Mobile robot navigation method based on improved Q-learning algorithm

Zhiyong Tan, Tao Wang, Yao Yu
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Abstract

In recent years, autonomous navigation of mobile robots has become one of the hot topics in research. An improved Q-learning method (IQL) combining action selection strategy and Q function update method is proposed. A new exploration strategy of staged $\varepsilon$ greedy exploration is used in IQL. In addition, the idea of backtracking is used to update the Q value to speed up the convergence speed. Experiments conducted in a grid environment show that compared with the classic algorithm, the algorithm converges faster and the program execution time is shorter.
基于改进q -学习算法的移动机器人导航方法
近年来,移动机器人的自主导航已成为研究的热点之一。提出了一种结合动作选择策略和Q函数更新方法的改进Q学习方法。在IQL中采用了分段式贪心勘探策略。此外,采用回溯的思想更新Q值,加快收敛速度。在网格环境下进行的实验表明,与经典算法相比,该算法收敛速度更快,程序执行时间更短。
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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