Non-orthogonal multiple access based cooperative relaying system (NOMA-CRS) has been proposed to alleviate the decay in spectral efficiency of the conventional CRS. However, existing NOMA-CRS studies assume perfect successive interference canceler at the relay and mostly investigate sum-rate whereas the error performance has not been taken into consideration. In this paper, we analyze error performance of the NOMA-CRS and the closed-form bit error probability (BEP) expression is derived over Nakagami-m fading channels. Then, thanks to the high performance of machine learning (ML) in challenging optimization problems, a joint power sharing-power allocation (PS-PA) scheme is proposed to minimize the bit error rate (BER) of the NOMA-CRS. The proposed ML-assisted optimization has a very low online implementation complexity. Based on provided extensive simulations, theoretical BEP analysis is validated. Besides, the proposed ML-aided PS-PA provides minimum BER (MBER) and outperforms previous PA strategies for the NOMA-CRS notably.
翻译:为了减轻常规CRS光谱效率的衰减,建议了非垂直多存取制合作中继系统(NOMA-CRS),但是,现有的NOMA-CRS研究假定在中继中完全连续取消干扰,主要调查总速率,而没有考虑到错误性能。在本文中,我们分析了NOMA-CRS的错误性能和封闭式差分概率(BEP)的表达方式在Nakagami-m 淡化的通道上产生。随后,由于机器学习在挑战优化问题方面的高性能,提出了联合分享权力分配(PS-PA)计划,以尽量减少NOMA-CRS的比特差率(BER)。拟议的ML辅助性优化在网上实施复杂性上非常低。根据所提供的广泛模拟,理论性BEP分析得到验证。此外,拟议的ML辅助PS-PA提供了最低的BER(MER),并超越了先前的NOMA-CRS的PA战略。