基于随机实值强化学习方法的AUV系统避碰控制器

H. Sayyaadi, T. Ura, T. Fujii
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引用次数: 11

摘要

基于强化学习的基本原理,结合水下航行器系统Twin Burger 2的运动特性,提出了一种避碰算法。大多数强化学习的研究都是针对离散动作空间的问题。然而,许多控制问题需要连续控制信号的应用。在本研究中,我们将提出一种随机实值强化学习算法,用于学习具有连续输出的函数。避障任务分为目标行为和避障行为。由于实施方法的复杂性,这里只提出了最近取得的针对性结果,并且正在进行研究以实现最终目标。
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Collision avoidance controller for AUV systems using stochastic real value reinforcement learning method
Based on the basic principles of the reinforcement learning and also motion characteristic of an AUV system, named Twin Burger 2, a collision avoidance algorithm is proposed here. Most of the researches in reinforcement learning have been done on the problems with discrete action spaces. However, many control problems require the application of continuous control signals. In this research we are going to present a stochastic real value reinforcement learning algorithm for learning functions with continuous outputs. Obstacle avoidance mission is divided into targeting and avoiding behavior. Because of the complexity of the implemented method, only targeting results, which are achieved most recently, are proposed here and research is under progress to achieve to the final goal.
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