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Intelligent systems based on reinforcement learning and fuzzy logic approaches, 'Application to mobile robotic'

机译:基于强化学习和模糊逻辑方法的智能系统,“应用于移动机器人”

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One of the standing challenging aspects in mobile robotics is the ability to navigate autonomously. It is a difficult task, which requiring a complete modeling of the environment and intelligent controllers. This paper presents an intelligent navigation method for an autonomous mobile robot which requires only a scalar signal likes a feedback indicating the quality of the applied action. Instead of programming a robot, we will let it only learn its own strategy. The Q-learning algorithm of reinforcement learning is used for the mobile robot navigation by discretizing states and actions spaces. In order to improve the mobile robot performances, an optimization of fuzzy controllers will be discussed for the robot navigation; based on prior knowledge introduced by a fuzzy inference system so that the initial behavior is acceptable. The effectiveness of this optimization method is verified by simulation.
机译:移动机器人技术中常面临的挑战之一是自主导航的能力。这是一项艰巨的任务,需要对环境和智能控制器进行完整的建模。本文提出了一种用于自主移动机器人的智能导航方法,该方法仅需要标量信号(例如指示所应用动作质量的反馈)即可。与其对机器人进行编程,不如让它只学习自己的策略。通过离散化状态和动作空间,强化学习的Q学习算法用于移动机器人导航。为了提高移动机器人的性能,将讨论机器人导航的模糊控制器的优化。基于模糊推理系统引入的先验知识,因此初始行为是可以接受的。仿真验证了该优化方法的有效性。

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