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首页> 外文期刊>Oceanic Engineering, IEEE Journal of >Exploiting Spatial–Temporal Joint Sparsity for Underwater Acoustic Multiple-Input–Multiple-Output Communications
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Exploiting Spatial–Temporal Joint Sparsity for Underwater Acoustic Multiple-Input–Multiple-Output Communications

机译:利用水下声学多输入多输出通信的空间关节稀疏性

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摘要

Multiple-input–multiple-output (MIMO) system offers a promising way for high data rate communication over bandwidth-limited underwater acoustic channels. However, MIMO communication not only suffers from intersymbol interference, but also introduces the additional co-channel interference, which brings challenge for underwater acoustic MIMO channel estimation and for channel equalization. In this article, we propose novel interference cancellation (IC) methods for handling this co-channel interference problem in the design of both channel estimation and channel equalization. Our method for channel estimation utilizes the spatial joint sparsity and the temporal joint sparsity in the multipath structure to estimate sparse channels with common delays under distributed compressed sensing framework. In this way, we enhance channel estimates with common delays, thus, suppress co-channel interference. Meanwhile, to address the case of multipath arrivals with different delays, which are estimated as noise under simultaneous orthogonal matching pursuit (SOMP) algorithm, we introduce forward–reverse strategy to SOMP algorithm, which is referred to as the FRSOMP algorithm. Our proposed FRSOMP algorithm performs the SOMP algorithm to achieve the initial channel estimates, performs the forward-add process, which attempts to add promising candidates into support sets, and performs the reverse-fetch process to check if the candidates in the support set are retained or removed. The purpose of channel estimation is to directly calculate the filter coefficients for channel-estimation-based decision feedback equalization (CE-DFE). In this article, we also propose a novel CE-DFE receiver with IC component. We design IC filters based on the traditional CE-DFE, and we derive the coefficients of the feedforward filters, feedback filters, and IC filters based on the channel estimate metric obtained by the FRSOMP algorithm, so the co-channel interference will be suppressed both in channel estimation and channel equalization. We demonstrate the performance of our approach by numerical simulation, lake experiment, and sea experiment. Results are provided to demonstrate the effectiveness of the proposed methods, which show that the proposed methods obtain higher output signal-to-noise ratio, lower bit error rate, and more separated constellations compared with the traditional compressed sensing channel estimation method and the traditional CE-DFE method.
机译:多输入多输出(MIMO)系统提供了一种有希望的高数据速率通信在带宽限制水下声道上的高数据速率通信。然而,MIMO通信不仅遭受了偶尔ymbol干扰,而且还引入了额外的共信​​道干扰,这为水下声学MIMO信道估计和信道均衡带来了挑战。在本文中,我们提出了用于处理这两个信道估计和信道均衡的设计中的新型干扰消除(IC)方法,用于处理这种共同信道干扰问题。我们的信道估计方法利用多径结构中的空间关节稀疏和时间关节稀疏性来估计分布式压缩框架下的共同延迟的稀疏信道。以这种方式,我们增强了常见延迟的信道估计,因此抑制了共信道干扰。同时,为了解决具有不同延迟的多径抵达的情况,这些延迟被估计为同时正交匹配追踪(SOMP)算法的噪声,我们向SOMP算法引入前向反向策略,其被称为FRSOMP算法。我们所提出的FRSOMP算法执行SOMP算法来实现初始通道估计,执行前向添加过程,该过程尝试将有希望的候选人添加到支持集中,并执行反向获取进程以检查支持集中的候选是否保留了候选者或删除。信道估计的目的是直接计算基于信道估计的判定判定均衡(CE-DFE)的滤波器系数。在本文中,我们还提出了一种具有IC组件的新型CE-DFE接收器。我们根据传统的CE-DFE设计IC滤波器,我们基于FRSOMP算法获得的信道估计度量,我们推出了前馈滤波器,反馈滤波器和IC滤波器的系数,因此同时抑制了共信道干扰在信道估计和信道均衡中。我们通过数值模拟,湖泊实验和海上实验展示了我们的方法的表现。提供了与传统压缩传感信道估计方法和传统CE相比,提出了所提出的方法的有效性,表明所提出的方法可以获得更高的输出信噪比,更低的误码率和更加分离的星座。 -dfe方法。

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