Sundaresan Sabapathy, Aswini Krishnan, Nishanth Nedoumarane, Surendar Maruthu, D. Jayakody
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The significant aim is to maximize the EE of the system, maintaining equal fairness among the users in the cluster while satisfying the quality-of-service (QoS) requirements. The optimal solution to fulfill the trade-off between data decoded and energy harvested (EH) at the receiver is achieved through a deep learning (DL) model, viz., deep belief network (DBN). The dataset consisting of 3500 samples is created by varying the power levels from 20 dBm to 40 dBm, and also varying the distance of the users from the base station (BS). 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引用次数: 0
摘要
由移动互联网和连接设备驱动的无线数据服务的指数级增长引发了第五代(B5G)以上蜂窝网络的蓬勃发展。同时无线信息与功率传输(SWIPT)、非正交多址(NOMA)与多天线系统的集成是提高频谱效率(SE)和能量效率(EE)的一种潜在解决方案。此外,它还为超可靠和低延迟通信(URLLC)和大规模机器类型通信(mMTC)场景铺平了道路。本文探讨了基于swipt的多输入多输出(MIMO) NOMA系统中功率分配(PA)和功率分割(PS)控制的最佳解决方案,以实现EE的最大化。重要的目标是最大化系统的EE,在满足服务质量(QoS)要求的同时保持集群中用户之间的公平。通过深度学习(DL)模型,即深度信念网络(DBN),实现了在接收端解码数据和能量收集(EH)之间权衡的最佳解决方案。该数据集由3500个样本组成,通过改变功率水平从20 dBm到40 dBm,并改变用户到基站的距离(BS)来创建。在5GB的SWIPT MIMO NOMA系统中,DBN的PA效率和PS效率分别为94.9%和91.36%。
Deep Learning based Simultaneous Wireless Information and Power Transfer Enabled Massive MIMO NOMA for Beyond 5G
The exponential growth of wireless data services driven by mobile internet and connected devices has triggered the thriving of beyond fifth-generation (B5G) cellular networks. The integration of simultaneous wireless information and power transfer (SWIPT), non-orthogonal multiple access (NOMA), with multiple antenna system is a potential solution to improve spectral efficiency (SE) and energy efficiency (EE). Moreover, it paves the way for ultra-reliable and low-latency communication (URLLC) and massive machine-type communication (mMTC) scenarios. This paper explores an optimal solution for power allocation (PA) and power splitting (PS) control for EE maximization in SWIPT-based multiple input multiple outputs (MIMO) NOMA system. The significant aim is to maximize the EE of the system, maintaining equal fairness among the users in the cluster while satisfying the quality-of-service (QoS) requirements. The optimal solution to fulfill the trade-off between data decoded and energy harvested (EH) at the receiver is achieved through a deep learning (DL) model, viz., deep belief network (DBN). The dataset consisting of 3500 samples is created by varying the power levels from 20 dBm to 40 dBm, and also varying the distance of the users from the base station (BS). The PA and PS efficiency of 94.09 and 91.36 percent respectively, is achieved with DBN which aids for energy and SE in SWIPT MIMO NOMA system for 5GB.