论文标题
DeepReceiver:一个基于深度学习的智能接收器,用于物理层中的无线通信
DeepReceiver: A Deep Learning-Based Intelligent Receiver for Wireless Communications in the Physical Layer
论文作者
论文摘要
规范的无线通信系统由发射器和接收器组成。编码,调制和脉冲成型后,信息位会传输。由于射频(RF)障碍的影响,通道褪色,噪声和干扰,到达接收器的信号将被扭曲。接收器需要从扭曲的信号中恢复原始信息。在本文中,我们提出了一个新的接收器模型,即深度收益,该模型使用深层神经网络来替代传统接收器的整个信息恢复过程。我们设计了一维卷积的Densenet(1D-CONV-DENSENET)结构,其中全局池用于提高网络对不同输入信号长度的适应性。最终分类层使用多个二进制分类器,以实现多位信息流恢复。我们还通过在训练集中包含相应MCSS的信号样本来利用DeepReceiver对多个调制和编码方案(MCS)的统一盲目接收。仿真结果表明,在各种因素的影响下,拟议的DeepReceiver在噪声,RF损伤,多径褪色,多径褪色,小径干扰,动态环境以及多个MCS的统一接受下,就位错误率表现出比传统的逐步串行艰难决策者的表现更好。
A canonical wireless communication system consists of a transmitter and a receiver. The information bit stream is transmitted after coding, modulation, and pulse shaping. Due to the effects of radio frequency (RF) impairments, channel fading, noise and interference, the signal arriving at the receiver will be distorted. The receiver needs to recover the original information from the distorted signal. In this paper, we propose a new receiver model, namely DeepReceiver, that uses a deep neural network to replace the traditional receiver's entire information recovery process. We design a one-dimensional convolution DenseNet (1D-Conv-DenseNet) structure, in which global pooling is used to improve the adaptability of the network to different input signal lengths. Multiple binary classifiers are used at the final classification layer to achieve multi-bit information stream recovery. We also exploit the DeepReceiver for unified blind reception of multiple modulation and coding schemes (MCSs) by including signal samples of corresponding MCSs in the training set. Simulation results show that the proposed DeepReceiver performs better than traditional step-by-step serial hard decision receiver in terms of bit error rate under the influence of various factors such as noise, RF impairments, multipath fading, cochannel interference, dynamic environment, and unified reception of multiple MCSs.