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Reinforcement learning based group navigation approach for multiple autonomous robotic system

机译:基于增强学习的多自治机器人系统群导航方法

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In several complex applications, the use of multiple autonomous robotic systems (ARS) becomes necessary to achieve different tasks such as foraging and transport of heavy and large objects with less cost and more efficiency. They have to achieve a high level of flexibility, adaptability and efficiency in real environments. In this paper, a reinforcement learning (RL) based group navigation approach for multiple ARS is suggested. Indeed, the robots must have the ability to form geometric figures and navigate without collisions while maintaining the formation. Thus, each robot must learn how to take its place in the formation and avoid obstacles and other ARS from its interaction with the environment. This approach must provide ARS with capability to acquire the group navigation approach among several ARS from elementary behaviors by learning with trial and error search. Then, simulation results display the ability of the suggested approach to provide ARS with capability to navigate in a group formation in dynamic environments.
机译:在一些复杂的应用程序中,必须使用多个自主机器人系统(ARS)才能以较低的成本和更高的效率完成诸如重型和大型物体的觅食和运输之类的不同任务。他们必须在实际环境中实现高度的灵活性,适应性和效率。在本文中,提出了一种基于增强学习(RL)的多ARS组导航方法。的确,机器人必须具有形成几何图形的能力,并能在保持形态的同时不发生碰撞地导航。因此,每个机器人都必须学习如何在地层中占据一席之地,并避免障碍物和其他ARS与环境的相互作用。这种方法必须为ARS提供通过尝试和错误搜索学习从基本行为中获取几种ARS中的组导航方法的能力。然后,仿真结果显示了所建议的方法为ARS提供在动态环境中以小组形式进行导航的能力。

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