论文标题

MMWave混合圆柱阵列的基于张量的多维宽带通道估计

Tensor-based Multi-dimensional Wideband Channel Estimation for mmWave Hybrid Cylindrical Arrays

论文作者

Lin, Zhipeng, Lv, Tiejun, Ni, Wei, Zhang, J. Andrew, Liu, Ren Ping

论文摘要

通道估计对于混合毫米波(MMWave)大规模天线阵列具有挑战性,在5G/B5G应用中有希望。这些挑战与由混合前端,梁斜视和对接收器噪声的敏感性造成的角度分辨率损失有关。基于张量信号处理,本文提出了一种新型的多维方法,用于通道参数估计,具有大规模的MMWave杂种均匀的圆形圆柱阵列(UCYAS),其大小和相互偶联,但已知,但已知具有无限二维阵列的响应和耐用性。我们设计了一种新的分辨率保存杂种束形和低复杂的束式抑制方法,并揭示了UCYA接收到的阵列信号的张量模型中的移位不变关系。利用这些关系,我们提出了一种新的基于张量的子空间估计算法,以抑制所有维度(时间,频率和空间)的接收器噪声。该算法可以从相干和不连贯的信号中准确估算通道参数。由Cramér-Rao下限(CRLB)证实,模拟结果表明,所提出的算法能够达到比现有基于矩阵的技术的估计精度,具有可比的计算复杂性。

Channel estimation is challenging for hybrid millimeter wave (mmWave) large-scale antenna arrays which are promising in 5G/B5G applications. The challenges are associated with angular resolution losses resulting from hybrid front-ends, beam squinting, and susceptibility to the receiver noises. Based on tensor signal processing, this paper presents a novel multi-dimensional approach to channel parameter estimation with large-scale mmWave hybrid uniform circular cylindrical arrays (UCyAs) which are compact in size and immune to mutual coupling but known to suffer from infinite-dimensional array responses and intractability. We design a new resolution-preserving hybrid beamformer and a low-complexity beam squinting suppression method, and reveal the existence of shift-invariance relations in the tensor models of received array signals at the UCyA. Exploiting these relations, we propose a new tensor-based subspace estimation algorithm to suppress the receiver noises in all dimensions (time, frequency, and space). The algorithm can accurately estimate the channel parameters from both coherent and incoherent signals. Corroborated by the Cramér-Rao lower bound (CRLB), simulation results show that the proposed algorithm is able to achieve substantially higher estimation accuracy than existing matrix-based techniques, with a comparable computational complexity.

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