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Pilot-Assisted Channel Estimation and Signal Detection in Uplink Multi-User MIMO Systems With Deep Learning

机译:深度学习的上行链路多用户MIMO系统中的导频辅助信道估计和信号检测

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摘要

In this paper, we propose two deep learning (DL) based receiver schemes in uplink multiple-input multiple-output (MIMO) systems. In the first scheme, we design a pilot-assisted MIMO receiver using a data-driven full connected neural network. This data-driven receiver can recover transmitted signal directly in an end-to-end manner without explicitly estimating channel. In the second scheme, we adopt a model-driven network which combines communication knowledge with DL. The model-driven scheme divides the MIMO receiver into channel estimation subnet and signal detection subnet, and each subnet is composed of a traditional solution as initialization and a DL network to further improve the accurate. The simulation results show that both of the two schemes achieve better bit error ratio (BER) performance than traditional methods. In particular, the data-driven scheme can achieve optimal BER performance in low-dimensional MIMO systems, while the model-driven scheme can be trained with fewer trainable parameters and outperforms the data-driven scheme in high-dimension MIMO systems.
机译:在本文中,我们提出了在上行链路多输入多输出(MIMO)系统中的两个基于深度学习(DL)的接收器方案。在第一种方案中,我们使用数据驱动的全连接神经网络设计了一个导频辅助MIMO接收器。该数据驱动接收器可以在不明确估计信道的情况下直接以端到端的方式直接恢复发送信号。在第二个方案中,我们采用模型驱动的网络,该网络与DL结合了通信知识。模型驱动方案将MIMO接收器划分为信道估计子网和信号检测子网,并且每个子网由传统解决方案组成为初始化和DL网络,以进一步提高准确。仿真结果表明,这两种方案两种方案都比传统方法实现了更好的比特错误比率(BER)性能。特别地,数据驱动方案可以在低维MIMO系统中实现最佳的BER性能,而模型驱动方案可以用较少的可训练参数培训,并且优于高维MIMO系统中的数据驱动方案。

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