A Deep Learning Framework for Predicting Signals in OFDM-NOMA with various Algorithms

Bibekananda Panda, Poonam Singh
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Abstract

The non-orthogonal multiple access (NOMA) approaches have increasingly attracted much interest. It has also been a potential method for wireless communication systems beyond the fifth generation (5G). The successive interference cancellation (SIC) procedure in NOMA systems is often carried out at the receiver, where several users are sequentially decoded. The successful detection of prior users will significantly influence the detection accuracy due to the effects of interferences. A deep learning-based NOMA receiver is analyzed to detect signals for multiple users in a single application without determining channels. This paper analyzes deep learning (DL)- based receiver for NOMA signal detection concerning several DL-aided sequence layersbased algorithms and optimizers by training orthogonal frequency division multiplexing (OFDM) symbols. The simulation outcomes illustrate the various DL-based receiver characteristics using the traditional SIC approach. It also demonstrates that the effect of the different DL-based models is more predictable than the SIC approach.
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基于多种算法的OFDM-NOMA信号预测的深度学习框架
非正交多址(NOMA)技术越来越受到人们的关注。它也是第五代(5G)以上无线通信系统的潜在方法。在NOMA系统中,连续干扰消除(SIC)过程通常在接收器上进行,其中多个用户被顺序解码。由于干扰的影响,先前用户的成功检测将显著影响检测精度。分析了一种基于深度学习的NOMA接收机在不确定信道的情况下检测单个应用中多个用户的信号。本文通过对正交频分复用(OFDM)符号的训练,分析了基于深度学习(DL)辅助序列层的几种算法和优化器在NOMA信号检测中的应用。仿真结果说明了传统SIC方法下基于dl的接收机的各种特性。它还表明,不同的基于dl的模型的效果比SIC方法更可预测。
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