一种通信信道密度估计生成对抗网络

Aaron Smith, J. Downey
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引用次数: 11

摘要

基于自编码器的通信系统使用神经网络信道模型在近似物理通信信道上反向传播消息重构误差梯度。在这项工作中,我们开发并测试了一种新的生成对抗网络(GAN)架构,用于训练随机通道近似神经网络。在之前的研究中,研究人员主要关注加性高斯白噪声(AWGN)信道和/或简化的瑞利衰落信道,这两种信道都是线性的,并且具有明确的解析解。考虑到训练神经网络在计算上是昂贵的,信道近似网络——更普遍的是自动编码器系统——应该在传统上困难的通信环境中进行评估。为此,我们的研究重点是包含非线性放大器失真、脉冲形状滤波、符号间干扰、频率相关群延迟、多径和非高斯统计组合的信道。我们的每个模型都是在没有任何先验知识的情况下训练的。我们证明训练的模型已经学会了在任意放大器驱动电平和星座字母表上进行泛化。我们通过比较几种通道模拟的边际概率密度函数与其相应的神经网络近似的边际概率密度函数来证明我们的GAN架构的多功能性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Communication Channel Density Estimating Generative Adversarial Network
Autoencoder-based communication systems use neural network channel models to backwardly propagate message reconstruction error gradients across an approximation of the physical communication channel. In this work, we develop and test a new generative adversarial network (GAN) architecture for the purpose of training a stochastic channel approximating neural network. In previous research, investigators have focused on additive white Gaussian noise (AWGN) channels and/or simplified Rayleigh fading channels, both of which are linear and have well defined analytic solutions. Given that training a neural network is computationally expensive, channel approximation networks-and more generally the autoencoder systems-should be evaluated in communication environments that are traditionally difficult. To that end, our investigation focuses on channels that contain a combination of non-linear amplifier distortion, pulse shape filtering, intersymbol interference, frequency-dependent group delay, multipath, and non-Gaussian statistics. Each of our models are trained without any prior knowledge of the channel. We show that the trained models have learned to generalize over an arbitrary amplifier drive level and constellation alphabet. We demonstrate the versatility of our GAN architecture by comparing the marginal probability density function of several channel simulations with that of their corresponding neural network approximations.
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