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Low complexity joint estimation of synchronization impairments in sparse channel for MIMO-OFDM system

机译:MIMO-OFDM系统稀疏信道同步损伤的低复杂度联合估计

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摘要

Low complexity joint estimation of synchronization impairments and channel in a single-user MIMO-OFDM system is presented in this paper. Based on a system model that takes into account the effects of synchronization impairments such as carrier frequency offset, sampling frequency offset, and symbol timing error, and channel, a Maximum Likelihood (ML) algorithm for the joint estimation is proposed. To reduce the complexity of ML grid search, the number of received signal samples used for estimation need to be reduced. The conventional channel estimation techniques using Least-Squares (LS) or Maximum a posteriori (MAP) methods fail for the reduced sample under-determined system, which results in poor performance of the joint estimator. The proposed ML algorithm uses Compressed Sensing (CS) based channel estimation method in a sparse fading scenario, where the received samples used for estimation are less than that required for an LS or MAP based estimation. The performance of the estimation method is studied through numerical simulations, and it is observed that CS based joint estimator performs better than LS and MAP based joint estimator.
机译:提出了单用户MIMO-OFDM系统中同步损伤和信道的低复杂度联合估计。基于一种考虑了载波频率偏移,采样频率偏移,符号定时误差和信道等同步损伤的系统模型,提出了一种联合估计的最大似然算法。为了降低ML网格搜索的复杂性,需要减少用于估计的接收信号样本的数量。使用最小二乘(LS)或最大后验(MAP)方法的常规信道估计技术对于减少的样本欠定系统而言失败,这导致联合估计器的性能较差。所提出的ML算法在稀疏衰落场景中使用基于压缩感知(CS)的信道估计方法,其中用于估计的接收样本少于基于LS或MAP的估计所需的样本。通过数值模拟研究了估计方法的性能,发现基于CS的联合估计器的性能优于基于LS和MAP的联合估计器。

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