基于q -学习的局部路径规划方法

Bin Tan, Yinyin Peng, Jiugen Lin
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引用次数: 3

摘要

Q-learning属于强化学习和人工智能学习算法。强化学习不需要外部指导;它通过自己的传感器与外部环境相互作用。它通过持续学习将外部输入环境的状态映射到输出动作上,并使该动作对应的奖励值达到最大值。为了使潜水器具有独立适应环境的能力,它可以通过自己的学习自动调整路径。本文提出在强化学习中引入q -学习机制来完成未知环境下模糊规则策略的调整。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Local Path Planning Method Based on Q-Learning
Q-learning belongs to reinforcement learning and artificial intelligence learning algorithm. Reinforcement learning does not need external guidance; it interacts with the external environment through its own sensors. It maps the state of the external input environment to output action through continuous learning, and makes the corresponding reward value of this action the maxi-mum. In order to make the submersible have the ability to adapt to the environment independently, it can adjust the path automatically through its own learning. This paper proposes to introduce Q-learning mechanism in reinforcement learning to complete the adjustment of fuzzy rule strategy in un-known environment.
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