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Reconfigurable Behavior Trees: Towards an Executive Framework Meeting High-level Decision Making and Control Layer Features

机译:可重构的行为树:迈向高级决策和控制层特征的执行框架

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Behavior Trees (BTs) constitute a widespread artificial intelligence tool that has been successfully adopted in robotics. Their advantages include simplicity, modularity, and reusability of code. However, Behavior Trees remain a high-level decision making engine; control features cannot easily be integrated. This paper proposes Reconfigurable Behavior Trees (RBTs), an extension of the traditional BTs that incorporates sensed information coming from the robotic environment in the decision making process. We endow RBTs with continuous sensory data that permits the online monitoring of the task execution. The resulting stimulus-driven architecture is capable of dynamically handling changes in the executive context while keeping the execution time low. The proposed framework is evaluated on a set of robotic experiments. The results show that RBTs are a promising approach for robotic task representation, monitoring, and execution.
机译:行为树(BTS)构成了一个广泛的人工智能工具,该工具已在机器人中成功采用。它们的优点包括简单,模块化和代码的可重用性。然而,行为树仍然是一个高级决策引擎;控制功能不易集成。本文提出了可重构的行为树(RBT),传统BTS的扩展,其中包含来自决策过程中的机器人环境的感官信息。我们使用连续的感官数据赋予RBT,该数据允许在线监视任务执行。由此产生的刺激驱动的架构能够在保持执行时间低的同时动态处理执行上下文中的变化。所提出的框架在一组机器人实验上进行评估。结果表明,RBT是机器人任务表示,监视和执行的有希望的方法。

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