Zhou Xuefeng, Xu Zhihao, Li Shuai
Guangdong Key Laboratory of Modern Control Technology, Guangdong Institute of Intelligence Manufacturing, Guangzhou, China.
School of Engineering, Swansea University, Swansea, United Kingdom.
Front Neurorobot. 2019 Jul 11;13:50. doi: 10.3389/fnbot.2019.00050. eCollection 2019.
Force control of manipulators could enhance compliance and execution capabilities, and has become a key issue in the field of robotic control. However, it is challenging for redundant manipulators, especially when there exist risks of collisions. In this paper, we propose a collision-free compliance control strategy based on recurrent neural networks. Inspired by impedance control, the position-force control task is rebuilt as a reference command of task-space velocities, by combing kinematic properties, the compliance controller is then described as an equality constraint in joint velocity level. As to collision avoidance strategy, both robot and obstacles are approximately described as two sets of key points, and the distances between those points are used to scale the feasible workspace. In order to save unnecessary energy consumption while reducing impact of possible collisions, the secondary task is chosen to minimize joint velocities. Then a RNN with provable convergence is established to solve the constraint-optimization problem in realtime. Numerical results validate the effectiveness of the proposed controller.
机器人的力控制可以增强柔顺性和执行能力,已成为机器人控制领域的关键问题。然而,对于冗余机器人来说具有挑战性,尤其是在存在碰撞风险的情况下。本文提出了一种基于递归神经网络的无碰撞柔顺控制策略。受阻抗控制的启发,将位置-力控制任务重构为任务空间速度的参考指令,结合运动学特性,将柔顺控制器描述为关节速度层面的等式约束。对于避碰策略,将机器人和障碍物近似描述为两组关键点,并利用这些点之间的距离来缩放可行工作空间。为了在减少可能碰撞影响的同时节省不必要的能量消耗,选择次要任务以最小化关节速度。然后建立一个具有可证明收敛性的递归神经网络来实时解决约束优化问题。数值结果验证了所提出控制器的有效性。