Network-Assisted Full-Duplex Millimeter-Wave Cell-Free Massive MIMO with Localization-Aided Inter-User Channel Estimation

Shuto Fukue, G. Abreu, K. Ishibashi
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Abstract

We propose a joint resource allocation and beam-forming design with location-aided channel estimation to mitigate the inter-user interference in network-assisted full-duplex (NAFD) cell-free (CF) massive multiple-input multiple-output (mMIMO) systems operating in millimeter-wave (mmWave) channels. The key idea is to utilize the approximate estimates of the channels between users that can be obtained from knowledge of user locations, since mmWave channels are dominated by line-of-sight (LoS) paths due to their high propagation loss nature. This rough channel state information (CSI) enables the system to judiciously choose access points (APs) and design beamformers to significantly enhance the performance of the NAFD CF-mMIMO system. Simulation results confirm that the total throughput of the proposed methods is close to that with the perfect channel knowledge between inter-user channels.
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网络辅助全双工毫米波无小区大规模MIMO与定位辅助用户间信道估计
我们提出了一种具有位置辅助信道估计的联合资源分配和波束形成设计,以减轻在毫米波(mmWave)信道中运行的网络辅助全双工(NAFD)无单元(CF)大规模多输入多输出(mMIMO)系统中的用户间干扰。关键思想是利用可以从用户位置知识中获得的用户之间信道的近似估计,因为毫米波信道由于其高传播损耗性质而由视距(LoS)路径主导。这种粗略的信道状态信息(CSI)使系统能够明智地选择接入点(ap)和设计波束形成器,从而显着提高NAFD CF-mMIMO系统的性能。仿真结果表明,该方法的总吞吐量接近于在用户间信道知识完备的情况下的吞吐量。
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