Mechanical Impedance Control of Cooperative Robot During Object Manipulation Based on External Force Estimation Using Recurrent Neural Network

Misaki Hanafusa, J. Ishikawa
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引用次数: 6

Abstract

This paper proposes a compliant motion control for human-cooperative robots to absorb collision force when persons accidentally touch the robots even while the robot is manipulating an object. In the proposed method, an external force estimator, which can distinguish the net external force from the object manipulation force, is realized using an inverse dynamics model acquired by a recurrent neural network (RNN). By implementing a mechanical impedance control to the estimated external force, the robot can quickly and precisely carry the object keeping the mechanical impedance control functioned and can generate a compliant motion to the net external force only when the person touches it during manipulation. Since the proposed method estimates the external force from the generalized force based on the learned inverse dynamics, it is not necessary to install any sensors on the manipulated object to measure the external force. This allows the robot to detect the collision even when the person touches anywhere on the manipulated object. The RNN inverse dynamics model is evaluated by the leave-one-out cross-validation and it was found that it works well for unknown trajectories excluded from the learning process. Although the details were omitted due to the limitation of the page length, similar to the simulations, the RNN inverse dynamics model was evaluated using unknown trajectories in the six degree-of-freedom experiments, and it has been verified that it functions properly even for the unknown trajectories. Finally, the validity of the proposed method has been confirmed by experiments in which a person touches a robot while it is manipulating an object with six degrees of freedom.
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基于递归神经网络外力估计的协同机器人物体操作过程机械阻抗控制
提出了一种适用于人机协作机器人的柔顺运动控制方法,以吸收机器人在操作物体时因人的意外接触而产生的碰撞力。在该方法中,利用递归神经网络(RNN)获取的逆动力学模型实现了一个能够区分净外力和物体操纵力的外力估计器。通过对预估的外力进行机械阻抗控制,机器人能够在保持机械阻抗控制功能的情况下快速准确地搬运物体,并且在操作过程中,只有当人接触到物体时,机器人才能对净外力产生柔顺运动。由于该方法基于学习到的逆动力学从广义力中估计外力,因此不需要在被操纵物体上安装任何传感器来测量外力。这使得机器人即使在人接触被操纵物体的任何地方也能检测到碰撞。通过留一交叉验证对RNN逆动力学模型进行了评估,发现它对学习过程中排除的未知轨迹效果良好。虽然由于篇幅的限制,细节部分被省略,但与仿真相似,在6个自由度实验中使用未知轨迹对RNN逆动力学模型进行了评估,并验证了该模型即使在未知轨迹下也能正常工作。最后,通过实验验证了该方法的有效性。实验中,人在机器人操纵六自由度物体时触摸机器人。
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