A Deep-Learning Based Approach to Resource Allocation in NOMA Based Cognitive Radio Network with Heterogeneous IoT Users

S. Devipriya, J. M. Leo Manickam, K. Jasmine Mystica
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引用次数: 2

Abstract

In 5G mobile technology, the expansion of Internet of Things (IoT) has created a huge need for a wide variety of latency, dependability, and energy efficiency requirements, etc… Spectrum efficiency (SE) of such large scale network needs to be improved with an economical power consumption. The non-orthogonal multiple access (NOMA) technique is utilized to enhance system efficiency (SE) by merging several users in the same frequency. An energy efficient (EE) resource allocation (RA) problem has been formulated for NOMA based heterogeneous IoT networks. Using the examining technique of Cognitive Radio (CR) Network, a stepwise RA scheme is assigned for IoT Users (IoTUs) and Mobile Users (MUs) with the mutual interference management. Later, to find a solution quickly and flawlessly, a deep recurrent neural network (RNN) based mechanism has been proposed. Furthermore, to systemize the approach of heterogeneous users, a rate and precedence demands based scheduling method has been implemented. Extensive results demonstrate that the deep learning based framework performs better than traditional RA methods in terms of computational complexity. On comparing with the prevailing OFDMA technique, the NOMA system with the imperfect SIC provides an acceptable performance on the EE at the cost of low EE and high power consumption.
基于深度学习的异构物联网用户NOMA认知无线网络资源分配方法
在5G移动技术中,物联网(IoT)的扩展对各种延迟,可靠性和能效要求等产生了巨大的需求,需要在经济功耗的情况下提高这种大规模网络的频谱效率(SE)。采用非正交多址(NOMA)技术,通过合并同一频率的多个用户来提高系统效率。针对基于NOMA的异构物联网网络,提出了一个能源效率(EE)资源分配(RA)问题。利用认知无线电(CR)网络检测技术,对物联网用户(iotu)和移动用户(mu)进行分步RA方案分配,并进行互干扰管理。后来,为了快速而完美地找到解决方案,提出了一种基于深度递归神经网络(RNN)的机制。此外,为了使异构用户调度方法系统化,提出了一种基于速率和优先级需求的调度方法。大量的结果表明,基于深度学习的框架在计算复杂度方面优于传统的RA方法。与目前流行的OFDMA技术相比,具有不完善SIC的NOMA系统在EE上提供了可接受的性能,但代价是低EE和高功耗。
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