基于HFLC和PSO的无人系统协同任务分配与轨迹规划

A. T. Hafez, M. A. Kamel
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引用次数: 19

摘要

研究了协作式无人机编队的协同任务分配和轨迹规划问题。提出了一种层次模糊控制器(HFLC)与粒子群优化(PSO)相结合的新方法。最初,无人机团队以预先定义的队形覆盖指定区域。当探测到一个或多个目标时,各小组向地面站(GS)发送一揽子信息,包括目标的威胁程度、重要程度以及各小组与每个探测到的目标之间的分离距离。根据收集到的信息,地面站为目标分配队伍。在GS中实现HFLC是为了解决分配问题,确保每个团队被分配到一个唯一的目标。接下来,每个团队通过将路径规划问题表述为优化问题来规划自己的路径。在这种情况下,目标是考虑到无人机的动态约束和团队之间的碰撞避免,最大限度地减少到达目的地的时间。提出了一种控制参数化与时间离散化(CPTD)和粒子群优化的混合方法来解决这一优化问题。最后,通过数值仿真验证了该算法的有效性。
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Cooperative Task Assignment and Trajectory Planning of Unmanned Systems Via HFLC and PSO
This paper investigates the problems of cooperative task assignment and trajectory planning for teams of cooperative unmanned aerial vehicles (UAVs). A novel approach of hierarchical fuzzy logic controller (HFLC) and particle swarm optimization (PSO) is proposed. Initially, teams of UAVs are moving in a pre-defined formation covering a specified area. When one or more targets are detected, the teams send a package of information to the ground station (GS) including the target’s degree of threat, degree of importance, and the separating distance between each team and each detected target. Based on the gathered information, the ground station assigns the teams to the targets. HFLC is implemented in the GS to solve the assignment problem ensuring that each team is assigned to a unique target. Next, each team plans its own path by formulating the path planning problem as an optimization problem. The objective in this case is to minimize the time to reach their destination considering the UAVs dynamic constraints and collision avoidance between teams. A hybrid approach of control parametrization and time discretization (CPTD) and PSO is proposed to solve this optimization problem. Finally, numerical simulations demonstrate the effectiveness of the proposed algorithm.
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