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Machine Learning-Based 5G-and-Beyond Channel Estimation for MIMO-OFDM Communication Systems

机译:基于机器学习的5G - 超出MIMO-OFDM通信系统的信道估计

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摘要

Channel estimation plays a critical role in the system performance of wireless networks. In addition, deep learning has demonstrated significant improvements in enhancing the communication reliability and reducing the computational complexity of 5G-and-beyond networks. Even though least squares (LS) estimation is popularly used to obtain channel estimates due to its low cost without any prior statistical information regarding the channel, this method has relatively high estimation error. This paper proposes a new channel estimation architecture with the assistance of deep learning in order to improve the channel estimation obtained by the LS approach. Our goal is achieved by utilizing a MIMO (multiple-input multiple-output) system with a multi-path channel profile for simulations in 5G-and-beyond networks under the level of mobility expressed by the Doppler effects. The system model is constructed for an arbitrary number of transceiver antennas, while the machine learning module is generalized in the sense that an arbitrary neural network architecture can be exploited. Numerical results demonstrate the superiority of the proposed deep learning-based channel estimation framework over the other traditional channel estimation methods popularly used in previous works. In addition, bidirectional long short-term memory offers the best channel estimation quality and the lowest bit error ratio among the considered artificial neural network architectures.
机译:信道估计在无线网络的系统性能中起着关键作用。此外,深度学习已经表现出提高通信可靠性并降低5G - 超出网络的计算复杂性的显着改进。即使最小二乘(LS)估计普遍地用于获得由于其低成本而没有关于信道的任何先前统计信息而获得信道估计,但该方法具有相对高的估计误差。本文提出了一种新的信道估计架构,以及深度学习的帮助,以改善通过LS方法获得的信道估计。我们的目标是通过利用MIMO(多输入多输出)系统来实现具有多路径通道配置文件的MIMO(多输入多输出)系统,用于在多普勒效应所表达的移动性水平下的5G-超出网络中的模拟。系统模型被构造成用于任意数量的收发器天线,而机器学习模块是在可以利用任意神经网络架构的意义上概括的。数值结果证明了基于深度学习的信道估计框架的优越性,在以前的作品中普遍使用的其他传统信道估计方法。此外,双向长期内记忆提供了最佳的信道估计质量和所考虑的人工神经网络架构中的最低比特错误比。

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