Massive connectivity for extra large-scale multi-input multi-output (XL-MIMO) systems is a challenging issue due to the near-field access channels and the prohibitive cost. In this paper, we propose an uplink grant-free massive access scheme for XL-MIMO systems, in which a mixed-analog-to-digital converters (ADC) architecture is adopted to strike the right balance between access performance and power consumption. By exploiting the spatial-domain structured sparsity and the piecewise angular-domain cluster sparsity of massive access channels, a compressive sensing (CS)-based two-stage orthogonal approximate message passing algorithm is proposed to efficiently solve the joint activity detection and channel estimation problem. Particularly, high-precision quantized measurements are leveraged to perform accurate hyper-parameter estimation, thereby facilitating the activity detection. Moreover, we adopt a subarray-wise estimation strategy to overcome the severe angular-domain energy dispersion problem which is caused by the near-field effect in XL-MIMO channels. Simulation results verify the superiority of our proposed algorithm over state-of-the-art CS algorithms for massive access based on XL-MIMO with mixed-ADC architectures.
翻译:Translated abstract:
在超大规模多输入多输出(XL-MIMO)系统中实现大规模连接是一个具有挑战性的问题,原因是近场接入信道和成本高昂。本文提出了一种上行免许可证的XL-MIMO系统大规模接入方案,采用混合模拟数字转换器(ADC)结构,在访问性能和功耗之间取得平衡。通过利用大规模接入信道的空域结构稀疏性和角域簇稀疏性,提出了一种基于压缩感知(CS)的两阶段正交近似消息传递算法,高效地解决联合活动检测和通道估计问题。特别地,利用高精度量化测量数据进行准确的超参数估计,以促进活动检测。此外,我们采用子阵列估计策略,以克服近场效应引起的角域能量分散严重的问题。仿真结果验证了我们提出的基于混合ADC结构XL-MIMO的大规模接入CS算法优于现有CS算法的优越性。