强化学习
移动机器人
运动规划
人工智能
机器人学
计算机科学
路径(计算)
机器人
数学优化
数学
程序设计语言
作者
Naziha Khlif,Nahla Khraief,Safya Belghith
出处
期刊:Robotica
[Cambridge University Press]
日期:2023-05-11
卷期号:41 (9): 2688-2702
被引量:2
标识
DOI:10.1017/s0263574723000607
摘要
Abstract Driven by the remarkable developments we have observed in recent years, path planning for mobile robots is a difficult part of robot navigation. Artificial intelligence applied to mobile robotics is also a distinct challenge; reinforcement learning (RL) is one of the most used algorithms in robotics. The exploration-exploitation dilemma is a motivating challenge for the performance of RL algorithms. The problem is balancing exploitation and exploration, as too much exploration leads to a decrease in cumulative reward, while too much exploitation locks the agent in a local optimum. This paper proposes a new path planning method for mobile robot based on Q-learning with an improved exploration strategy. In addition, a comparative study of Boltzmann distribution and $\epsilon$ -greedy politics is presented. Through simulations, the better performance of the proposed method in terms of execution time, path length, and cost function is confirmed.
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