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A Dimension Reduction-Based Joint Activity Detection and Channel Estimation Algorithm for Massive Access

机译:一种基于降维的大规模接入联合活动检测和信道估计算法

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Grant-free random access is a promising protocol to support massive access in beyond fifth-generation (B5G) cellular Internet-of-Things (IoT) with sporadic traffic. Specifically, in each coherence interval, the base station (BS) performs joint activity detection and channel estimation (JADCE) before data transmission. Due to the deployment of a large-scale antennas array and the existence of a huge number of IoT devices, JADCE usually has high computational complexity and needs long pilot sequences. To solve these challenges, this paper proposes a dimension reduction method, which projects the original device state matrix to a low-dimensional space by exploiting its sparse and low-rank structure. Then, we develop an optimized design framework with a coupled full column rank constraint for JADCE to reduce the size of the search space. However, the resulting problem is non-convex and highly intractable, for which the conventional convex relaxation approaches are inapplicable. To this end, we propose a logarithmic smoothing method for the non-smoothed objective function and transform the interested matrix to a positive semidefinite matrix, followed by giving a Riemannian trust-region algorithm to solve the problem in complex field. Simulation results show that the proposed algorithm is efficient to a large-scale JADCE problem and requires shorter pilot sequences than the state-of-art algorithms which only exploit the sparsity of device state matrix.
机译:无授予许可的随机访问是一种有前途的协议,可以支持具有零星流量的第五代(B5G)蜂窝物联网(IoT)之外的大规模访问。具体地,在每个相干间隔中,基站(BS)在数据传输之前执行联合活动检测和信道估计(JADCE)。由于大规模天线阵列的部署以及大量物联网设备的存在,JADCE通常具有较高的计算复杂度,并且需要较长的导频序列。为了解决这些挑战,本文提出了一种降维方法,该方法通过利用原始设备状态矩阵的稀疏和低秩结构将其投影到低维空间。然后,我们为JADCE开发了具有耦合的全列秩约束的优化设计框架,以减小搜索空间的大小。然而,所产生的问题是非凸的并且非常棘手,对于它们而言,常规的凸弛豫方法是不适用的。为此,我们提出了一种用于非平滑目标函数的对数平滑方法,将感兴趣的矩阵转换为正半定矩阵,然后给出了黎曼信赖域算法来解决复杂领域中的问题。仿真结果表明,与仅利用设备状态矩阵稀疏性的最新算法相比,该算法对大规模JADCE问题有效,并且所需的导频序列更短。

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