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Compressed Channel Sensing: A New Approach to Estimating Sparse Multipath Channels

机译:压缩通道感测:一种估计稀疏多径通道的新方法

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摘要

High-rate data communication over a multipath wireless channel often requires that the channel response be known at the receiver. Training-based methods, which probe the channel in time, frequency, and space with known signals and reconstruct the channel response from the output signals, are most commonly used to accomplish this task. Traditional training-based channel estimation methods, typically comprising linear reconstruction techniques, are known to be optimal for rich multipath channels. However, physical arguments and growing experimental evidence suggest that many wireless channels encountered in practice tend to exhibit a sparse multipath structure that gets pronounced as the signal space dimension gets large (e.g., due to large bandwidth or large number of antennas). In this paper, we formalize the notion of multipath sparsity and present a new approach to estimating sparse (or effectively sparse) multipath channels that is based on some of the recent advances in the theory of compressed sensing. In particular, it is shown in the paper that the proposed approach, which is termed as compressed channel sensing (CCS), can potentially achieve a target reconstruction error using far less energy and, in many instances, latency and bandwidth than that dictated by the traditional least-squares-based training methods.
机译:多路径无线信道上的高速数据通信通常要求在接收机处知道信道响应。基于训练的方法通常用于完成此任务,该方法使用已知信号在时间,频率和空间中探测信道,并根据输出信号重构信道响应。已知通常基于线性训练技术的传统的基于训练的信道估计方法对于丰富的多径信道是最佳的。然而,物理观点和不断增长的实验证据表明,实践中遇到的许多无线信道倾向于表现出稀疏的多径结构,该结构随着信号空间尺寸变大而变得明显(例如,由于大带宽或大量天线)。在本文中,我们对多径稀疏性的概念进行形式化,并基于压缩感知理论的最新进展,提出了一种估计稀疏(或有效稀疏)多径通道的新方法。特别是,在文件中显示,所提出的方法被称为压缩通道感测(CCS),它可以以比能量消耗少得多的能量以及在许多情况下减少延迟和带宽来实现目标重建误差。传统的基于最小二乘法的训练方法。

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