Efficient NOMA system: hybrid heuristic-based network parameter optimization for spectral and energy efficiency with QoS maximization

Q3 Engineering
R. Prameela Devi, N. Prabakaran
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引用次数: 0

Abstract

Abstract Due to its ability to boost the spectral efficiency of wireless communications systems, non-orthogonal multiple access (NOMA) has been deemed promising. NOMA retains the necessary effectiveness to enable 5G communication. The wireless network’s spectral efficiency and energy are reduced due to the limited spectrum and rising demands of users. Because of the mutual cross-tier interference that occurs in heterogeneous networks, NOMA presents brand-new technical difficulties in resource allocation. The use of non-orthogonal resources and spectrum sharing can cause interference that lowers the performance. Therefore, incorporating quality-of-service (QoS) into the design of a new NOMA model with improved bandwidth efficiency and energy efficiency (EE) is absolutely necessary. A deep learning strategy for maximizing the efficiency of spectrum and energy with QoS in NOMA is presented in this paper. In order to increase the efficiency of spectrum and energy with QoS in the NOMA system, an adaptive artificial rabbits Harris Hawks optimization (AARHHO) algorithm is developed to optimize parameters such as the time allocation ratio and beam forming vectors presented in the full-duplex (FD) relay and base station (BS). As a result, the NOMA network efficiency of bandwidth and energy is effectively maximized with QoS using the newly developed AARHHO approach.
高效NOMA系统:基于混合启发式的频谱和能量效率网络参数优化与QoS最大化
由于能够提高无线通信系统的频谱效率,非正交多址(NOMA)被认为是有前途的。NOMA保留了实现5G通信所需的有效性。由于有限的频谱和不断增长的用户需求,降低了无线网络的频谱效率和能量。由于异构网络中存在相互间的跨层干扰,NOMA在资源分配方面提出了全新的技术难题。使用非正交资源和频谱共享会产生干扰,降低性能。因此,将服务质量(QoS)纳入新的NOMA模型的设计中,以提高带宽效率和能量效率(EE)是绝对必要的。提出了一种基于深度学习的NOMA频谱和能量效率最大化策略。为了提高NOMA系统的频谱和能量利用效率和服务质量,提出了一种自适应人工兔子哈里斯鹰优化算法(AARHHO),对全双工(FD)中继和基站(BS)中出现的时间分配比和波束形成矢量等参数进行优化。因此,使用新开发的AARHHO方法,可以有效地最大化NOMA网络的带宽和能量效率,并提供QoS。
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来源期刊
Journal of Optical Communications
Journal of Optical Communications Engineering-Electrical and Electronic Engineering
CiteScore
2.90
自引率
0.00%
发文量
86
期刊介绍: This is the journal for all scientists working in optical communications. Journal of Optical Communications was the first international publication covering all fields of optical communications with guided waves. It is the aim of the journal to serve all scientists engaged in optical communications as a comprehensive journal tailored to their needs and as a forum for their publications. The journal focuses on the main fields in optical communications
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