This paper presents a novel algorithm for robot task and motion planning (TAMP) problems by utilizing a reachability tree. While tree-based algorithms are known for their speed and simplicity in motion planning (MP), they are not well-suited for TAMP problems that involve both abstracted and geometrical state variables. To address this challenge, we propose a hierarchical sampling strategy, which first generates an abstracted task plan using Monte Carlo tree search (MCTS) and then fills in the details with a geometrically feasible motion trajectory. Moreover, we show that the performance of the proposed method can be significantly enhanced by selecting an appropriate reward for MCTS and by using a pre-generated goal state that is guaranteed to be geometrically feasible. A comparative study using TAMP benchmark problems demonstrates the effectiveness of the proposed approach.
翻译:本文通过利用可达性树为机器人任务和运动规划问题提供了一种新型算法。 虽然在运动规划中,树基算法以速度和简便而著称,但并不适合于涉及抽象和几何状态变量的TAMP问题。为了应对这一挑战,我们提出了一个等级抽样战略,首先利用蒙特卡洛树搜索(MCTS)生成一个抽象的任务计划,然后以几何上可行的运动轨迹填充细节。此外,我们表明,通过为MCTS选择适当的奖赏,以及使用一个保证具有几何性可行性的预产目标状态,可以极大地提高拟议方法的性能。使用TAMP基准问题的比较研究显示了拟议方法的有效性。</s>