通过层次深度强化学习的自适应和可解释的导航技能部署

Kyowoon Lee, Seongun Kim, Jaesik Choi
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引用次数: 1

摘要

为了使机器人车辆在未知环境中稳健、安全地导航,确定最合适的导航策略至关重要。然而,大多数现有的基于深度强化学习的导航策略都是用手工设计的课程和奖励函数来训练的,很难在广泛的现实场景中部署。在本文中,我们提出了一个框架来学习一系列低级导航策略和部署它们的高级策略。主要思想是,我们不是学习一个具有固定奖励函数的单一导航策略,而是同时学习一系列具有广泛奖励函数的策略,这些策略表现出不同的行为。然后,我们训练自适应部署最合适导航技能的高级策略。我们在模拟和现实世界中评估了我们的方法,并证明了我们的方法可以学习各种导航技能并自适应地部署它们。我们还说明了我们提出的分层学习框架通过为自主代理的行为提供语义来呈现可解释性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Adaptive and Explainable Deployment of Navigation Skills via Hierarchical Deep Reinforcement Learning
For robotic vehicles to navigate robustly and safely in unseen environments, it is crucial to decide the most suitable navigation policy. However, most existing deep reinforcement learning based navigation policies are trained with a hand-engineered curriculum and reward function which are difficult to be deployed in a wide range of real-world scenarios. In this paper, we propose a framework to learn a family of low-level navigation policies and a high-level policy for deploying them. The main idea is that, instead of learning a single navigation policy with a fixed reward function, we simultaneously learn a family of policies that exhibit different behaviors with a wide range of reward functions. We then train the high-level policy which adaptively deploys the most suitable navigation skill. We evaluate our approach in simulation and the real world and demonstrate that our method can learn diverse navigation skills and adaptively deploy them. We also illustrate that our proposed hierarchical learning framework presents explainability by providing semantics for the behavior of an autonomous agent.
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