Gaballa Mohamed, Abbod Maysam, Aldallal Ammar
Department of Electronic & Electrical Engineering, Brunel University London, Uxbridge UB8 3PH, UK.
Department of Telecommunication Engineering, Ahlia University, Manama P.O. Box 10878, Bahrain.
Sensors (Basel). 2022 May 11;22(10):3666. doi: 10.3390/s22103666.
In a non-orthogonal multiple access (NOMA) system, the successive interference cancellation (SIC) procedure is typically employed at the receiver side, where several user's signals are decoded in a subsequent manner. Fading channels may disperse the transmitted signal and originate dependencies among its samples, which may affect the channel estimation procedure and consequently affect the SIC process and signal detection accuracy. In this work, the impact of Deep Neural Network (DNN) in explicitly estimating the channel coefficients for each user in NOMA cell is investigated in both Rayleigh and Rician fading channels. The proposed approach integrates the Long Short-Term Memory (LSTM) network into the NOMA system where this LSTM network is utilized to predict the channel coefficients. DNN is trained using different channel statistics and then utilized to predict the desired channel parameters that will be exploited by the receiver to retrieve the original data. Furthermore, this work examines how the channel estimation based on Deep Learning (DL) and power optimization scheme are jointly utilized for multiuser (MU) recognition in downlink Power Domain Non-Orthogonal Multiple Access (PD-NOMA) system. Power factors are optimized with a view to maximize the sum rate of the users on the basis of entire power transmitted and Quality of service (QoS) constraints. An investigation for the optimization problem is given where Lagrange function and Karush-Kuhn-Tucker (KKT) optimality conditions are applied to deduce the optimum power coefficients. Simulation results for different metrics, such as bit error rate (BER), sum rate, outage probability and individual user capacity, have proved the superiority of the proposed DL-based channel estimation over conventional NOMA approach. Additionally, the performance of optimized power scheme and fixed power scheme are evaluated when DL-based channel estimation is implemented.
在非正交多址接入(NOMA)系统中,连续干扰消除(SIC)过程通常在接收端采用,在该过程中,多个用户的信号以后续方式进行解码。衰落信道可能会使发射信号分散,并在其样本之间产生相关性,这可能会影响信道估计过程,进而影响SIC过程和信号检测精度。在这项工作中,研究了深度神经网络(DNN)在瑞利衰落信道和莱斯衰落信道中明确估计NOMA小区中每个用户的信道系数的影响。所提出的方法将长短期记忆(LSTM)网络集成到NOMA系统中,该LSTM网络用于预测信道系数。使用不同的信道统计信息对DNN进行训练,然后利用其预测所需的信道参数,接收端将利用这些参数来检索原始数据。此外,这项工作还研究了基于深度学习(DL)的信道估计和功率优化方案如何联合用于下行链路功率域非正交多址接入(PD-NOMA)系统中的多用户(MU)识别。基于传输的总功率和服务质量(QoS)约束,对功率因子进行优化,以最大化用户的总和速率。给出了对优化问题的研究,应用拉格朗日函数和卡鲁什 - 库恩 - 塔克(KKT)最优性条件来推导最优功率系数。针对不同指标(如误码率(BER)、总和速率、中断概率和单个用户容量)的仿真结果证明了所提出的基于DL的信道估计优于传统的NOMA方法。此外,在实施基于DL的信道估计时,评估了优化功率方案和固定功率方案的性能。