A ResNet Based End-to-End Wireless Communication System under Rayleigh Fading and Bursty Noise Channels

Harshal Chaudhari, C. P. Najlah, S. Sameer
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引用次数: 1

Abstract

Deep learning has been applied recently in the wireless communication area such as modulation classification, channel estimation and signal detection. Many of the wireless communication problems can be modeled as classification problems. Residual learning has proven to have a crucial role in image recognition for providing fascinating classification accuracy. This paper proposes a residual learning-based autoencoder model that can jointly optimize the transmitter and the receiver while communicating over Rayleigh flat fading and bursty noise channels. Depending on the number of bits per symbol at the transmitter, the proposed system can automatically learn the constellation mapping and reconstruct the transmitted bits with very low loss metrics. Simulation studies show that the block error rate performance of the proposed model is superior to the convolutional layer based autoencoder system as well as the conventional modulation system under Rayleigh flat fading and bursty noise channels.
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瑞利衰落和突发噪声信道下基于ResNet的端到端无线通信系统
近年来,深度学习在调制分类、信道估计和信号检测等无线通信领域得到了广泛的应用。许多无线通信问题可以建模为分类问题。残差学习已被证明在图像识别中具有至关重要的作用,可以提供令人着迷的分类精度。提出了一种基于残差学习的自编码器模型,该模型可以在瑞利平衰落和突发噪声信道下对发送端和接收端进行联合优化。根据发射机中每个符号的比特数,该系统可以自动学习星座映射并以非常低的损耗指标重建传输比特。仿真研究表明,在瑞利平坦衰落和突发噪声信道下,该模型的分组误码率性能优于基于卷积层的自编码器系统和传统调制系统。
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