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Artist: a behavioral agent architecture with learning capability for robot navigation control

机译:艺术家:一种行为代理体系结构,具有机器人导航控制的学习能力

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The objective of this paper is to develop an autonomous multi-agent system, called artist, which is based on behavior control architecture and is capable of doing reinforcement learning adaptation to environmental changes. Artist uses ART-based AHC, a reinforcement learning architecture, as its inner architecture of a behavior and a coordinator. Based on this architecture, it has advantages of systematic design, learning capability, adaption, homogeneous architecture, etc. We have developed three primitive motion control agents (behaviors), and two coordinator agents (coordinators). They are also implemented both in simulations and in physical experiments.
机译:本文的目的是开发一种名为艺术家的自主多助手系统,该系统是基于行为控制架构,并且能够进行强化学习适应环境变化。艺术家使用艺术品的AHC,加强学习架构,作为其行为和协调员的内在架构。基于该架构,它具有系统设计,学习能力,适应性,均质等的优势。我们开发了三种原始运动控制代理(行为)和两个协调器代理(协调员)。它们也在模拟和物理实验中实施。

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