Implan: Scalable Incremental Motion Planning for Multi-Robot Systems

I. Saha, Rattanachai Ramaithitima, Vijay R. Kumar, George J. Pappas, S. Seshia
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引用次数: 46

Abstract

We consider the collision-free motion planning problem for a group of robots using a library of motion primitives. To cope with the complexity of the problem, we introduce an incremental algorithm based on an SMT solver, where we divide the robots into small groups based on a priority assignment algorithm. The priority assignment algorithm assigns priorities to the robots in such a way that the robots do not block the cost-optimal trajectories of the other robots. While the priority assignment algorithm attempts to assign distinct priorities to the robots, the algorithm ends up with assigning the same priority to some robots due to the dependencies among themselves. The algorithm includes the robots with the same priority in the same group. Our incremental algorithm then considers the robot groups one by one based on their priority and synthesizes the trajectories for the group of robots together. While synthesizing the trajectories for the robots in one group, the algorithm considers the higher priority robots as dynamic obstacles, and introduces a minimal delay in executing the cost-optimal trajectories to avoid collision with the higher priority robots. We apply our method to synthesize trajectories for a group of quadrotors in our lab space. Experimental results show that we can synthesize trajectories for tens of robots with complex dynamics in a reasonable time.
多机器人系统的可扩展增量运动规划
利用运动原语库研究了一组机器人的无碰撞运动规划问题。为了应对问题的复杂性,我们引入了一种基于SMT求解器的增量算法,其中我们根据优先级分配算法将机器人分成小组。优先级分配算法为机器人分配优先级,使机器人不会阻塞其他机器人的成本最优轨迹。虽然优先级分配算法试图为机器人分配不同的优先级,但由于机器人之间的依赖关系,算法最终会为某些机器人分配相同的优先级。该算法将具有相同优先级的机器人放在同一组中。然后,我们的增量算法根据优先级逐个考虑机器人组,并综合机器人组的轨迹。该算法在综合一组机器人的轨迹时,将高优先级机器人视为动态障碍物,并在执行成本最优轨迹时引入最小延迟,以避免与高优先级机器人发生碰撞。我们应用我们的方法在我们的实验室空间合成一组四旋翼飞行器的轨迹。实验结果表明,我们可以在合理的时间内合成数十个具有复杂动力学的机器人的轨迹。
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