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EM-Based ML Estimation of Fast Time-Varying Multipath Channels for SIMO OFDM Systems

机译:SIMO OFDM系统中基于EM的快速时变多径信道的ML估计

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This paper investigates the problem of fast time-varying multipath channel estimation over single-input multiple-output orthogonal frequency-division multiplexing (SIMO OFDM)-type transmissions. We do so by tracking the variations of each complex gain coefficient using a polynomial-in-time expansion. To that end, we derive the log-likelihood function (LLF) in both the data-aided (DA) and non-data-aided (NDA) case. The DA ML estimates are found in closed-form expressions and then used to initialize the expectation maximization (EM) algorithm that is used to iteratively maximize the LLF in the NDA case. We also introduce an alternative initialization procedure that requires less pilot symbols as compared to the DA ML-based solution without incurring a significant performance loss. Simulation results show that the proposed EM-based estimator converges within few iterations providing accurate estimates for all multipath gains, thereby resulting in significant BER gain as compared to the DA least square (LS) technique.
机译:本文研究了单输入多输出正交频分复用(SIMO OFDM)型传输上快速时变多径信道估计的问题。通过使用多项式时间扩展跟踪每个复数增益系数的变化,可以做到这一点。为此,我们在数据辅助(DA)和非数据辅助(NDA)情况下都得出了对数似然函数(LLF)。 DA ML估计值可以在闭式表达式中找到,然后用于初始化期望最大化(EM)算法,该算法用于在NDA情况下迭代最大化LLF。与基于DA ML的解决方案相比,我们还引入了一种替代的初始化过程,该过程需要较少的导频符号,而不会造成明显的性能损失。仿真结果表明,所提出的基于EM的估计器在几次迭代中收敛,从而为所有多径增益提供了准确的估计,因此与DA最小二乘(LS)技术相比,可得到显着的BER增益。

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