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首页> 外文期刊>The Journal of Artificial Intelligence Research >Refining the Execution of Abstract Actions with Learned Action Models
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Refining the Execution of Abstract Actions with Learned Action Models

机译:用学习的动作模型完善抽象动作的执行

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摘要

Robots reason about abstract actions, such as go to position 'l', in order to decide what to do or to generate plans for their intended course of action. The use of abstract actions enables robots to employ small action libraries, which reduces the search space for decision making. When executing the actions, however, the robot must tailor the abstract actions to the specific task and situation context at hand. In this article we propose a novel robot action execution system that learns success and performance models for possible specializations of abstract actions. At execution time, the robot uses these models to optimize the execution of abstract actions to the respective task contexts. The robot can so use abstract actions for efficient reasoning, without compromising the performance of action execution. We show the impact of our action execution model in three robotic domains and on two kinds of action execution problems: (1) the instantiation of free action parameters to optimize the expected performance of action sequences; (2) the automatic introduction of additional subgoals to make action sequences more reliable.
机译:机器人对抽象动作进行推理,例如转到位置“ l”,以便决定要做什么或针对其预期的动作过程制定计划。抽象动作的使用使机器人可以使用小型动作库,从而减少了用于决策的搜索空间。但是,在执行动作时,机器人必须根据特定的任务和当前情况来定制抽象动作。在本文中,我们提出了一种新颖的机器人动作执行系统,该系统可以学习成功和性能模型,以实现抽象动作的可能专业化。在执行时,机器人使用这些模型来优化对相应任务上下文的抽象动作的执行。机器人可以使用抽象动作进行有效推理,而不会影响动作执行的性能。我们展示了我们的动作执行模型在三个机器人领域和两种动作执行问题上的影响:(1)实例化自由动作参数以优化动作序列的预期性能; (2)自动引入其他子目标,以使操作序列更可靠。

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