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Throughput Optimization of Multichannel Allocation Mechanism under Interference Constraint for Hybrid Overlay/underlay Cognitive Radio Networks with Energy Harvesting

机译:混合覆盖/底层认知无线电网络干扰约束下多通道分配机制的吞吐量优化

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By harvesting energy from ambient radio frequency (RF) signals, significant progress has been achieved in wireless networks self-maintaining their life cycles. Motivated by this and improved spectrum reuse by combined use of overlay/underlay modes of cognitive radio networks (CRNs), this paper proposes a novel multi-channel (m-channel) allocation performance maximization algorithm for low-power mobiles. CRNs, called secondary transmitters (STs), can harvest energy from RF signals by nearby active primary transmitters (PTs). In the proposed scheme, PTs and STs are distributed as independent homogeneous Poisson point processes and contact their receivers at fixed distances. Each PT contains a guard zone to protect its intended receiver from ST interference, and provides RF energy to STs located in its harvesting zone. Prioritization of STs during opportunistic allocation of channels is critical as properties like energy level and harvesting capability improve channel distribution performance. A novel metric is proposed that prioritizes STs based on initial energy levels, harvesting capability, and number of channels through which they can transmit. For comparison, three algorithms were considered: a greedy mechanism for m-channel allocation of hybrid CRNs without harvesting, the proposed m-channel allocation schemes based on maximum independent sets (MIS), and the proposed metric of hybrid CRNs with harvesting capability. The simulations show that the proposed m-channel allocation method based on MIS outperforms the greedy algorithm. The proposed m-channel allocation using the proposed metric on hybrid CRNs with energy harvesting ability produced the best performance of the three methods, proving the superiority of the proposed algorithm.
机译:通过从环境射频(RF)信号中收获能量,无线网络中的自我维护生命周期中的实现取得了重大进展。通过联合使用认知无线电网络(CRNS)的覆盖/衬垫模式(CRNS)的覆盖/底层模式的组合使用这种和改进的频谱再利用,提出了一种用于低功率移动机组的新型多通道(M频道)分配性能最大化算法。 CRNS,称为二次发射器(STS),可以通过附近的主发射机(PTS)从RF信号收集能量。在所提出的方案中,PTS和STS分配为独立的均匀泊松点过程,并在固定距离接触其接收器。每个PT都包含一个保护区,以保护其预期接收器免受ST干扰,并为位于其收获区的STS提供RF能量。在机会主义渠道的机会分配期间STS的优先级作为性能,如能量水平和收获能力等性能提高了通道分布性能。提出了一种新颖的度量,以基于初始能级,收获能力和可以传输的通道数优先考虑STS。为了进行比较,考虑了三种算法:基于最大独立集(MIS)的建议的M信道分配方案和具有收获能力的Hybrid CRN的所提出的M-Chandel分配方案的混合CRN的M沟道分配的贪婪机制。仿真表明,基于MIS的建议的M渠道分配方法优于贪婪算法。所提出的M沟道分配使用具有能量收集能力的Hybrid Crns的拟议度量产生了三种方法的最佳性能,证明了所提出的算法的优越性。

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