Door opening by joining reinforcement learning and intelligent control

B. Nemec, L. Žlajpah, A. Ude
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引用次数: 24

Abstract

In this paper we address a problem of how to open the doors with an articulated robot. We propose a novel algorithm, that combines widely used reinforcement learning approach with intelligent control algorithms. In order to speed up learning, we formed more structured search, which exploits physical constraints of the problem to be solved. The underlying controller, which acts as a policy search agent, generates movements along the admissible directions defined by physical constraints of the task. This way we can efficiently solve many practical problems such as door opening without almost any previous knowledge of the environment. The approach was verified in simulation as well as with real robot experiment.
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通过结合强化学习和智能控制开门
在本文中,我们解决了如何用铰接式机器人打开门的问题。我们提出了一种新的算法,将广泛使用的强化学习方法与智能控制算法相结合。为了加快学习速度,我们形成了更加结构化的搜索,利用待解决问题的物理约束。底层控制器作为策略搜索代理,沿着由任务的物理约束定义的允许方向生成运动。通过这种方式,我们可以有效地解决许多实际问题,比如开门,而无需事先了解环境。仿真和真实机器人实验验证了该方法的有效性。
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