一种知道自身极限的自主机器人设计方法

Alvika Gautam, T. Whiting, X. Cao, M. Goodrich, J. Crandall
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引用次数: 8

摘要

虽然自主机器人的设计往往强调开发熟练的机器人,但自主机器人系统的另一个重要属性是它们能够评估自己的熟练程度和局限性。机器人应该能够评估它在尝试任务之前,期间和之后执行任务的能力。因此,我们考虑以下问题:我们如何设计知道自己极限的自主机器人?为此,本文提出了一种称为假设对准跟踪(AAT)的方法,用于设计能够有效评估自身极限的自主机器人。在AAT中,机器人将(a)其决策算法与环境和硬件系统相结合的程度与(b)其过去的经验相结合,以评估其成功完成给定任务的能力。在机器人导航任务中说明了AAT在评估机器人极限方面的有效性。
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A Method for Designing Autonomous Robots that Know Their Limits
While the design of autonomous robots often emphasizes developing proficient robots, another important attribute of autonomous robot systems is their ability to evaluate their own proficiency and limitations. A robot should be able to assess how well it can perform a task before, during, and after it attempts the task. Thus, we consider the following question: How can we design autonomous robots that know their own limits? Toward this end, this paper presents an approach, called assumption-alignment tracking (AAT), for designing autonomous robots that can effectively evaluate their own limits. In AAT, the robot combines (a) measures of how well its decision-making algorithms align with its environment and hardware systems with (b) its past experiences to assess its ability to succeed at a given task. The effectiveness of AAT in assessing a robot's limits are illustrated in a robot navigation task.
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