Deep Learning for Signal Detection in Non-Orthogonal Multiple Access Wireless Systems

Narengerile, J. Thompson
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引用次数: 31

Abstract

This paper presents an initial investigation of deep learning (DL) for multi-user detection in non-orthogonal multiple access (NOMA) wireless systems. In NOMA systems, the successive interference cancellation (SIC) process is usually performed at the receiver, where multiple users are decoded in a sequential fashion. Due to error propagation effects, the detection accuracy will largely depend on the correct detection of previous users. A DL-based NOMA receiver is designed to decode messages for multiple users in a one-shot process, without estimating channels explicitly. The DL-based NOMA receiver is represented by a deep neural network (DNN), which performs channel estimation and signal detection in a joint manner. The DNN is first trained offline using simulation data based on channel statistics and then used to recover the transmitted symbols directly in the online deployment stage. Initial results show that the DL approach can outperform the conventional pilot-based channel estimation methods and is more robust to the number of pilot symbols. The DNN is shown to be capable of mitigating the potential error propagation effects that occur in the SIC detector. Furthermore, when the inter-symbol interference is severe, the DL approach can achieve better performance than a maximum likelihood detector that does not account for interference effects.
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基于深度学习的非正交多址无线系统信号检测
本文对非正交多址(NOMA)无线系统中多用户检测的深度学习(DL)进行了初步研究。在NOMA系统中,连续干扰消除(SIC)过程通常在接收器上执行,其中多个用户以顺序方式解码。由于误差传播的影响,检测的准确性很大程度上取决于之前用户的正确检测。基于dl的NOMA接收机被设计为在一次处理中为多个用户解码消息,而不需要显式估计信道。基于dl的NOMA接收机采用深度神经网络(deep neural network, DNN)进行信道估计和信号检测。首先使用基于信道统计的仿真数据离线训练深度神经网络,然后在在线部署阶段直接用于恢复传输的符号。初步结果表明,深度学习方法优于传统的基于导频的信道估计方法,并且对导频符号的数量具有更强的鲁棒性。DNN被证明能够减轻发生在SIC检测器中的潜在误差传播效应。此外,当符号间干扰严重时,深度学习方法可以比不考虑干扰影响的最大似然检测器获得更好的性能。
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