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An Improved Sparse Underwater Acoustic OFDM Channel Estimation Method Based On Joint Sparse Model and Exponential Smoothing

机译:基于关节稀疏模型和指数平滑的一种改进的稀疏水下声学OFDM信道估计方法

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Compressed sensing (CS) based sparse channel estimation which sufficiently exploits the inherent sparsity of channels can achieve desirable performance compared with conventional channel estimation algorithms. However, in channel estimation common recovery algorithms, such as orthogonal matching pursuit (OMP), uses pilots inserted in one individual orthogonal frequency division multiplex (OFDM) symbol every time without considering the correlation of channels. Besides, estimated channels contain strong ambient sea noise. Therefore, accuracy of sparse channel estimation can be further improved through using both correlation and denoising of channels. In this paper, a channel estimation method which combines joint sparse model (JSM) and exponential smoothing (ES) is proposed for OFDM system. The proposed method mainly consists of two steps. Firstly, the UWA channel is estimated by joint sparse model based recovery algorithms, where the channel estimation is modeled as a problem of joint sparse recovery. Secondly, to denoise the estimated channels, the exponential smoothing is applied. Simulation results evaluate our method and show that the proposed scheme outperforms the methods of using pilots inserted in one individual OFDM symbol about 2 ~ 3 dB.
机译:与传统信道估计算法相比,基于压缩的感测(CS)足够利用信道的固有稀疏性的稀疏信道估计能够实现所需的性能。然而,在信道估计中,诸如正交匹配追踪(OMP)的常见恢复算法每次使用在一个单独正交频分复用(OFDM)符号中的导频而不考虑通道的相关性。此外,估计的渠道包含强烈的环境海洋噪音。因此,通过使用通道的相关性和去噪可以进一步改善稀疏信道估计的精度。本文提出了一种组合联合稀疏模型​​(JSM)和指数平滑的信道估计方法,用于OFDM系统。所提出的方法主要包括两个步骤。首先,通过基于联合稀疏模型​​的恢复算法估计UWA通道,其中信道估计被建模为关节稀疏恢复的问题。其次,为了去噪估计的通道,应用指数平滑。仿真结果评估我们的方法,并表明所提出的方案优于使用插入一个单独的OFDM符号的飞行员的方法约2〜3 dB。

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