预编码
多输入多输出
计算机科学
迫零预编码
信道状态信息
人工神经网络
最小均方误差
概化理论
算法
深度学习
人工智能
频道(广播)
数学
电信
无线
统计
估计员
作者
Shaoqing Zhang,Jindan Xu,Wei Xu,Ning Wang,Derrick Wing Kwan Ng,Xiaohu You
标识
DOI:10.1109/lcomm.2022.3156946
摘要
Precoding design exploiting deep learning methods has been widely studied for multiuser multiple-input multiple-output (MU-MIMO) systems. However, conventional neural precoding design applies black-box-based neural networks which are less interpretable. In this letter, we propose a deep learning-based precoding method based on an interpretable design of a neural precoding network, namely iPNet. In particular, the iPNet mimics the classic minimum mean-squared error (MMSE) precoding and approximates the matrix inversion in the design of the neural network architecture. Specifically, the proposed iPNet consists of a model-driven component network, responsible for augmenting the input channel state information (CSI), and a data-driven sub-network, responsible for precoding calculation from this augmented CSI. The latter data-driven module is explicitly interpreted as an unsupervised learner of the MMSE precoder. Simulation results show that by exploiting the augmented CSI, the proposed iPNet achieves noticeable performance gain over existing black-box designs and also exhibits enhanced generalizability against CSI mismatches.
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