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Dynamic Adaptive Compressive Sensing-Based Multi-User Detection in Uplink URLLC

机译:上行链路URLLC中的动态自适应压缩感应的多用户检测

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Ultra reliable and low latency communication (URLLC) is one of the three typical service scenarios in the fifth generation mobile communications (5G) system, which supports mission-critical machine-type communication. Grant-free non-orthogonal multiple access (NOMA) system is a promising candidate technology for uplink URLLC scenario but it causes the problem of multi-user detection (MUD). In this paper, we propose a dynamic adaptive compressive sensing (DACS)-based MUD algorithm to realize MUD in URLLC scenario by exploiting user activity sparsity. Different from most of the state-of-the-art compressive sensing (CS)-based MUD algorithms, this algorithm needs no input of user activity sparsity level which may be unknown in practical system. Particularly, this algorithm adopts a stage-wise approach to increase estimated number of active users stage by stage for adaptively acquiring the true user activity sparsity level, introduces a backtracking idea to refine the estimated active user set for more accurate detection, and exploits the temporal correlation between active user sets in adjacent time slots for reducing computational complexity. Simulation results demonstrate that, although the proposed DACS-based MUD algorithm lacks the information of user activity sparsity level, it achieves better bit error rate (BER) performance than the conventional CS-based MUD algorithm.
机译:超可靠和低延迟通信(URLLC)是第五代移动通信(5G)系统中的三个典型服务方案之一,支持任务关键的机器类型通信。无授权非正交多次访问(NOMA)系统是一个有希望的候选技术,用于上行链路URLLC场景,但它会导致多用户检测(MUD)的问题。在本文中,我们提出了一种动态自适应压缩感测(DACS)基础的泥浆算法,通过利用用户活动稀疏性来实现URIFC场景中的泥浆。与大多数最先进的压缩感测(CS)的泥浆算法不同,该算法无需输入用户活动稀疏水平,在实际系统中可能是未知的。特别地,该算法采用舞台明智的方法来增加阶段的估计的活动用户阶段,以便自适应地获取真正的用户活动稀疏性级别,引入回溯想法以改进估计的活动用户设置以获得更准确的检测,并利用时间相邻时隙中的活动用户集之间的相关性,用于降低计算复杂度。仿真结果表明,虽然所提出的基于DAC的泥浆算法缺乏用户活动稀疏性级别的信息,但它比传统的基于CS的泥浆算法实现了更好的误码率(BER)性能。

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