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首页> 外文期刊>IEEE Transactions on Signal Processing >Tensor-Based Channel Estimation for Dual-Polarized Massive MIMO Systems
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Tensor-Based Channel Estimation for Dual-Polarized Massive MIMO Systems

机译:双极化大规模MIMO系统的基于张量的信道估计

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The 3GPP suggests to combine dual polarized (DP) antenna arrays with the double directional (DD) channel model for downlink channel estimation. This combination strikes a good balance between high-capacity communications and parsimonious channel modeling, and also brings limited feedback schemes for downlink channel state information within reach-since such channel can be fully characterized by several key parameters. However, most existing channel estimation work under the DD model has not yet considered DP arrays, perhaps because of the complex array manifold and the resulting difficulty in algorithm design. In this paper, we first reveal that the DD channel with DP arrays at the transmitter and receiver can be naturally modeled as a low-rank tensor, and thus the key parameters of the channel can be effectively estimated via tensor decomposition algorithms. On the theory side, we show that the DD-DP parameters are identifiable under mild conditions, by leveraging identifiability of low-rank tensors. Furthermore, a compressed tensor decomposition algorithm is developed for alleviating the downlink training overhead. We show that, by using judiciously designed pilot structure, the channel parameters are still guaranteed to be identified via the compressed tensor decomposition formulation even when the size of the pilot sequence is much smaller than what is needed for conventional channel identification methods, such as linear least squares and matched filtering. Extensive simulations are employed to showcase the effectiveness of the proposed method.
机译:3GPP建议将双极化(DP)天线阵列与双向(DD)信道模型结合起来,以进行下行链路信道估计。这种组合在大容量通信和简约的信道建模之间达到了良好的平衡,并且还为有限范围内的下行链路信道状态信息带来了有限的反馈方案,因为这种信道可以通过几个关键参数来充分表征。然而,可能是由于复杂的数组流形以及由此带来的算法设计困难,DD模型下大多数现有的信道估计工作尚未考虑DP数组。在本文中,我们首先揭示了在发送器和接收器处带有DP阵列的DD通道可以自然地建模为低秩张量,因此可以通过张量分解算法有效地估计通道的关键参数。从理论上讲,我们表明通过利用低秩张量的可识别性,DD-DP参数在温和条件下是可识别的。此外,开发了一种压缩张量分解算法以减轻下行链路训练开销。我们表明,通过谨慎设计导频结构,即使导频序列的大小比常规信道识别方法(例如线性)所需的小得多,仍可以保证通过压缩张量分解公式来识别信道参数。最小二乘和匹配过滤。大量的模拟被用来展示所提出的方法的有效性。

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