已收录 270995 条政策
 政策提纲
  • 暂无提纲
A Communication Channel Density Estimating Generative Adversarial Network
[摘要] 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
[发布日期] 2019-06-25 [发布机构] 
[效力级别]  [学科分类] 工程和技术(综合)
[关键词] CHANNELS (DATA TRANSMISSION);DENSITY DISTRIBUTION;ESTIMATING;COMMUNICATION NETWORKS;ALGORITHMS;CODERS;SELF ORGANIZING SYSTEMS;PROBABILITY THEORY;MACHINE LEARNING;MODULATION;COMMUNICATION;CODE DIVISION MULTIPLEXING;CHANNEL NOISE;TRANSMITTERS;STOCHASTIC PROCESSES;DATA TRANSMISSION;OPTIMIZATION [时效性] 
   浏览次数:57      统一登录查看全文      激活码登录查看全文