基于HER-DDPG算法的7自由度手术机器人动态轨迹规划

Qitao Hou, Chenchen Gu, Xiaoyu Wang, Yating Zhang, Ping Zhao
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摘要

传统的轨迹规划方法目前缺乏智能和自主性。我们以外科手术机器人避障规划为实践背景,采用强化学习方法解决机器人手臂的自主轨迹规划问题,以避免匀速运动的障碍物并快速到达目标点。我们采用了基于强化学习的经验回放机制与off-policy DDPG相结合的算法,经过多次迭代,机器人自主完成了避障轨迹规划。基于Open-AI开源项目基线的简单轨迹规划示例,结合研究背景,加入移动障碍物,大致模拟手术机械臂在手术室中移动医务人员或移动器械的自主避障。基于HER算法的每次迭代都使用稀疏奖励,使每次尝试都能获得经验。HER-DDPG方法可以在仿真环境下快速完成手术机器人的轨迹规划,这对于手术机器人在现实世界中的自主定位至关重要。此外,经验回放系统已经过测试,允许充分利用稀疏奖励和处理并行任务同样好。
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Dynamic Trajectory Planning of a 7-DOF Surgical Robot Based on HER-DDPG Algorithm
Traditional trajectory planning approaches are currently lacking in intelligence and autonomy. We used the reinforcement learning approach to solve the autonomous trajectory planning of the robot arm to avoid obstacles with uniform motion and hit the target point quickly with obstacle avoidance planning for surgical robots taken as the practical background. We used the algorithm of experience playback mechanism combined with off-policy DDPG based on reinforcement learning, and after several iterations, the robot completed trajectory planning with obstacle avoidance autonomously. Moving obstacles were added to roughly simulate the autonomous obstacle avoidance of a surgical robotic arm with moving medical personnel or mobile instruments in the operating room, based on the simple trajectory planning example of Open-AI Open-Source Project Baseline, combined with the research context. Sparse rewards were used for each iteration based on the HER algorithm, so that each attempt could gain experience. The HER-DDPG method can quickly complete the manipulator’s trajectory planning in a simulation environment, which is critical for the surgical robot’s autonomous positioning in the real world. Furthermore, the experience playback system has been tested to allow full use of sparse rewards and handle parallel tasks equally well.
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