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首页> 外文期刊>The Journal of Artificial Intelligence Research >The PETLON Algorithm to Plan Efficiently for Task-Level-Optimal Navigation
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The PETLON Algorithm to Plan Efficiently for Task-Level-Optimal Navigation

机译:Petlon算法为了有效地计划任务级最佳导航

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摘要

Intelligent mobile robots have recently become able to operate autonomously in large-scale indoor environments for extended periods of time. In this process, mobile robots need the capabilities of both task and motion planning. Task planning in such environments involves sequencing the robot’s high-level goals and subgoals, and typically requires reasoning about the locations of people, rooms, and objects in the environment, and their interactions to achieve a goal. One of the prerequisites for optimal task planning that is often overlooked is having an accurate estimate of the actual distance (or time) a robot needs to navigate from one location to another. State-of-the-art motion planning algorithms, though often computationally complex, are designed exactly for this purpose of finding routes through constrained spaces.In this article, we focus on integrating task and motion planning (TMP) to achieve task-level-optimal planning for robot navigation while maintaining manageable computational efficiency. To this end, we introduce TMP algorithm PETLON (Planning Efficiently for Task-Level-Optimal Navigation), including two configurations with different trade-offs over computational expenses between task and motion planning, for everyday service tasks using a mobile robot. Experiments have been conducted both in simulation and on a mobile robot using object delivery tasks in an indoor office environment. The key observation from the results is that PETLON is more efficient than a baseline approach that pre-computes motion costs of all possible navigation actions, while still producing plans that are optimal at the task level. We provide results with two different task planning paradigms in the implementation of PETLON, and offer TMP practitioners guidelines for the selection of task planners from an engineering perspective.
机译:智能移动机器人最近能够长时间在大型室内环境中自主运行。在此过程中,移动机器人需要任务和运动规划的功能。在此类环境中的任务规划涉及测序机器人的高级目标和子站,并且通常需要对环境中的人员,房间和物体的位置的推理及其相互作用来实现目标。通常被忽视的最佳任务规划的先决条件之一是对机器人需要从一个位置导航到另一个位置的实际距离(或时间)的准确估计。最先进的运动规划算法虽然通常是计算复杂的,但是精确地设计了通过约束空间找到路线的目的。在本文中,我们专注于整合任务和运动计划(TMP)来实现任务级 - 机器人导航的最佳规划,同时保持可管理的计算效率。为此,我们介绍了TMP算法Petlon(有效地为任务级 - 最佳导航计划),包括使用移动机器人的任务和运动规划之间的计算费用不同权衡的两个配置,用于使用移动机器人的日常服务任务。使用室内办公环境中的物体交付任务,在模拟和移动机器人上进行了实验。结果的关键观察是,Petlon比预先计算所有可能导航动作的运动成本,同时仍生产在任务级别最佳的计划的基线方法更有效。我们提供了两种不同的任务规划范例在实施Petlon的结果,并提供从工程角度选择任务规划者的TMP从业者指导方针。

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