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Joint Synchronization and Compressive Estimation for Frequency-Selective mmWave MIMO Systems

机译:频率选择毫米波MIMO系统的联合同步和压缩估计

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A major challenge to establish and maintain millimeter wave (mmWave) links amounts as to how to obtain channel information to configure hybrid precoders and combiners in a hybrid architecture. Owing to lack of prior information on the wireless channel, achieving time-frequency synchronization between transmitter and receiver is one of the greatest challenges that needs to be solved in order to acquire Channel State Information (CSI). In this paper, we study and find the Maximum Likelihood (ML) solution to the joint problem of time-frequency synchronization and compressive channel estimation for broadband mmWave MIMO systems with hybrid architectures. Simulation results show that, using as few training symbols as in the 5G New Radio (NR) communications standard, near-optimum data rates can be achieved even at the very low SNR regime, thereby emphasizing the suitability of compressive channel estimation even when synchronization has not been performed at the receiver side.
机译:建立和维护毫米波(mmWave)链接的主要挑战在于如何获得信道信息以配置混合体系结构中的混合预编码器和组合器。由于在无线信道上缺少先验信息,因此在发射机和接收机之间实现时频同步是获取信道状态信息(CSI)需要解决的最大挑战之一。在本文中,我们研究并找到了具有混合架构的宽带mmWave MIMO系统的时频同步和压缩信道估计联合问题的最大似然(ML)解决方案。仿真结果表明,使用与5G新无线电(NR)通信标准中一样少的训练符号,即使在非常低的SNR情况下也可以实现近乎最佳的数据速率,从而强调了压缩信道估计的适用性,即使在同步时,接收方未执行。

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