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首页> 外文期刊>IEEE communications letters >Two-Level Sparse Structure-Based Compressive Sensing Detector for Uplink Spatial Modulation With Massive Connectivity
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Two-Level Sparse Structure-Based Compressive Sensing Detector for Uplink Spatial Modulation With Massive Connectivity

机译:基于两级稀疏结构的压缩传感器,用于具有大规模连接的上行链路空间调制

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Spatial modulation (SM) with high spectrum and energy efficiencies is promising for future massive connectivity communication networks, in which user activities are often sporadic and SM signals are sparse. Such characteristics, if exploited in the detection process, will lead to gains in terms of receiver complexity and performance. This letter proposes a compressive sensing (CS) algorithm for multiuser detection in SM-MIMO systems to efficiently exploit such characteristics. Specifically, the temporal correlation of the user activities and the random transmission nature of SM signals are used to improve detection performance without requiring prior knowledge of the user sparsity level. In addition, the proposed algorithm requires a lower number of BS receive and transmit antennas in each user compared with existing CS-based detection algorithms and has a significantly lower computational complexity.
机译:具有高频谱和能量效率的空间调制(SM)对未来的大规模连接通信网络有前途,其中用户活动通常是零星的,SM信号稀疏。如果在检测过程中利用,这些特征将导致接收器复杂性和性能的提升。这封信提出了一种用于SM-MIMO系统中的多用户检测的压缩感测(CS)算法,以有效利用这些特性。具体地,使用SM信号的用户活动的时间相关和SM信号的随机传输性质来改善检测性能而不需要先验知识的用户稀疏水平。另外,与现有的基于CS的检测算法相比,所提出的算法需要较低数量的BS接收和发送天线,并且具有显着较低的计算复杂度。

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