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Channel estimation in underwater cooperative OFDM system with amplify-and-forward relaying

机译:具有放大转发中继的水下协作OFDM系统中的信道估计

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This paper is concerned with a challenging problem of channel estimation for amplify-and-forward cooperative relay based orthogonal frequency division multiplexing (OFDM) systems in the presence of sparse underwater acoustic channels and of the correlative non-Gaussian noise. We exploit the sparse structure of the channel impulse response to improve the performance of the channel estimation algorithm, due to the reduced number of taps to be estimated. The resulting novel algorithm initially estimates the overall sparse channel taps from the source to the destination as well as their locations using the matching pursuit (MP) approach. The correlated non-Gaussian effective noise is modeled as a Gaussian mixture. Based on the Gaussian mixture model, an efficient and low complexity algorithm is developed based on the combinations of the MP and the space-alternating generalized expectation-maximization (SAGE) technique, to improve the estimates of the channel taps and their location as well as the noise distribution parameters in an iterative way. The proposed SAGE algorithm is designed in such a way that, by choosing the admissible hidden data properly on which the SAGE algorithm relies, a subset of parameters is updated for analytical tractability and the remaining parameters for faster convergence Computer simulations show that underwater acoustic (UWA) channel is estimated very effectively and the proposed algorithm has excellent symbol error rate and channel estimation performance.
机译:本文涉及存在稀疏水下声信道和相关非高斯噪声的,基于放大和转发协作中继的正交频分复用(OFDM)系统的信道估计的挑战性问题。由于要估计的抽头数量减少,我们利用信道脉冲响应的稀疏结构来提高信道估计算法的性能。产生的新颖算法首先使用匹配追踪(MP)方法估计从源到目的地的总体稀疏通道抽头及其位置。相关的非高斯有效噪声被建模为高斯混合。在高斯混合模型的基础上,基于MP和空间交替广义期望最大化(SAGE)技术的组合,开发了一种高效且低复杂度的算法,以改进信道抽头及其位置以及以迭代方式确定噪声分布参数。提出的SAGE算法的设计方式是,通过适当地选择SAGE算法所依赖的可允许隐藏数据,对参数子集进行更新以提高分析可处理性,而其余参数则进行更新以加快收敛速度​​。计算机仿真表明,水下声学(UWA )信道估计非常有效,所提出的算法具有出色的符号错误率和信道估计性能。

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