学习经验重用下船舶自主避碰的高效强化学习

Chengbo Wang, Xinyu Zhang, Hongbo Gao, Huiping Su, Kangjie Zheng, Weisong Wang
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引用次数: 1

摘要

针对自主船舶在多障碍环境下的局部安全航行问题,提出了一种学习经验重用-强化学习避碰(LER-RLCA)方法,该方法能够综合出采样效率高、船性好的近最优避碰策略。基于广义强化学习(RL),利用学习经验重用,挖掘历史训练数据的隐藏特征。同时,设计了一种结合外部收益信号和内部激励信号的奖励函数,以激励低状态转移概率的搜索环境。我们进一步将LER-RLCA算法应用于船舶自主避碰仿真。结果表明,提出的LER-RLCA算法可以很好地实现自主船舶的无碰撞安全航行,避免陷入局部迭代,大大提高了算法的收敛速度,提高了在线避碰决策的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Efficient Reinforcement Learning for Autonomous Ship Collision Avoidance under Learning Experience Reuse
In this paper, a learning experience reuse - reinforcement learning collision avoidance (LER-RLCA) method is proposed, which can synthesize near-optimal collision avoidance policy with efficient sampling and good seamanship, to solve the local safety sailing of autonomous ship in a multi-obstacle environment. Lying on the general reinforcement learning (RL), using learning experience reuse, the hidden features of historical training data were mined. Meanwhile, a new reward function combining external revenue signal with internal incentive signal was designed to encourage search the environment with a low probability of state transition. We further applied LER-RLCA algorithm to the simulation of autonomous ship collision avoidance. The results show that the proposed LER-RLCA algorithm can well realize the collision-free and safe navigation of autonomous ships, to avoid falling into local iteration, greatly improve the convergence speed of the algorithm, and improve the performance of online collision avoidance decision-making.
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