Task planning using physics-based heuristics on manipulation actions

Akbari Aliakbar, Muhayyuddin, J. Rosell
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引用次数: 21

Abstract

In order to solve mobile manipulation problems, the efficient combination of task and motion planning is usually required. Moreover, the incorporation of physics-based information has recently been taken into account in order to plan the tasks in a more realistic way. In the present paper, a task and motion planning framework is proposed based on a modified version of the Fast-Forward task planner that is guided by physics-based knowledge. The proposal uses manipulation knowledge for reasoning on symbolic literals (both in offline and online modes) taking into account geometric information in order to evaluate the applicability as well as feasibility of actions while evaluating the heuristic cost. It results in an efficient search of the state space and in the obtention of low-cost physically-feasible plans. The proposal has been implemented and is illustrated with a manipulation problem consisting of a mobile robot and some fixed and manipulatable objects.
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在操作动作上使用基于物理的启发式的任务规划
为了解决移动操作问题,通常需要将任务和运动规划有效地结合起来。此外,最近已考虑到结合基于物理的资料,以便以更现实的方式规划任务。在本文中,提出了一个任务和运动规划框架,该框架基于物理知识指导下的快速前进任务规划器的改进版本。该建议使用操作知识对符号文字进行推理(离线和在线模式),并考虑几何信息,以便在评估启发式成本的同时评估行动的适用性和可行性。它可以有效地搜索状态空间,并获得低成本的物理可行方案。该方案已被实现,并以一个由移动机器人和一些固定可操作对象组成的操作问题为例进行了说明。
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