水声通信降噪信道估计:稀疏感知模型驱动学习方法

Sicong Liu;Younan Mou;Xianyao Wang;Danping Su;Ling Cheng
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引用次数: 1

摘要

由于水下传播条件恶劣,包括频率选择性强、相对迁移率高、传播延迟长、环境噪声强等,水声通信信道的准确信息一直是水声通信的难点。为此,提出了一种基于深度展开神经网络的方法,其中多层网络模拟经典迭代稀疏逼近算法的迭代,利用深度学习提取信道固有的稀疏特征,并提出了一种基于稀疏感知DNN (SA-DNN)的UAC估计方案,以提高估计精度。此外,我们提出了一种基于去噪稀疏感知深度神经网络(DeSA-DNN)的增强方法,该方法在稀疏感知深度网络中集成了去噪CNN模块,从而消除了强烈环境噪声带来的退化,进一步提高了估计精度。仿真结果表明,所提方案在信道恢复精度、导频开销和鲁棒性等方面优于目前最先进的基于压缩感知的迭代稀疏恢复方案,特别是在环境噪声强烈或测量导频不足的理想情况下。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Denoising enabled channel estimation for underwater acoustic communications: A sparsity-aware model-driven learning approach
It has always been difficult to achieve accurate information of the channel for underwater acoustic communications because of the severe underwater propagation conditions, including frequency-selective property, high relative mobility, long propagation latency, and intensive ambient noise, etc. To this end, a deep unfolding neural network based approach is proposed, in which multiple layers of the network mimic the iterations of the classical iterative sparse approximation algorithm to extract the inherent sparse features of the channel by exploiting deep learning, and a scheme based on the Sparsity-Aware DNN (SA-DNN) for UAC estimation is proposed to improve the estimation accuracy. Moreover, we propose a Denoising Sparsity-Aware DNN (DeSA-DNN) based enhanced method that integrates a denoising CNN module in the sparsity-aware deep network, so that the degradation brought by intensive ambient noise could be eliminated and the estimation accuracy can be further improved. Simulation results demonstrate that the performance of the proposed schemes is superior to the state-of-the-art compressed sensing based and iterative sparse recovery schems in the aspects of channel recovery precision, pilot overhead, and robustness, particularly under unideal circumstances of intensive ambient noise or inadequate measurement pilots.
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