Li Li, Chen Hongbin
School of Information and Communication, Guilin University of Electronic Technology, Guilin 541004, China.
Sensors (Basel). 2022 Aug 24;22(17):6381. doi: 10.3390/s22176381.
Target-barrier coverage is a newly proposed coverage problem in wireless sensor networks (WSNs). The target-barrier is a closed barrier with a distance constraint from the target, which can detect intrusions from outside. In some applications, detecting intrusions from outside and monitoring the targets inside the barrier is necessary. However, due to the distance constraint, the target-barrier fails to monitor and detect the target breaching from inside in a timely manner. In this paper, we propose a convex hull attraction (CHA) algorithm to construct the target-barrier and a UAV-enhanced coverage (QUEC) algorithm based on reinforcement learning to cover targets. The CHA algorithm first divides the targets into clusters, then constructs the target-barrier for the outermost targets of the clusters, and the redundant sensors replace the failed sensors. Finally, the UAV's path is planned based on QUEC. The UAV always covers the target, which is most likely to breach. The simulation results show that, compared with the target-barrier construction algorithm (TBC) and the virtual force algorithm (VFA), CHA can reduce the number of sensors required to construct the target-barrier and extend the target-barrier lifetime. Compared with the traveling salesman problem (TSP), QUEC can reduce the UAV's coverage completion time, improve the energy efficiency of UAV and the efficiency of detecting targets breaching from inside.
目标屏障覆盖是无线传感器网络(WSN)中一个新提出的覆盖问题。目标屏障是一个与目标有距离约束的封闭屏障,能够检测来自外部的入侵。在一些应用中,检测外部入侵并监测屏障内的目标是必要的。然而,由于距离约束,目标屏障无法及时监测和检测从内部突破屏障的目标。在本文中,我们提出了一种凸包吸引(CHA)算法来构建目标屏障,并提出了一种基于强化学习的无人机增强覆盖(QUEC)算法来覆盖目标。CHA算法首先将目标划分为簇,然后为簇的最外层目标构建目标屏障,冗余传感器替换失效传感器。最后,基于QUEC规划无人机的路径。无人机始终覆盖最有可能突破屏障的目标。仿真结果表明,与目标屏障构建算法(TBC)和虚拟力算法(VFA)相比,CHA可以减少构建目标屏障所需的传感器数量,并延长目标屏障的寿命。与旅行商问题(TSP)相比,QUEC可以减少无人机的覆盖完成时间,提高无人机的能量效率以及检测从内部突破屏障目标的效率。