Shallow Neural Networks for Channel Estimation in Multi-Antenna Systems

D. Kumar, C. Antón-Haro, X. Mestre
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Abstract

In this paper, we investigate neural network-based channel estimation strategies for point-to-point multi-input multi-output (MIMO) systems. In an attempt to keep computational complexity low, we restrict ourselves to shallow architectures with a single hidden layer. Specifically, we consider (i) fully-connected feedforward neural networks; and (ii) ID/2D convolutional neural networks. The analysis includes an assessment of the estimation error performance, along with the computational complexity as-sociated to the training and inference phases. Several benchmarks are considered, such as the conventional least squares or (linear) MMSE estimators, and other deep neural network architectures from the literature.
多天线系统中信道估计的浅神经网络
本文研究了基于神经网络的点对点多输入多输出(MIMO)系统信道估计策略。为了保持较低的计算复杂度,我们将自己限制在具有单个隐藏层的浅架构中。具体来说,我们考虑(i)全连接前馈神经网络;(ii) ID/2D卷积神经网络。分析包括对估计误差性能的评估,以及与训练和推理阶段相关的计算复杂性。考虑了几个基准,例如传统的最小二乘或(线性)MMSE估计器,以及文献中的其他深度神经网络架构。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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