论文标题
在半结构化环境中可证明固定时间操纵计划的替代路径计划者(APP)
Alternative Paths Planner (APP) for Provably Fixed-time Manipulation Planning in Semi-structured Environments
论文作者
论文摘要
在包括物流和制造在内的许多应用中,机器人操纵器与人类或其他机器人一起在半结构化环境中运行。这些环境在很大程度上是静态的,但是它们可能包含一些机器人必须避免的可移动障碍。这些应用程序中的操作任务通常是高度重复的,但通常需要在严格的时间限制下进行快速可靠的运动计划功能。当环境高度结构化时,现有的基于预处理的方法是有益的,但是它们在存在可移动障碍的情况下会降低其性能,因为这些障碍不是先验的建模。我们提出了一种基于新颖的预处理方法,称为替代路径计划者(APP),该方法在半结构化环境中提供了可证明的固定时间计划保证。 App计划脱机的替代路径,以便,对于可移动障碍的任何配置,该集合中的至少一条路径是无碰撞的。在在线执行过程中,可以在几微秒内有效地查找无碰撞路径。我们在不同复杂性的半结构域中在一个7 DOF机器人组上评估应用程序,并证明应用程序比每个域的最新运动计划者快几个数量级。我们通过在机器人操作器上实时实验进一步验证这种方法。
In many applications, including logistics and manufacturing, robot manipulators operate in semi-structured environments alongside humans or other robots. These environments are largely static, but they may contain some movable obstacles that the robot must avoid. Manipulation tasks in these applications are often highly repetitive, but require fast and reliable motion planning capabilities, often under strict time constraints. Existing preprocessing-based approaches are beneficial when the environments are highly-structured, but their performance degrades in the presence of movable obstacles, since these are not modelled a priori. We propose a novel preprocessing-based method called Alternative Paths Planner (APP) that provides provably fixed-time planning guarantees in semi-structured environments. APP plans a set of alternative paths offline such that, for any configuration of the movable obstacles, at least one of the paths from this set is collision-free. During online execution, a collision-free path can be looked up efficiently within a few microseconds. We evaluate APP on a 7 DoF robot arm in semi-structured domains of varying complexity and demonstrate that APP is several orders of magnitude faster than state-of-the-art motion planners for each domain. We further validate this approach with real-time experiments on a robotic manipulator.