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Parallel Deep Learning Detection Network in the MIMO Channel

机译:MIMO通道中的并行深度学习检测网络

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For deep learning detection networks in the multiple-input-multiple-output (MIMO) channel, deepening the network does not significantly improve performance beyond a certain number of layers. In this letter, we propose a parallel detection network (PDN) that consists of several deep learning detection networks in parallel without connection. By designing a specific loss function and reducing similarity between detection networks, the PDN obtains a considerable diversity effect. The performance of the PDN improves significantly as the number of parallel detection networks increases in time-varying MIMO channels. This is superior to the existing deep learning detection networks, in both performance and complexity.
机译:对于多输入多输出(MIMO)通道中的深度学习检测网络,深化网络不会显着提高超过一定数量的层。在这封信中,我们提出了一个并行检测网络(PDN),该网络(PDN)由几个不连接的深度学习检测网络组成。通过在检测网络之间设计特定的损失函数并减少相似性,PDN获得了相当多的分集效果。随着并行检测网络的数量在时变的MIMO信道中增加,PDN的性能显着提高。这在性能和复杂性方面优于现有的深度学习检测网络。

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