学习任务与运动组合规划的搜索启发式

Vektor Dewanto
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引用次数: 0

摘要

自主机器人必须规划两个错综复杂的相互依赖的层面:任务和运动。一种有希望的方法是同时计划任务和运动,从而产生一系列高水平的动作,保证有有效的运动计划。在本文中,我们提出了这样的计划系统,其骨干是估计行动序列的成本的能力。这个成本基本上编码了关于运动可行性和最优性标准的信息。具体来说,成本预测作为任务运动多图搜索的启发式算法。实验结果表明,该方法使规划效率逐步提高,且具有ε-最优性。这意味着在计划尝试中浪费的计算越来越少,并且保证找到的完整计划的成本不超过最优计划的(1 +ε)系数。这表明启发式及其学习公式是合理的,设计的特征向量足以用于学习。此外,我们发现在搜索过程中在线学习比离线学习提供更好的效用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Learning the search heuristic for combined task and motion planning
Autonomous robots have to plan two intricately dependent levels: task and motion. One promising approach is to plan task and motion simultaneously, yielding a sequence of high level actions that is guaranteed to have valid motion plans. In this paper, we present our work on such planning system whose backbone is the ability to estimate the cost of action sequences. This cost essentially encodes information about motion feasibility and optimality criteria. Concretely, the cost prediction serves as the heuristic for search over a task motion multigraph. The experiment results show that the proposed approach makes the planning progressively more efficient as well as ε-optimal. It means that the wasted computations are more and more reduced over planning attempts and that the complete plans found are guaranteed to have costs no more than a factor of (1 +ε) greater than the optimal. This suggests that the heuristic along with its learning formulation are justifiable and that the designed feature vector is sufficient for learning. In addition, we found that online learning during search offers better utility than the offline.
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