Zhu Mingzhu, Dai Junyue, Feng Yu
School of Astronautics, Northwestern Polytechnical University, Xi'an, China.
Information Engineering College, Zhejiang University of Technology, Hangzhou, China.
Soft Robot. 2024 Feb;11(1):95-104. doi: 10.1089/soro.2022.0246. Epub 2023 Jul 21.
Industrial robots are widely deployed to perform pick-and-place tasks at high speeds to minimize manufacturing time and boost productivity. When dealing with delicate or fragile goods, soft robotic grippers are better end effectors than rigid grippers due to their softness and safe interaction. However, high-speed motion causes the soft robotic gripper to vibrate, leading to damage of the objects or failed grasping. Soft grippers with variable stiffness are considered to be effective in suppressing vibrations by adding damping devices, but it is quite challenging to compromise between stiffness and compliance. In this article, a controller based on deep reinforcement learning is proposed to control the stiffness of the soft robotic gripper, which can accurately suppress the vibration with only a minor influence on its compliance and softness. The proposed controller is a real-time vibration control strategy, which estimates the output of the controller based on the current operating environment. To demonstrate the effectiveness of the proposed controller, experiments were done with a UR5 robotic arm. For different situations, experimental results show that the proposed controller responds quickly and reduces the amplitude of the oscillation substantially.
工业机器人被广泛应用于高速执行抓取和放置任务,以最大限度地减少制造时间并提高生产率。在处理易碎或脆弱物品时,由于其柔软性和安全交互性,软机器人抓手比刚性抓手更适合作为末端执行器。然而,高速运动会导致软机器人抓手振动,从而导致物体损坏或抓取失败。具有可变刚度的软抓手被认为通过添加阻尼装置来有效抑制振动,但在刚度和柔顺性之间取得平衡颇具挑战性。在本文中,提出了一种基于深度强化学习的控制器来控制软机器人抓手的刚度,该控制器可以在对其柔顺性和柔软性影响较小的情况下准确抑制振动。所提出的控制器是一种实时振动控制策略,它根据当前的操作环境估计控制器的输出。为了证明所提出控制器的有效性,使用UR5机器人手臂进行了实验。对于不同的情况,实验结果表明所提出的控制器响应迅速,并大幅降低了振荡幅度。