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Sparse Channel Estimation for OFDM-Based Underwater Acoustic Systems in Rician Fading With a New OMP-MAP Algorithm

机译:基于OFDM的水下声学系统Rician衰落中稀疏信道估计的新OMP-MAP算法

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摘要

In this paper, a new channel estimation algorithm is proposed that exploits channel sparsity in the time domain for an orthogonal frequency division multiplexing (OFDM)-based underwater acoustical (UWA) communications systems in the presence of Rician fading. A path-based channel model is used, in which the channel is described by a limited number of paths, each characterized by a delay, Doppler scale, and attenuation factor. The resulting algorithm initially estimates the overall sparse channel tap delays and Doppler shifts using a compressed sensing approach, in the form of the orthogonal matching pursuit (OMP) algorithm. Then, a computationally efficient and novel channel estimation algorithm is developed by combining the OMP and maximum a posteriori probability (MAP) techniques for estimating the sparse complex channel path gains whose prior densities have complex Gaussian distributions with unknown mean and variance vectors, where a computationally efficient maximum likelihood algorithm is proposed for their estimation. Monte Carlo simulation results show that the mean square error and symbol error rate performances of the OMP-MAP algorithm uniformly outperforms the conventional OMP-based channel estimation algorithm, in case of uncoded OFDM-based UWA communications systems.
机译:本文提出了一种新的信道估计算法,该算法在存在Rician衰落的情况下,针对基于正交频分复用(OFDM)的水下声学(UWA)通信系统,利用时域中的信道稀疏性。使用基于路径的信道模型,其中通过有限数量的路径来描述信道,每个路径的特征在于延迟,多普勒比例和衰减因子。最终的算法使用正交匹配追踪(OMP)算法的形式,使用压缩的传感方法初步估计总体稀疏信道抽头延迟和多普勒频移。然后,通过将OMP和最大后验概率(MAP)技术相结合,开发了一种计算有效且新颖的信道估计算法,用于估计稀疏的复杂信道路径增益,其先验密度具有均值和方差矢量未知的复杂高斯分布,提出了一种有效的最大似然算法进行估计。蒙特卡罗仿真结果表明,在未编码的基于OFDM的UWA通信系统中,OMP-MAP算法的均方误差和符号误码率性能始终优于传统的基于OMP的信道估计算法。

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