MmWave extra-large-scale MIMO based active user detection and channel estimation for high-speed railway communications

Anwen Liao , Ruiqi Wang , Yikun Mei , Ziwei Wan , Shicong Liu , Zhen Gao , Hua Wang , Hao Yin
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Abstract

The current High-Speed Railway (HSR) communications increasingly fail to satisfy the massive access services of numerous user equipment brought by the increasing number of people traveling by HSRs. To this end, this paper investigates millimeter-Wave (mmWave) extra-large scale (XL)-MIMO-based massive Internet-of-Things (IoT) access in near-field HSR communications, and proposes a block simultaneous orthogonal matching pursuit (B-SOMP)-based Active User Detection (AUD) and Channel Estimation (CE) scheme by exploiting the spatial block sparsity of the XL-MIMO-based massive access channels. Specifically, we first model the uplink mmWave XL-MIMO channels, which exhibit the near-field propagation characteristics of electromagnetic signals and the spatial non-stationarity of mmWave XL-MIMO arrays. By exploiting the spatial block sparsity and common frequency-domain sparsity pattern of massive access channels, the joint AUD and CE problem can be then formulated as a Multiple Measurement Vectors Compressive Sensing (MMV-CS) problem. Based on the designed sensing matrix, a B-SOMP algorithm is proposed to achieve joint AUD and CE. Finally, simulation results show that the proposed solution can obtain a better AUD and CE performance than the conventional CS-based scheme for massive IoT access in near-field HSR communications.

高速铁路通信中基于毫米波超大规模MIMO的主动用户检测与信道估计
目前的高速铁路通信越来越不能满足乘坐高铁出行的人数不断增加所带来的海量用户设备接入服务。为此,本文研究了基于毫米波(mmWave)超大规模(XL) mimo的近场高速铁路大规模物联网(IoT)接入,并利用基于XL- mimo的大规模接入信道的空间块稀疏性,提出了一种基于块同步正交匹配追踪(B-SOMP)的主动用户检测(AUD)和信道估计(CE)方案。具体而言,我们首先对上行毫米波XL-MIMO信道进行建模,该信道展示了电磁信号的近场传播特性和毫米波XL-MIMO阵列的空间非平稳性。通过利用海量接入信道的空间块稀疏性和公共频域稀疏性模式,可以将联合AUD和CE问题表述为多测量向量压缩感知(MMV-CS)问题。在设计感知矩阵的基础上,提出了一种B-SOMP算法来实现联合AUD和CE。最后,仿真结果表明,在近场高铁通信中,与传统的基于cs的大规模物联网接入方案相比,该方案可以获得更好的AUD和CE性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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