High-level autonomy requires discrete and continuous reasoning to decide both what actions to take and how to execute them. Integrated Task and Motion Planning (TMP) algorithms solve these hybrid problems jointly to consider constraints between the discrete symbolic actions (i.e., the task plan) and their continuous geometric realization (i.e., motion plans). This joint approach solves more difficult problems than approaches that address the task and motion subproblems independently. TMP algorithms combine and extend results from both task and motion planning. TMP has mainly focused on computational performance and completeness and less on solution optimality. Optimal TMP is difficult because the independent optima of the subproblems may not be the optimal integrated solution, which can only be found by jointly optimizing both plans. This paper presents Task and Motion Informed Trees (TMIT*), an optimal TMP algorithm that combines results from makespan-optimal task planning and almost-surely asymptotically optimal motion planning. TMIT* interleaves asymmetric forward and reverse searches to delay computationally expensive operations until necessary and perform an efficient informed search directly in the problem's hybrid state space. This allows it to solve problems quickly and then converge towards the optimal solution with additional computational time, as demonstrated on the evaluated robotic-manipulation benchmark problems.
翻译:综合任务和动态规划算法(TMP)解决这些混合问题,共同考虑离散象征性行动(即任务计划)及其连续几何实现(即运动计划)之间的制约。这种联合方法解决的难题比独立处理任务和运动次级问题的方法更为困难。TMP算法综合并扩展任务和运动规划的结果。TMP算法主要侧重于计算性能和完整性,较少注重解决方案的最佳性。最佳的TMP方法可能不是最佳的综合解决办法,因为对子问题的独立选择可能不是最佳的综合解决办法,而只有共同优化两个计划才能找到这种解决办法。本文介绍了任务和运动知情树(TMIT*),最佳的TMP算法结合了处理任务和运动次级问题的方法,几乎可以肯定地将任务和运动规划的结果结合起来。TMIT* 将前向和完整地分开,并逆向延迟计算性昂贵的操作,直到必要和迅速进行高效的知情的搜索,从而能够直接找到最佳的模型问题,从而能够直接解决最佳的计算问题。