基于增量状态空间分割的真实机器人在较短学习时间内的合理性能

Yasutake Takahashi, M. Asada, K. Hosoda
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引用次数: 90

摘要

强化学习作为一种很少或没有先验知识,具有较高反应性和适应性行为能力的机器人学习方法,近年来受到越来越多的关注。然而,将其应用到实际机器人任务中存在两个主要问题:如何构建状态空间,以及如何缩短学习时间。本文提出了一种基于机器人经验的传感器空间增量分割方法,使机器人在更短的学习时间内学习到有目的的行为。增量分割是通过在状态空间中构建局部模型来实现的,该模型基于传感器输出的函数逼近来减少学习时间,并基于强化信号来产生有目的的行为。将该方法应用于一个足球机器人的射门实验,并进行了计算机仿真和真实机器人的实验。因此,我们的真实机器人通过增量分割状态空间,在不到一小时的训练时间内学会了射击行为。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Reasonable performance in less learning time by real robot based on incremental state space segmentation
Reinforcement learning has recently been receiving increased attention as a method for robot learning with little or no a priori knowledge and higher capability of reactive and adaptive behaviors. However, there are two major problems in applying it to real robot tasks: how to construct the state space, and how to reduce the learning time. This paper presents a method by which a robot learns purposive behavior within less learning time by incrementally segmenting the sensor space based on the experiences of the robot. The incremental segmentation is performed by constructing local models in the state space, which is based on the function approximation of the sensor outputs to reduce the learning time and on the reinforcement signal to emerge a purposive behavior. The method is applied to a soccer robot which tried to shoot a ball into a goal, The experiments with computer simulations and a real robot are shown. As a result, our real robot has learned a shooting behavior within less than one hour training by incrementally segmenting the state space.
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