基于压缩感知的总变差最小化的OFDM信道估计

Manu K M M Tech, Nelson K J Assistant
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引用次数: 3

摘要

压缩传感(CS)是一种新兴的技术,它表明信号的采样率可以比香农-奈奎斯特标准规定的频率小得多。CS结合采样和压缩在一个单一的非自适应线性测量过程。本文研究了压缩感知在正交频分复用(OFDM)系统中双选择信道估计问题中的应用。提出了一种基于压缩感知的导频辅助信道估计方法,该方法采用增广拉格朗日交替方向算法(TVAL3)作为压缩感知算法。现有的导频辅助信道估计方法,如最小二乘估计方法,大多依赖于使用大量导频来提高估计精度,导致频谱效率不足。将TVAL3方法与现有的LS方法进行了比较。仿真结果表明,基于TVAL3的信道估计器是LS信道估计器的一种很好的替代方案,尽管只使用较少的导频,但估计质量很好。基于TVAL3的压缩信道估计方法证明了全变差最小化算法在信道估计中的应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
OFDM channel estimation using total variation minimization in compressed sensing
Compressed sensing (CS) is a newly emerging technology, which states that a signal can be sampled at a rate much smaller than what is commonly prescribed by Shannon-Nyquist. CS combines sampling and compression in to a single non-adaptive linear measurement process. In this paper, we are investigating the application of compressed sensing to the problem of estimating a doubly selective channel in Orthogonal Frequency Division Multiplexing (OFDM) system.We presented a compressed sensing based pilot-aided channel estimation method, in which Total variation minimization by augmented Lagrangian and alternating direction algorithms (TVAL3) is used as a compressed sensing algorithm. Most of the existing pilot-aided channel estimators, e.g. Least square estimator, depends on the use of large number of pilots to increase the accuracy of estimation, which results in lack of spectral efficiency. Results of the TVAL3 method is compared with the existing LS method. Simulation results shows that TVAL3 based channel estimator is proves to be a very good alternative to LS channel estimator, yielding good estimation quality despite using only fewer number of pilots. The TVAL3 based compressive channel estimator establishes the fact that Total variation (TV) minimization has application in channel estimation.
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