Reinforcement learning for path planning of free-floating space robotic manipulator with collision avoidance and observation noise

Ahmad Al Ali, Zheng H. Zhu
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Abstract

This study introduces a novel approach for the path planning of a 6-degree-of-freedom free-floating space robotic manipulator, focusing on collision and obstacle avoidance through reinforcement learning. It addresses the challenges of dynamic coupling between the spacecraft and the robotic manipulator, which significantly affects control and precision in the space environment. An innovative reward function is introduced in the reinforcement learning framework to ensure accurate alignment of the manipulator’s end effector with its target, despite disturbances from the spacecraft and the need for obstacle and collision avoidance. A key feature of this study is the use of quaternions for orientation representation to avoid the singularities associated with conventional Euler angles and enhance the training process’ efficiency. Furthermore, the reward function incorporates joint velocity constraints to refine the path planning for the manipulator joints, enabling efficient obstacle and collision avoidance. Another key feature of this study is the inclusion of observation noise in the training process to enhance the robustness of the agent. Results demonstrate that the proposed reward function enables effective exploration of the action space, leading to high precision in achieving the desired objectives. The study provides a solid theoretical foundation for the application of reinforcement learning in complex free-floating space robotic operations and offers insights for future space missions.
自由漂浮太空机器人机械手路径规划的强化学习(带碰撞规避和观测噪声
本研究针对六自由度自由浮动空间机器人机械手的路径规划介绍了一种新方法,重点是通过强化学习避免碰撞和障碍。它解决了航天器和机器人操纵器之间动态耦合的难题,因为这种耦合会严重影响太空环境中的控制和精度。在强化学习框架中引入了一个创新的奖励函数,以确保机械手的末端效应器与目标精确对准,尽管有来自航天器的干扰,并需要避免障碍和碰撞。这项研究的一个主要特点是使用四元数来表示方向,以避免与传统欧拉角相关的奇异性,并提高训练过程的效率。此外,奖励函数结合了关节速度约束,以完善机械手关节的路径规划,从而实现有效的避障和防撞。本研究的另一个主要特点是在训练过程中加入了观测噪声,以增强代理的鲁棒性。结果表明,所提出的奖励函数能够有效地探索行动空间,从而高精度地实现预期目标。这项研究为强化学习在复杂的自由漂浮太空机器人操作中的应用提供了坚实的理论基础,并为未来的太空任务提供了启示。
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