An extended navigation framework for autonomous mobile robot in dynamic environments using reinforcement learning algorithm

N. Dinh, Nguyen Hong Viet, L. A. Nguyen, Hong Toan Dinh, Nguyen Tran Hiep, Pham Trung Dung, T. Ngo, Xuan-Tung Truong
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引用次数: 2

Abstract

In this paper, we propose an extended navigation framework for autonomous mobile robots in dynamic environments using a reinforcement learning algorithm. The main idea of the proposed algorithm is to provide the mobile robots the relative position and motion of the surrounding objects to the robots, and the safety constraints such as minimum distance from the robots to the obstacles, and a learning model. We then distribute the mobile robots into a dynamic environment. The mobile robots will automatically learn to adapt to the environment by their own experienced through the trial-and-error interaction with the surrounding environment. When the learning phase is completed, the mobile robots equipped with our proposed framework are able to navigate autonomously and safely in the dynamic environment. The simulation results in a simulated environment shows that, our proposed navigation framework is capable of driving the mobile robots to avoid dynamic obstacles and catch up dynamic targets, providing the safety for the surrounding objects and the mobile robots.
基于强化学习算法的动态环境下自主移动机器人导航扩展框架
在本文中,我们使用强化学习算法为动态环境中的自主移动机器人提出了一个扩展的导航框架。该算法的主要思想是为移动机器人提供周围物体的相对位置和运动,以及机器人到障碍物的最小距离等安全约束,并提供学习模型。然后我们将移动机器人分配到一个动态环境中。移动机器人将通过与周围环境的试错互动,通过自身的经验自动学习适应环境。当学习阶段完成后,配备我们提出的框架的移动机器人能够在动态环境中自主安全地导航。仿真环境下的仿真结果表明,我们提出的导航框架能够驱动移动机器人避开动态障碍物,追赶动态目标,为周围物体和移动机器人提供安全保障。
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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