基于深度强化学习和路径规划的无地图导航方法

Jinzhou Wang, Ran Huang
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引用次数: 0

摘要

移动机器人在人类不熟悉的环境中导航的能力对其在实际活动中的适用性是决定性的。考虑到这一观点,我们提出了一个新的导航框架,在环境是先验未知的情况下,机器人只能部分地观察到机载传感器。提出的分层导航解决方案结合了基于深度强化学习的感知和基于模型的控制。具体而言,基于软行为者-批评家(SAC)算法和长短期记忆(LSTM)的深度强化学习(DRL)网络被训练成将机器人的状态、二维激光雷达输入和目标位置映射到一系列在避碰意义上最优的局部路径点。然后利用基于动态窗口方法(DWA)的规划器生成平滑且动态可行的轨迹,并使用反馈控制进行跟踪。在实际轮式机器人上进行的实验表明,与单纯基于学习的方法相比,该方法能够使机器人在非结构化环境中更可靠、更有效地到达目标位置。
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A Mapless Navigation Method Based on Deep Reinforcement Learning and Path Planning
The ability of mobile robots to navigate in an unfamiliar environment in human terms is decisive for their applicability to practical activities. Bearing this view in mind, we propose a novel framework for navigation in settings where the environment is a priori unknown and can only be partially observed by the robot with onboard sensors. The proposed hierarchical navigation solution combines deep reinforcement learning-based perception with model-based control. Specifically, a deep reinforcement learning (DRL) network based on Soft Actor-Critic (SAC) algorithm and Long Short-Term Memory (LSTM) is trained to map the robot's states, 2D lidar inputs and goal position to a series of local waypoints which are optimal in the sense of collision avoidance. The waypoints are then employed by a dynamic window approach (DWA) based planner to generate a smooth and dynamically feasible trajectory that is tracked by using feedback control. The experiments performed on an actual wheeled robot demonstrate that the proposed scheme enables the robot to reach goal locations more reliably and efficiently in unstructured environments in comparison with purely learning based approach.
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