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On Unsupervised Deep Learning Solutions for Coherent MU-SIMO Detection in Fading Channels

机译:衰落信道中相干MU-SIMO检测的无监督深度学习解决方案

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In this paper, unsupervised deep learning solutions for multiuser single-input multiple-output (MU-SIMO) coherent detection are extensively investigated. According to the ways of utilizing the channel state information at the receiver side (CSIR), deep learning solutions are divided into two groups. One group is called equalization and learning, which utilizes the CSIR for channel equalization and then employ deep learning for multiuser detection (MUD). The other is called direct learning, which directly feeds the CSIR, together with the received signal, into deep neural networks (DNN) to conduct the MUD. It is found that the direct learning solutions outperform the equalization-and-learning solutions due to their better exploitation of the sequence detection gain. On the other hand, the direct learning solutions are not scalable to the size of SIMO networks, as current DNN architectures cannot efficiently handle many co-channel interferences. Motivated by this observation, we propose a novel direct learning approach, which can combine the merits of feedforward DNN and parallel interference cancellation. It is shown that the proposed approach trades off the complexity for the learning scalability, and the complexity can be managed due to the parallel network architecture.
机译:本文广泛研究了用于多用户单输入多输出(MU-SIMO)相干检测的无监督深度学习解决方案。根据在接收方(CSIR)利用信道状态信息的方式,深度学习解决方案分为两组。一组称为均衡和学习,它利用CSIR进行信道均衡,然后将深度学习用于多用户检测(MUD)。另一个称为直接学习,它直接将CSIR与接收到的信号一起馈入深度神经网络(DNN)中以进行MUD。发现直接学习解决方案由于更好地利用了序列检测增益而胜过了均衡和学习解决方案。另一方面,直接学习解决方案无法扩展到SIMO网络的规模,因为当前的DNN体系结构无法有效处理许多同信道干扰。基于这种观察,我们提出了一种新颖的直接学习方法,该方法可以结合前馈DNN和并行干扰消除的优点。结果表明,所提出的方法权衡了学习可扩展性的复杂性,并且由于并行网络架构而可以管理复杂性。

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