Navigation of inertial forces driven mini-robots using reinforcement learning

Piyabhum Chaysri, K. Blekas, K. Vlachos
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引用次数: 1

Abstract

In this paper we propose a reinforcement learning (RL) framework for the autonomous navigation of a pair of mini-robots that are driven by inertial forces. The inertial forces are provided by two vibration motors on each mini-robot which are controlled by a simple and efficient low-level speed controller. The action of the RL agent is the direction of the velocity of each mini-robot, and it based on the position of each mini-robot, the distance between the mini-robots, and the sign of the distance gradient. Each mini-robot is considered as a moving obstacle to the other that must by avoided. We have introduced a suitable reward function that results into an efficient collaborative RL approach. A simulation environment is created using the ROS framework, that include the dynamic model of the mini-robot and of the vibration motors. Several application scenarios are simulated, and the presented results demonstrate the performance of the proposed framework.
使用强化学习的惯性力驱动微型机器人导航
在本文中,我们提出了一个强化学习(RL)框架,用于一对由惯性力驱动的微型机器人的自主导航。惯性力由每个微型机器人上的两个振动电机提供,由一个简单高效的低速控制器控制。RL agent的动作是每个微型机器人的速度方向,它基于每个微型机器人的位置,微型机器人之间的距离,以及距离梯度的符号。每个微型机器人都被认为是移动的障碍物,必须避开。我们引入了一个合适的奖励函数,从而形成一个有效的协作强化学习方法。利用ROS框架建立了仿真环境,包括微型机器人的动力学模型和振动电机的动力学模型。对多个应用场景进行了仿真,结果验证了该框架的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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