Intelligent Control Navigation Emerging on Multiple Mobile Robots Applying Social Wound Treatment

Hiram Ponce, Paulo Vitor de Campos Souza
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引用次数: 2

Abstract

In robotics, learning new tasks is a complex solving problem. This learning depends on the environment, the robot configuration, the difficulty of the problem task, even the prior knowledge. Reinforcement learning has been widely employed for learning from scratch and policy search; however, it is very time-consuming. Multi-robots, as collaborative learners, have been proposed to improve the speed of learning in robotics. In this paper, we propose a collaborative intelligent control navigation strategy in robots, including a social wound treatment approach, such that robots can jointly learn how to avoid obstacles and move freely around the environment. This collective learning about social treatment aims to detect unexpected or inefficient behaviors of the robots, allowing them to redirect the right tasks with more agility, as observed in some animals. Experimental results over a multiple homogeneous robot system simulation validated our proposal.
应用于社会创伤治疗的多移动机器人智能控制导航
在机器人技术中,学习新任务是一个复杂的解决问题。这种学习取决于环境、机器人配置、问题任务的难度,甚至是先验知识。强化学习被广泛应用于从零开始学习和策略搜索;然而,这是非常耗时的。多机器人作为协作学习者,被提出用于提高机器人学习的速度。在本文中,我们提出了一种机器人协同智能控制导航策略,包括一种社会伤口治疗方法,使机器人能够共同学习如何避开障碍物并在环境中自由移动。这种关于社会待遇的集体学习旨在检测机器人的意外或低效行为,使它们能够更灵活地重新定向正确的任务,就像在一些动物身上观察到的那样。在多个同构机器人系统上的仿真实验结果验证了我们的建议。
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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