论文标题
基于协方差的合作活动检测,用于大量无赠款随机访问
Covariance-Based Cooperative Activity Detection for Massive Grant-Free Random Access
论文作者
论文摘要
本文设计了一个合作活动检测框架,可根据接收点(APS)接收信号的协方差在第六代(6G)无单元的无线网络中进行大规模无授予的随机访问。特别是,多个AP仅通过与邻居交换低维中间的本地信息来合作检测设备活动。合作活动检测问题是非平滑的,未知变量彼此耦合,而常规方法是不可应用的。因此,本文提出了一种基于协方差的算法,通过利用相邻AP之间的设备状态向量的稀疏性促进性和相似性术语。基于近端梯度方法提出了一种近似分裂方法,以解决法式问题。仿真结果表明,所提出的算法对于大规模的活动检测问题是有效的,而与最先进的算法相比,在实现相同的系统性能方面需要较短的试点序列。
This paper designs a cooperative activity detection framework for massive grant-free random access in the sixth-generation (6G) cell-free wireless networks based on the covariance of the received signals at the access points (APs). In particular, multiple APs cooperatively detect the device activity by only exchanging the low-dimensional intermediate local information with their neighbors. The cooperative activity detection problem is non-smooth and the unknown variables are coupled with each other for which conventional approaches are inapplicable. Therefore, this paper proposes a covariance-based algorithm by exploiting the sparsity-promoting and similarity-promoting terms of the device state vectors among neighboring APs. An approximate splitting approach is proposed based on the proximal gradient method for solving the formulated problem. Simulation results show that the proposed algorithm is efficient for large-scale activity detection problems while requires shorter pilot sequences compared with the state-of-art algorithms in achieving the same system performance.