首页 /研究 /Autonomous control of real snake-like robot using reinforcement learning; Abstraction of state-action space using properties of real world
LEARNING

Autonomous control of real snake-like robot using reinforcement learning; Abstraction of state-action space using properties of real world

Kazuyuki Ito, Yoshitaka Fukumori, Akihiro Takayama

发表年份
2007
引用次数
16

摘要

In this paper we consider autonomous control of a real snake-like robot using reinforcement learning. We focus on curse of dimensionality and lack of generality, and point out that the causes of the problems are not in learning algorithm but in neglect of properties of the real world. To solve the problems we propose new framework in which body of robot abstract general meaning by using properties of the real world as information processor. We apply the proposed framework for controlling a snake-like robot and confirm that the two problems are solved simultaneously, without changing learning algorithm at all. To demonstrate the effectiveness of the proposed framework experiments has been carried out.

关键词

GeneralityReinforcement learningCurse of dimensionalityComputer scienceRobotArtificial intelligenceRobot learningAction (physics)AbstractionRobot control

相关论文

查看 LEARNING 分类全部论文