Unknown Channel End-to-End Learning of Communication System With Residual DCGAN

Daifu Yan, Min Jia, Qingbei Guo, Xuemai Gu
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Abstract

Conventional communication systems are generally based on modular design, since the modules are optimized separately, the system can not achieve the optimal performance. An end-to-end communication system model can be implemented by deep learning, which can improve the transmission performance. However, the channel environment is changeable and unknown, which make the optimization of the end-to-end communication system impossible. Recently, the birth of the deep convolutional generative adversarial networks (DCGAN) can simulate unknown channels and solve the optimization problem of end-to-end systems. Then, the DCGAN has poor training stability, and the problems of over-fitting and gradient disappearance caused by it will lead to performance degradation. In this paper, we propose a residual-based DCGAN model to alleviate these problems. Specifically, we introduce a residual block structure, which effectively alleviates the over-fitting problem of the gradient. In addition, we introduce the Wasserstein distance to measure the difference between the generated data and the real data distribution, and further solve the problem of model training instability. Simulation results show that our proposed Residual DCGAN-based model effectively improves the block error rate (BLER) performance compared with traditional methods.
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带有残余DCGAN的通信系统的未知信道端到端学习
传统的通信系统一般采用模块化设计,由于各模块分别进行优化,无法实现系统的最优性能。通过深度学习实现端到端的通信系统模型,可以提高传输性能。然而,由于信道环境的多变性和不确定性,使得端到端通信系统的优化成为不可能。近年来,深度卷积生成对抗网络(deep convolutional generative adversarial networks, DCGAN)的诞生,可以模拟未知通道,解决端到端系统的优化问题。其次,DCGAN的训练稳定性较差,由此产生的过拟合和梯度消失问题会导致性能下降。在本文中,我们提出了一个基于残差的DCGAN模型来缓解这些问题。具体来说,我们引入了残差块结构,有效地缓解了梯度的过拟合问题。此外,我们引入了Wasserstein距离来度量生成数据与真实数据分布的差异,进一步解决了模型训练不稳定的问题。仿真结果表明,与传统方法相比,我们提出的基于残差dcgan的模型有效地提高了块错误率(BLER)性能。
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