智能反射面辅助无线网络稀疏活动检测

Mangqing Guo, M. C. Gursoy
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引用次数: 2

摘要

研究了智能反射面辅助无线网络中的稀疏活动检测问题。采用广义近似报文传递(GAMP)算法,首先从基站(BS)获得等效有效信道系数的最小均方误差(MMSE)估计,并将接收到的导频信号转换为等效有效信道系数的加性高斯噪声破坏版本。随后,使用基于高斯噪声破坏等效有效信道系数的似然比检验对每个用户的活动进行多个决策。最后,利用最优融合规则对所有用户的活动进行最终决策,同时考虑每个用户先前的活动决策和相应的可靠性。数值结果表明,本文提出的稀疏活动性检测方法的平均误差概率随着信噪比、导频数、BS处天线数或IRS处单元数的增加而减小。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sparse Activity Detection in Intelligent Reflecting Surface Assisted Wireless Networks
The sparse activity detection in intelligent reflecting surface (IRS) assisted wireless networks is investigated in this paper. With generalized approximate message passing (GAMP) algorithm, we first obtain the minimum mean square error (MMSE) estimates of the equivalent effective channel coefficients from the base station (BS) to the users, and convert the received pilot signals into additive Gaussian noise corrupted versions of the equivalent effective channel coefficients. Subsequently, multiple decisions on the activity of each user are made using the likelihood ratio test based on the Gaussian noise corrupted equivalent effective channel coefficients. At last, final decisions on the activity of all users are made with the optimal fusion rule, taking into account the previous decisions on the activity of each user and the corresponding reliabilities. Numerical results show that the average error probability of the sparse activity detection method proposed in this paper diminishes as the SNR, number of pilots, number of antennas at the BS or number of elements at the IRS increases.
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