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Sensor Network with Unmanned Aerial Vehicle-enabled Wireless Power Transfer: Optimal Clustering and Trajectory Designing

机译:具有无人飞行器无线功率传输的传感器网络:最佳聚类和轨迹设计

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In this work, we investigate the application of an unmanned aerial vehicle (UAV)-enabled wireless power transfer (WPT) system in large-scale wireless sensor networks (WSNs). The specific research described in this paper can be divided into three parts. Firstly, it is well known that the energy consumption of WSNs and the limited-capacity battery of nodes lead to the limited lifetime of WSNs. To improve the lifetime of the WSNs, the UAV's optimal position and the optimal clustering scheme are determined using an improved differential evolution (DE) algorithm in multicluster scenarios. The corresponding energy consumption is determined by comparing different clustering schemes. Meanwhile, the shortest time for the UAV to charge nodes is determined by utilizing the proposed DE algorithm to search for the optimal charging location. Since the UAV usually acts as both a base station and an energy transmitter, the algorithm requires joint optimization of the clustering scheme and the UAV's charging location. Secondly, as the scale of WSNs increases, some areas will be in the "dead" state within the WSNs, which will greatly affect the performance. On the basis of the above studies, an improved local permutation algorithm is applied to plan an optimal path subject to the dormancy rate constraint in all regions. With the algorithm, the UAV needs to "rescue" the target region and charge regions along the path as much as possible. Finally, numerical results show that the optimized UAV trajectory can significantly improve the energy transmission efficiency, and the proposed optimal path planning improves the lifetime of WSNs.
机译:在这项工作中,我们研究了无人飞行器(UAV)支持的无线电力传输(WPT)系统在大规模无线传感器网络(WSN)中的应用。本文所述的具体研究可以分为三个部分。首先,众所周知,无线传感器网络的能耗和节点容量有限的电池导致无线传感器网络的寿命有限。为了提高WSN的生命周期,在多集群场景中使用改进的差分进化(DE)算法确定了无人机的最佳位置和最佳聚类方案。通过比较不同的聚类方案来确定相应的能耗。同时,通过利用提出的DE算法来搜索最佳充电位置来确定UAV对节点充电的最短时间。由于无人机通常同时充当基站和能量发送器,因此该算法需要联合优化聚类方案和无人机的充电位置。其次,随着WSN规模的增加,WSN内的某些区域将处于“死亡”状态,这将极大地影响性能。在以上研究的基础上,提出了一种改进的局部置换算法,以规划在所有区域中受休眠率约束的最优路径。使用该算法,无人机需要尽可能地“拯救”目标区域和沿路径的电荷区域。最后,数值结果表明,优化的无人机航迹可以显着提高能量传输效率,并且所提出的最优路径规划可以延长无线传感器网络的寿命。

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