC方案在理论上的Saleh Valenzuela信道模型和实际的3GPP信道模型中都能很好地工作。与现有的迭代搜索算法相比,所提出的DL-MDC方案显著减少了运行时间,性能损失可以忽略不计。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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