基于能效最大化的射频能量采集底层CRN资源分配与QoS保障

Xianglu Li, He Xiao, Jie Tian
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引用次数: 3

摘要

在能量收集认知无线网络(EH-CRN)中,如何在节点自维护的情况下实现节能传输是一个非常重要的问题。本文提出了一种基于射频能量采集硬件的底层认知无线电网络结构,其中二次发射机(ST)首先从源自主网络的射频信号源收集能量,然后使用收集到的能量与二次接收机(SR)通信。SU消耗的总能量必须等于或小于被称为能量因果约束的总收获能量。此外,ST具有一些初始能量,这些初始能量可能是前传输块的剩余能量,并且我们还考虑了能量收集电路的能量损失作为一个系统因素。我们的目标是通过共同优化传输时间和功率,实现二次网的最大能效(EE)。为了保证从端收发器的服务质量(QoS),在EE最大化的过程中对ST施加了最小吞吐量需求约束。由于EE最大化是一个非线性分数规划问题,提出了一种基于Dinkelbach方法的快速迭代算法来实现资源的最优分配。仿真结果表明,该策略收敛速度快,在保证QoS的前提下大大提高了系统的EE。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Energy-Efficiency Maximization Based Resource Allocation for RF Energy Harvesting Underlay CRN With QoS Guarantee
How to achieve energy-efficient transmission in energy harvesting cognitive radio network (EH-CRN) is of great importance when nodes in EH-CRN are self-maintained. This paper presents a radio frequency (RF) energy harvesting hardware-based underlay cognitive radio network structure, where a secondary transmitter (ST) first harvests energy from RF signals source originating from the primary network, and then communicates with a secondary receiver (SR) using the harvested energy. The total consumed energy by the SU must be equal to or less than the total harvested energy referred to as energy causality constraint. In addition, the ST possesses some initial energy which may be the residual energy from the former transmission blocks, and we consider the energy loss of energy harvesting circuit as a systematic factor as well. Our goal is to achieve the maximum energy efficiency (EE) of the secondary network by jointly optimizing transmitting time and power. To guarantee the quality of service (QoS) of secondary transceiver, a minimum throughput requirement constraint is imposed on the ST in the process of EE maximization. As the EE maximization is a nonlinear fractional programming problem, a quick iterative algorithm based on Dinkelbach method is proposed to achieve the optimal resource allocation. Simulation results show that the proposed strategy has fast convergence and can improve the system EE greatly while ensuring the QoS.
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