最小化WRSN在多muv和激光充电无人机辅助下的充电任务时间

IF 3.2 Q2 COMPUTER SCIENCE, INFORMATION SYSTEMS
Jian Zhang , Chuanwen Luo , Ning Liu , Yi Hong , Zhibo Chen
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引用次数: 0

摘要

研究了由多辆移动无人车(muv)和激光充电无人机(uav)辅助的无线可充电传感器网络(WRSN)的框架。在此框架的基础上,我们合作研究了多无人机多muv为WRSN充电的轨迹优化(图)问题,其目标是设计出无人机和muv协同充电WRSN的最优行程方案,使WRSN中每个传感器的剩余能量大于等于阈值,同时使耗时最多的无人机的时间消耗最小。图姆问题被证明是np困难的。为了解决图姆问题,我们首先研究了基于多无人机的TSP (MUTSP)问题,以平衡分配给每架无人机的收费任务。然后,在MUTSP问题的基础上,提出了图马算法(TOUMA)来设计无人机和多用途机动车辆的详细出行计划。本文还提出了一种名为TOUM-DQN的算法,通过从网络中提取有价值的信息,对无人机和机动车辆的旅行计划进行智能决策。通过大量的仿真实验验证了所提算法的有效性。结果表明,在时间效率方面,TOUMA算法优于太阳能充电法、基站充电法和TOUM-DQN算法。同时,实验结果表明,TOUMA - dqn算法的执行时间明显低于TOUMA算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Minimizing charging task time of WRSN assisted with multiple MUVs and laser-charged UAVs
This paper investigates the framework of wireless rechargeable sensor network (WRSN) assisted by multiple mobile unmanned vehicles (MUVs) and laser-charged unmanned aerial vehicles (UAVs). On the basis of framework, we cooperatively investigate the trajectory optimization of multi-UAVs and multi-MUVs for charging WRSN (TOUM) problem, whose goal aims at designing the optimal travel plan of UAVs and MUVs cooperatively to charge WRSN such that the remaining energy of each sensor in WRSN is greater than or equal to the threshold and the time consumption of UAV that takes the most time of all UAVs is minimized. The TOUM problem is proved NP-hard. To solve the TOUM problem, we first investigate the multiple UAVs-based TSP (MUTSP) problem to balance the charging tasks assigned to every UAV. Then, based on the MUTSP problem, we propose the TOUM algorithm (TOUMA) to design the detailed travel plan of UAVs and MUVs. We also present an algorithm named TOUM-DQN to make intelligent decisions about the travel plan of UAVs and MUVs by extracting valuable information from the network. The effectiveness of proposed algorithms is verified through extensive simulation experiments. The results demonstrate that the TOUMA algorithm outperforms the solar charging method, the base station charging method, and the TOUM-DQN algorithm in terms of time efficiency. Simultaneously, the experimental results show that the execution time of TOUM-DQN algorithm is significantly lower than TOUMA algorithm.
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CiteScore
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