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Joint Transceiver and Large Intelligent Surface Design for Massive MIMO mmWave Systems

机译:大型MIMO MMWAVE系统的联合收发器和大型智能表面设计

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摘要

Large intelligent surface (LIS) has recently emerged as a potential low-cost solution to reshape the wireless propagation environment for improving the spectral efficiency. In this article, we consider a downlink millimeter-wave (mmWave) multiple-input-multiple-output (MIMO) system, where an LIS is deployed to assist the downlink data transmission from a base station (BS) to a user equipment (UE). Both the BS and the UE are equipped with a large number of antennas, and a hybrid analog/digital precoding/combining structure is used to reduce the hardware cost and energy consumption. We aim to maximize the spectral efficiency by jointly optimizing the LIS's reflection coefficients and the hybrid precoder (combiner) at the BS (UE). To tackle this non-convex problem, we reformulate the complex optimization problem into a much more friendly optimization problem by exploiting the inherent structure of the effective (cascade) mmWave channel. A manifold optimization (MO)-based algorithm is then developed. Simulation results show that by carefully devising LIS's reflection coefficients, our proposed method can help realize a favorable propagation environment with a small channel matrix condition number. Besides, it can achieve a performance comparable to those of state-of-the-art algorithms, while at a much lower computational complexity.
机译:大型智能表面(LIS)最近被出现为潜在的低成本解决方案,以重塑无线传播环境以提高光谱效率。在本文中,我们考虑一个下行链路毫米波(MMWAVE)多输入多输出(MIMO)系统,其中部署LIS以帮助从基站(BS)到用户设备的下行数据传输(UE )。 BS和UE都配备有大量天线,并且混合模拟/数字预编码/组合结构用于降低硬件成本和能量消耗。我们的目标是通过在BS(UE)处共同优化LIS的反射系数和混合预制系数(HOMINGER)来最大化光谱效率。为了解决这个非凸面问题,通过利用有效(级联)MMWAVE通道的固有结构,我们将复杂的优化问题重构为更友好的优化问题。然后开发了歧管优化(Mo)基于算法。仿真结果表明,通过仔细设计LIS的反射系数,我们所提出的方法可以帮助实现具有小信道矩阵条件号的有利传播环境。此外,它可以实现与最先进的算法相当的性能,而计算复杂性更低。

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