Finding Missing Skills for High-Level Behaviors

Adam Pacheck, Salar Moarref, H. Kress-Gazit
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引用次数: 6

Abstract

Recently, Linear Temporal Logic (LTL) has been used as a formalism for defining high-level robot tasks, and LTL synthesis has been used to automatically create correct-by-construction robot control. The underlying premise of this approach is that the robot has a set of actions, or skills, that can be composed to achieve the high- level task. In this paper we consider LTL specifications that cannot be synthesized into robot control due to lack of appropriate skills; we present algorithms for automatically suggesting new or modified skills for the robot that will guarantee the task will be achieved. We demonstrate our approach with a physical Baxter robot and a simulated KUKA IIWA arm.
寻找高级行为缺失的技能
近年来,线性时间逻辑(LTL)已被用作定义高级机器人任务的形式化方法,LTL综合已被用于自动创建按结构正确的机器人控制。这种方法的基本前提是机器人具有一组动作或技能,可以组合起来完成高级任务。在本文中,我们考虑了由于缺乏适当的技能而无法综合到机器人控制中的LTL规范;我们提出算法,自动建议新的或修改的技能,机器人将保证任务的完成。我们用一个物理的Baxter机器人和一个模拟的KUKA IIWA手臂来演示我们的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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