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首页> 外文期刊>Journal of Intelligent & Robotic Systems >A Human-Robot Collaborative Reinforcement Learning Algorithm
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A Human-Robot Collaborative Reinforcement Learning Algorithm

机译:人机协作强化学习算法

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This paper presents a new reinforcement learning algorithm that enables collaborative learning between a robot and a human. The algorithm which is based on the Q(λ) approach expedites the learning process by taking advantage of human intelligence and expertise. The algorithm denoted as CQ(λ) provides the robot with self awareness to adaptively switch its collaboration level from autonomous (self performing, the robot decides which actions to take, according to its learning function) to semi-autonomous (a human advisor guides the robot and the robot combines this knowledge into its learning function). This awareness is represented by a self test of its learning performance. The approach of variable autonomy is demonstrated and evaluated using a fixed-arm robot for finding the optimal shaking policy to empty the contents of a plastic bag. A comparison between the CQ(λ) and the traditional Q(λ)-reinforcement learning algorithm, resulted in faster convergence for the CQ(λ) collaborative reinforcement learning algorithm.
机译:本文提出了一种新的强化学习算法,该算法可实现机器人与人类之间的协作学习。基于Q(λ)方法的算法通过利用人类的智力和专业知识来加快学习过程。表示为CQ(λ)的算法为机器人提供了自我意识,以自适应地将其协作级别从自主(自我执行,机器人根据其学习功能决定要采取的动作)切换为半自主(人类顾问指导机器人和机器人将这些知识整合到其学习功能中)。这种意识是通过对其学习表现的自我测试来表示的。使用固定臂机器人演示并评估了可变自主权的方法,该机器人用于寻找最佳的摇动策略以清空塑料袋中的物品。将CQ(λ)与传统的Q(λ)强化学习算法进行比较,可以更快地收敛CQ(λ)协同强化学习算法。

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