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Open AccessJournal ArticleDOI

An Overview of Low-Rank Channel Estimation for Massive MIMO Systems

TLDR
A general overview of the current low-rank channel estimation approaches is provided, including their basic assumptions, key results, as well as pros and cons on addressing the aforementioned tricky challenges.
Abstract
Massive multiple-input multiple-output is a promising physical layer technology for 5G wireless communications due to its capability of high spectrum and energy efficiency, high spatial resolution, and simple transceiver design. To embrace its potential gains, the acquisition of channel state information is crucial, which unfortunately faces a number of challenges, such as the uplink pilot contamination, the overhead of downlink training and feedback, and the computational complexity. In order to reduce the effective channel dimensions, researchers have been investigating the low-rank (sparse) properties of channel environments from different viewpoints. This paper then provides a general overview of the current low-rank channel estimation approaches, including their basic assumptions, key results, as well as pros and cons on addressing the aforementioned tricky challenges. Comparisons among all these methods are provided for better understanding and some future research prospects for these low-rank approaches are also forecasted.

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Citations
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Proceedings ArticleDOI

On the Sample Complexity of Estimating Small Singular Modes

TL;DR: A mathematical framework based on the matrix perturbation analysis is developed to characterize the noise level of estimating small singular modes by n samples and shows that under mild assumptions on the sample noise, it requires at least n = O(η−2) samples to well estimate the singular modes with the singular value in the order of some small η.
Posted Content

Time-Varying Massive MIMO Channel Estimation: Capturing, Reconstruction and Restoration

TL;DR: In this paper, a coordinate-wise maximization based expectation maximization (EM) algorithm is adopted for capturing the model parameters, including the spatial signatures, the time-correlation factors, the off-grid bias, the channel power, and the noise power.
Proceedings ArticleDOI

Joint Weighted and Truncated Nuclear Norm Minimization for Matrix Completion-Assisted mmWave MIMO Channel Estimation

TL;DR: A novel matrix completion-assisted mmWave massive MIMO channel estimation method by employing an effective and flexible rank function named joint weighted and truncated nuclear norm as relaxation of nuclear norm and constructing an novel Matrix completion model for channel estimation problem.
Journal ArticleDOI

A Unified Joint Optimization of Training Sequences and Transceivers Based on Matrix-Monotonic Optimization

TL;DR: In this article , the authors jointly optimize the linear transmit precoder and the training sequence of MIMO systems using the metrics of their effective mutual information (MI), effective mean squared error (MSE), effective weighted MI, effective weighted MSE, as well as their effective generic Schurconvex and Schur-concave functions.
Proceedings ArticleDOI

Uncoordinated frequency shifts based pilot contamination attack detection

TL;DR: In this paper, a new uncoordinated frequency shift (UFS) scheme was proposed for detection of pilot contamination attack in multiple antenna system, motivated by the fact that frequency asynchronism could introduce divergence of the transmitted pilot signals between intended user and attacker, and an attack detection algorithm was further developed based on source enumeration method.
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Journal ArticleDOI

How much training is needed in multiple-antenna wireless links?

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