Massive MIMO Channel Estimation Based on Improved Variable Step Size Regular Backtracking SAMP Algorithms

Hao Xu, Chunshu Li
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引用次数: 1

Abstract

The traditional channel estimation methods LS and MMSE are used in MIMO channel estimation. Because of the large number of pilots required, the computation of inverse covariance matrix is required, which results in high computational complexity. Considering the sparsity of wireless channel in time domain, compressed sensing theory can be used to estimate the channel. The common greedy algorithms of compressed sensing include OMP algorithm and CoSaMP algorithm, which need to take sparsity as a known condition, so their use is limited. In this paper, an improved variable step-size regular backtracking SAMP algorithm based on compressed sensing theory is proposed to estimate the channel of Massive MIMO system. This algorithm improves the reconstruction accuracy of traditional SAMP algorithm in channel estimation and avoids the need for known sparsity, so it has good application value. In addition, good estimation results are also obtained under the noise environment, which proves the advantages of the algorithm.
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基于改进变步长规则回溯SAMP算法的海量MIMO信道估计
MIMO信道估计主要采用传统的信道估计方法LS和MMSE。由于需要大量的导频,需要计算逆协方差矩阵,这导致了很高的计算复杂度。考虑到无线信道在时域上的稀疏性,可以利用压缩感知理论对信道进行估计。压缩感知中常见的贪心算法有OMP算法和CoSaMP算法,这两种算法都需要将稀疏性作为已知条件,因此其使用受到限制。本文提出了一种基于压缩感知理论的改进变步长规则回溯SAMP算法,用于大规模MIMO系统的信道估计。该算法提高了传统SAMP算法在信道估计中的重构精度,避免了对已知稀疏度的需要,具有很好的应用价值。此外,在噪声环境下也获得了较好的估计结果,证明了该算法的优越性。
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