Yang Liyuan, Hao Yongping, Xu Jiulong, Li Meixuan
School of Equipment Engineering, Shenyang Ligong University, Shenyang 110159, China.
Sensors (Basel). 2024 Nov 29;24(23):7639. doi: 10.3390/s24237639.
The challenge of search inefficiency arises when multiple UAV swarms conduct dynamic target area searches in unknown environments. The primary sources of this inefficiency are repeated searches in the target region and the dynamic motion of targets. To address this issue, we present the distributed adaptive real-time planning search (DAPSO) technique, which enhances the search efficiency for dynamic targets in uncertain mission situations. To minimize repeated searches, UAVs utilize localized communication for information exchange and dynamically update their situational awareness regarding the mission environment, facilitating collaborative exploration. To mitigate the effects of target mobility, we develop a dynamic mission planning method based on local particle swarm optimization, enabling UAVs to adjust their search trajectories in response to real-time environmental inputs. Finally, we propose a distance-based inter-vehicle collision avoidance strategy to ensure safety during multi-UAV cooperative searches. The experimental findings demonstrate that the proposed DAPSO method significantly outperforms other search strategies regarding the coverage and target detection rates.
当多个无人机群在未知环境中进行动态目标区域搜索时,就会出现搜索效率低下的问题。这种低效率的主要原因是在目标区域的重复搜索以及目标的动态移动。为了解决这个问题,我们提出了分布式自适应实时规划搜索(DAPSO)技术,该技术可提高在不确定任务情况下对动态目标的搜索效率。为了尽量减少重复搜索,无人机利用局部通信进行信息交换,并动态更新其对任务环境的态势感知,以促进协同探索。为了减轻目标移动性的影响,我们开发了一种基于局部粒子群优化的动态任务规划方法,使无人机能够根据实时环境输入调整其搜索轨迹。最后,我们提出了一种基于距离的车辆间避碰策略,以确保多无人机协同搜索期间的安全。实验结果表明,所提出的DAPSO方法在覆盖范围和目标检测率方面明显优于其他搜索策略。