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LSTM and ResNets Deep Learning Aided End-to-End Intelligent Communication Systems

机译:LSTM和Resnets Deep学习辅助端到端智能通信系统

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Deep learning (DL) technology enables communication systems to provide intelligent transmissions to adapt to time changing wireless channel conditions. In this paper, with considerations that information bits are usually grouped into blocks or sequences for transmissions, we propose a DL end-to-end intelligent communication system. In our design, we construct a neural network (NN) constituted by long short-term memory (LSTM) units and residual networks (ResNets) architecture, to process the information-bearing sequences. More explicitly, we propose to add a forward feed path to compose the ResNets, thus the residual learning can be implemented to accelerate the convergence. Moreover, with the LSTM units, information-bearing sequences can be processed sequentially by the NN. Thus for larger number of sequences, better symbol error rate (SER) performances can be achieved since the features of the correlation between messages delivered at different time slots will be extracted to improve the detection performances. Subsequently, simulation results are provided to demonstrate that the proposed LSTM and ResNets based intelligent transmission systems can achieve better performances than benchmark systems over wireless channels undergoing the multiplicative fading and additive noises, while providing satisfactory robustness and convergence performances.
机译:深度学习(DL)技术使通信系统能够提供智能传输,以适应时间改变无线信道条件。在本文中,考虑到信息比特通常被分组成块或序列的传输,我们提出了DL端到端智能通信系统。在我们的设计中,我们构建由长短期内存(LSTM)单元和残差网络(Resnets)架构构成的神经网络(NN),以处理信息轴承序列。更明确地,我们建议添加一个转发路径来组成reasnet,因此可以实现剩余学习以加速收敛。此外,利用LSTM单元,可以通过NN顺序处理信息轴承序列。因此,对于较大数量的序列,可以实现更好的符号误差率(SER)性能,因为将提取在不同时隙处传送的消息之间的相关性的特征以改善检测性能。随后,提供了模拟结果以证明所提出的基于LSTM和基于智能传输系统的LSTM和RESNET可以比在经历乘法衰落和附加噪声的无线通道上实现更好的性能,同时提供令人满意的鲁棒性和收敛性能。

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