BSBL-based Block-Sparse Channel Estimation for Affine Precoded OSTBC MIMO-OFDM Systems

Suraj Srivastava, Manoj P. Suradkar, A. Jagannatham
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引用次数: 1

Abstract

This work presents affine precoded superimposed pilot-based sparse channel estimation in orthogonal space-time block coded (OSTBC) multiple-input multiple-output (MIMO) orthogonal frequency division multiplexing (OFDM) systems. A pilot-based block sparse Bayesian learning (P-BSBL) technique is developed initially, which leverages the sparsity as well as the spatial correlation of the MIMO channel for improved estimation. Subsequently, a data aided-BSBL (D-BSBL) technique is presented for joint maximum likelihood (ML) decoding of the symbols and sparse channel estimation, which is shown to lead to a further improvement in the accuracy of the estimated channel. In addition to a significant decrease in the mean squared error (MSE) of estimation, the proposed schemes are also shown to lead to a substantial increase in spectral efficiency over the existing schemes. Moreover, they are also applicable in ill-posed CSI estimation scenarios, where conventional approaches fail due to a large delay spread. The Bayesian Cramér-Rao bounds are derived to analytically benchmark the estimation performance followed by simulation results that show the improved performance of the proposed techniques.
基于bsbl的仿射预编码OSTBC MIMO-OFDM系统块稀疏信道估计
本文研究了正交空时块编码(OSTBC)多输入多输出(MIMO)正交频分复用(OFDM)系统中基于仿射预编码叠加导频的稀疏信道估计。首先提出了一种基于导频的块稀疏贝叶斯学习(P-BSBL)技术,该技术利用MIMO信道的稀疏性和空间相关性来改进估计。随后,提出了一种数据辅助bsbl (D-BSBL)技术,用于符号的最大似然(ML)解码和稀疏信道估计,进一步提高了估计信道的精度。除了显著降低估计的均方误差(MSE)外,所提出的方案还显示出比现有方案显著提高的频谱效率。此外,它们也适用于不适定的CSI估计场景,在这种情况下,传统的方法由于大的延迟扩展而失败。推导了贝叶斯cram - rao边界,对估计性能进行了分析基准测试,然后进行了仿真结果,显示了所提出技术的改进性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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