基于分层规划和强化学习的多车道巡航

K. Rezaee, P. Yadmellat, M. Nosrati, E. Abolfathi, Mohammed Elmahgiubi, Jun Luo
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引用次数: 8

摘要

合格的多车道巡航需要使用变道和车道内机动来获得良好的速度和保持安全。本文提出了一种将分层强化学习框架与一种新的状态-动作空间抽象相结合的自主多车道巡航设计方法。虽然所提出的解决方案遵循经典的行为决策、运动规划和控制层次结构,但它在运动规划器中引入了一个关键的中间抽象,以根据高级行为决策离散状态-动作空间。我们认为,与使用单一行为克隆或大量手写规则相比,这种设计允许原则上的模块化运动规划扩展。此外,我们证明了我们的状态-动作空间抽象允许在没有再训练的情况下将训练好的模型从几乎没有动态的模拟环境转移到具有更真实动态的模拟环境。总之,这些结果表明,我们提出的分层架构是一种很有前途的方法,可以将强化学习应用于现实世界中复杂的多车道巡航。
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Multi-lane Cruising Using Hierarchical Planning and Reinforcement Learning
Competent multi-lane cruising requires using lane changes and within-lane maneuvers to achieve good speed and maintain safety. This paper proposes a design for autonomous multi-lane cruising by combining a hierarchical reinforcement learning framework with a novel state-action space abstraction. While the proposed solution follows the classical hierarchy of behavior decision, motion planning and control, it introduces a key intermediate abstraction within the motion planner to discretize the state-action space according to high level behavioral decisions. We argue that this design allows principled modular extension of motion planning, in contrast to using either monolithic behavior cloning or a large set of handwritten rules. Moreover, we demonstrate that our state-action space abstraction allows transferring of the trained models without retraining from a simulated environment with virtually no dynamics to one with significantly more realistic dynamics. Together, these results suggest that our proposed hierarchical architecture is a promising way to allow reinforcement learning to be applied to complex multi-lane cruising in the real world.
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