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首页> 外文期刊>Fortschritte der Physik >SBL-Based Joint Sparse Channel Estimation and Maximum Likelihood Symbol Detection in OSTBC MIMO-OFDM Systems
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SBL-Based Joint Sparse Channel Estimation and Maximum Likelihood Symbol Detection in OSTBC MIMO-OFDM Systems

机译:基于SBL的联合稀疏信道估计和OSTBC MIMO-OFDM系统中的最大似然符号检测

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摘要

This paper presents sparse Bayesian learning (SBL)based schemes for approximately sparse channel estimation in an orthogonal space-time block coded (OSTBC) multiple-input multiple-output (MIMO) orthogonal frequency-division multiplexing (OFDM) wireless system. The parameterized prior-based SBL framework is employed to present a pilot scheme for an ill-posed OSTBC MIMO-OFDM channel estimation scenario. Maximum likelihood symbol detection (MLSD) has been incorporated in the expectation-maximization framework for SBL-based channel estimation. This has led to the development of a novel scheme for joint approximately sparse channel estimation and symbol detection. The proposed scheme performs SBL-based channel estimation in the E-step followed by a modified ML decision metric-based symbol detection in the M-step. Bayesian Cramer-Rao bounds are obtained for the genie minimum mean-squared error estimators corresponding to the SBL schemes. Closed-form bit error probability expressions are derived for the MLSD in the presence of SBL-based channel estimation errors. Simulation results are presented towards the end to validate the theoretical bounds and illustrate the performance of the proposed techniques.
机译:本文介绍了基于稀疏的贝叶斯学习(SBL)基于正交空间 - 时块编码(OSTBC)多输入多输出(MIMO)正交频分复用(OFDM)无线系统的稀疏信道估计的方案。采用参数化的先前的SBL框架来呈现用于不良的OSTBC MIMO-OFDM信道估计场景的导频方案。最大似然符号检测(MLSD)已被包含在基于SBL的信道估计的期望最大化框架中。这导致了开发用于关节大致稀疏信道估计和符号检测的新颖方案。所提出的方案在电子步骤中执行基于SBL的信道估计,然后在M步骤中进行修改的ML判定度量的符号检测。获得与SBL方案对应的Genie最小平均平均误差估计的Gayesian Cramer-Rao界限。在存在基于SBL的信道估计误差的情况下,将闭合误码概率表达式导出MLSD。仿真结果朝向末端呈现,以验证理论界限,并说明了所提出的技术的性能。

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