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Task-Switching for Self-Sufficient Robots.

机译:自给自足的机器人的任务切换。

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摘要

Task-switching enables a system to make its own decisions about which task to perform. It is therefore a key ability for any truly autonomous system. Common task-switching methods range from computationally expensive planning methods to often suboptimal, minimalistic, heuristics. This thesis takes a bio-inspired approach, motivated by the fact that animals successfully make task-switching decisions on a daily basis. The field of behavioural ecology provides a vast literature on animal task-switching. Generally these works are descriptive models of animal behaviour, either modelling to fit the data from observed animal behaviour, or theoretically optimal models of how animals ought to behave. But what is needed in robotics are methods that generate behaviour based on the information available (due to sensing) to the robot. Furthermore these methods have to take the physical limitations (velocity, acceleration, storage capacity etc.) of the robot into account. This thesis takes inspiration from descriptive behavioural ecology models and proposes a situated and embodied task-switching method suitable for mobile robots. To evaluate the quality of the decisions an objective function is needed. Reproductive success is commonly used in Biology, here economical success is used. We illustrate the applicability of the proposed methods on Toda's Fungus Eater robot. The decisions this robot faces are (1) when to work and when to refuel and (2) where to work or refuel respectively. Both decision types are essential to any autonomous, mobile robot. The proposed task-switching methods are based on Optimal Foraging Theory, in particular on rate-maximization and the Marginal-Value Theorem.
机译:任务切换使系统可以自行决定要执行的任务。因此,对于任何真正的自治系统而言,这都是一项关键能力。常见的任务切换方法范围从计算量大的计划方法到通常次优,极简的启发式方法。由于动物每天成功地做出任务转换决策,因此本文采用了一种生物启发的方法。行为生态学领域提供了大量有关动物任务转换的文献。通常,这些作品是动物行为的描述性模型,可以进行建模以适应来自观察到的动物行为的数据,或者可以是理论上动物行为方式的最佳模型。但是,机器人技术需要的是一种基于可用于机器人的信息(由于感应)来生成行为的方法。此外,这些方法必须考虑机器人的物理限制(速度,加速度,存储容量等)。本文从描述性行为生态模型中汲取了灵感,提出了一种适用于移动机器人的局限和具体化的任务切换方法。为了评估决策的质量,需要一个目标函数。生殖成功通常用于生物学中,此处使用经济成功。我们说明了所提出的方法在Toda的Funeat Eater机器人上的适用性。该机器人面临的决定分别是(1)何时工作和何时加油以及(2)在哪里工作或加油。两种决策类型对于任何自主的移动机器人都是必不可少的。所提出的任务转换方法是基于最佳觅食理论,尤其是基于速率最大化和边际价值定理。

著录项

  • 作者

    Wawerla, Jens.;

  • 作者单位

    Simon Fraser University (Canada).;

  • 授予单位 Simon Fraser University (Canada).;
  • 学科 Engineering Robotics.;Psychology Behavioral Sciences.
  • 学位 Ph.D.
  • 年度 2010
  • 页码 155 p.
  • 总页数 155
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 能源与动力工程;
  • 关键词

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