扩展行为树,用于快速定义灵活的机器人任务

Francesco Rovida, Bjarne Großmann, V. Krüger
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引用次数: 75

摘要

现代工业对灵活性的要求要求机器人能够高效、快速地适应不同的任务。实现这种灵活的编程范式的一种方法是指导具有任务目标的机器人,并让规划算法推断出在特定环境中使用的正确动作顺序。一种常见的方法是将实现规划域中语义定义的操作的技能(例如选择或放置对象)与特定的可执行函数连接起来。因此,这些技能被视为独立的组件,从而导致执行不理想。在本文中,我们提出了一种方法,其中使用单独的扩展行为树(eBT)同时指定执行过程和规划域,这是本文形式化和讨论的模型。在运行时,机器人可以使用更抽象的技能来使用PDDL规划器来规划序列,将序列展开为层次树,并重新组织以优化执行时间和资源使用。该优化在模拟和实验室环境中进行了演示,最终执行时间节省了20%。
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Extended behavior trees for quick definition of flexible robotic tasks
The requirement of flexibility in the modern industries demands robots that can be efficiently and quickly adapted to different tasks. A way to achieve such a flexible programming paradigm is to instruct robots with task goals and leave planning algorithms to deduct the correct sequence of actions to use in the specific context. A common approach is to connect the skills that realize a semantically defined operation in the planning domain — such as picking or placing an object — to specific executable functions. As a result the skills are treated as independent components, which results into suboptimal execution. In this paper we present an approach where the execution procedures and the planning domain are specified at the same time using solely extended Behavior Trees (eBT), a model formalized and discussed in this paper. At run-time, the robot can use the more abstract skills to plan a sequence using a PDDL planner, expand the sequence into a hierarchical tree, and re-organize it to optimize the time of execution and the use of resources. The optimization is demonstrated on a kitting operation in both simulation and lab environment, showing up to 20% save in the final execution time.
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