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Mobile robot Navigation Based on Q-Learning Technique

机译:基于Q学习技术的移动机器人导航

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This paper shows how Q-learning approach can be used in a successful way to deal with the problem of mobile robot navigation. In real situations where a large number of obstacles are involved, normal Q-learning approach would encounter two major problems due to excessively large state space. First, learning the Q-values in tabular form may be infeasible because of the excessive amount of memory needed to store the table. Second, rewards in the state space may be so sparse that with random exploration they will only be discovered extremely slowly. In this paper, we propose a navigation approach for mobile robot, in which the prior knowledge is used within Q-learning. We address the issue of individual behavior design using fuzzy logic. The strategy of behaviors based navigation reduces the complexity of the navigation problem by dividing them in small actions easier for design and implementation. The Q-Learning algorithm is applied to coordinate between these behaviors, which make a great reduction in learning convergence times. Simulation and experimental results confirm the convergence to the desired results in terms of saved time and computational resources.
机译:本文展示了如何以成功的方式使用Q学习方法来处理移动机器人导航问题。在涉及大量障碍的实际情况中,正常的Q学习方法将遇到由于过大的状态空间导致的两个主​​要问题。首先,由于存储表所需的内存量过多,以表格形式的Q值可能是不可行的。其次,状态空间中的奖励可能如此稀疏,随机探索,它们只会被发现非常缓慢。在本文中,我们提出了一种移动机器人的导航方法,其中在Q-Learning中使用了现有知识。我们使用模糊逻辑解决个体行为设计问题。基于行为的策略通过将其划分为设计和实现的小型操作来降低导航问题的复杂性。 Q学习算法应用于这些行为之间的坐标,这使得学习收敛时间大大降低。仿真和实验结果证实了在节省时间和计算资源方面的所需结果的收敛性。

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