MIMO预编码的监督深度学习

Aravind Ganesh Pathapati, N. Chakradhar, Pnvssk Havish, Sai Ashish Somayajula, Saidhiraj Amuru
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引用次数: 3

摘要

在本文中,我们的目标是为广播MIMO系统设计一个端到端深度学习架构,在发射机处进行预编码。目标是通过无线信道向多个用户传输无干扰的数据流。为了实现这一目标,我们提出将通信系统建模为具有新颖成本函数的深度自编码器网络的端到端学习。这种架构可以优化无线信道上的发送器和接收器网络权重。我们还介绍了一种在传输前对发射器嵌入进行预编码的方法。在训练所提出的发送-预编码MIMO系统模型时,采用端到端对发送-接收对的自编码器框架进行训练。在慢衰落的瑞利块衰落(RBF)信道上进行了数值计算,证明了该方法的有效性。本文提出了提高RBF信道性能的具体训练方法。
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Supervised Deep Learning for MIMO Precoding
In this paper, we aim to design an end-to-end deep learning architecture for a broadcast MIMO system with precoding at the transmitter. The objective is to transmit interferencefree data streams to multiple users over a wireless channel. We propose end-to-end learning of communication systems modelled as a Deep autoencoder network with a novel cost function to achieve this goal. This architecture enables optimization of the transmitter and receiver network weights jointly over a wireless channel. We also introduce a way to precode the transmitter embeddings before transmission. An end-to-end training of the autoencoder framework of transmitter-receiver pairs is employed while training the proposed transmit-precoded MIMO system model. Several numerical evaluations over Rayleigh block-fading (RBF) channels with slow fading are presented to prove this approach. Specific training methods are suggested to improve performance over RBF channels in this paper.
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