基于层次强化学习的动态非结构化环境下无人机自主导航

Kai-chang Kou, Gang Yang, Wenqi Zhang, Chenyi Wang, Yuan Yao, Xingshe Zhou
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引用次数: 0

摘要

无人飞行器的自主导航是自动控制领域最基本但尚未完全解决的问题之一。针对无人机自主导航问题,提出了一种基于选项的分层强化学习方法。具体而言,该方法由一个高级模型和两个低级模型组成,其中高级行为选择模型自动学习稳定可靠的行为选择策略,低级避障模型和目标驱动控制模型分别实现避障和目标逼近两种行为策略,从而避免了对人工设计的控制规则的依赖。此外,该模型在大型公共数据集上进行了预训练,使模型能够在各种复杂的非结构化飞行环境中快速收敛。大量实验表明,所提方法在各种评价指标上均具有整体优势,表明所提方法在无人机自主导航任务中具有较强的泛化能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Autonomous Navigation of UAV in Dynamic Unstructured Environments via Hierarchical Reinforcement Learning
Autonomous navigation of unmanned aerial vehicle (UAV) is one of the fundamental yet completely solved problems in automatic control. In this paper, an option-based hierarchical reinforcement learning approach is proposed for UAV autonomous navigation. Specifically, the proposed method consists of a high-level and two low-level model, where the high level behavior selection model learns a stable and reliable behavior selection strategy automatically, while the low-level obstacle avoidance model and target-driven control model implement two behavior strategies, obstacle avoidance and target approach, respectively, thus avoiding the dependence on manually designed control rules. Furthermore, the proposed model is pre-trained on large public dataset, allowing the model to converge quickly in various complex unstructured flight environments. Extensive experiments show that the proposed method indicates an overall advantage in various evaluation metrics, which indicating that the proposed method has a strong generalization capability in autonomous navigation task of UAV.
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