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Semi-blind MIMO-OFDM channel estimation using expectation maximisation like techniques

机译:使用类似期望最大化技术的半盲MIMO-OFDM信道估计

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摘要

This study deals with semi-blind (SB) channel estimation of multiple-input multiple-output orthogonal frequency-division multiplexing (MIMO-OFDM) system using maximum likelihood (ML) technique. For the ML cost optimisation function, new expectation maximisation (EM) algorithms for the channel taps estimation are introduced. Different approximation/simplification approaches are proposed for the algorithm's computational cost reduction. The first approach consists of decomposing the MIMO-OFDM system into parallel multiple-input single-output OFDM systems. The EM algorithm is then applied to estimate the MIMO channel in a parallel way. The second approach takes advantage of the SB context to reduce the EM cost from exponential to linear complexity by reducing the size of the search space. Finally, the last proposed approach uses a parallel interference cancellation technique to decompose the MIMO-OFDM system into several single-input multiple-output OFDM systems. The latter are identified in a parallel scheme and with a reduced complexity. The performance of the proposed approaches are discussed, assessed through numerical experiments and compared with respect to the Cramer Rao Bound and to other EM-based solutions reported in the literature.
机译:本研究使用最大似然(ML)技术处理多输入多输出正交频分复用(MIMO-OFDM)系统的半盲(SB)信道估计。对于ML成本优化功能,引入了用于信道抽头估计的新期望最大化(EM)算法。为了降低算法的计算成本,提出了不同的逼近/简化方法。第一种方法包括将MIMO-OFDM系统分解为并行多输入单输出OFDM系统。然后,将EM算法应用于以并行方式估计MIMO信道。第二种方法利用SB上下文,通过减小搜索空间的大小来将EM成本从指数复杂度降低到线性复杂度。最后,最后提出的方法使用并行干扰消除技术将MIMO-OFDM系统分解为几个单输入多输出OFDM系统。后者是在并行方案中识别的,并且具有降低的复杂性。讨论了所提出方法的性能,通过数值实验对其进行了评估,并与Cramer Rao Bound和文献中报道的其他基于EM的解决方案进行了比较。

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