Adaptive Gravity Compensation Framework Based on Human Upper Limb Model for Assistive Robotic Arm Extender.

Sibo Yang, Lincong Luo, Muyao Liu, Jiaye Chen, Wei Chuan Law, Meng Yuan, Lei Li, Wei Tech Ang
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Abstract

The Assistive Robotic Arm Extender (ARAE) is an upper limb assistive and rehabilitation robot that belongs to the end-effector type, enabling it to assist patients with upper limb movement disorders in three-dimensional space. However, the problem of gravity compensation for the human upper limb with this type of robot is crucial, which directly affects the deployment of the robot in the assistive or rehabilitation field. This paper presents an adaptive gravity compensation framework that calculates the compensated force based on the estimated human posture in 3D space. First, we estimated the human arm joint angles in real-time without any wearable sensors, such as inertial measurement unit (IMU) or magnetic sensors, only through the kinematic data of the robot and established human model. The performance of the estimation method was evaluated through a motion capture system, which validated the accuracy of joint angle estimation. Second, the estimated human joint angles were input to the rigid link model to demonstrate the support force profile generated by the robot. The force profile showed that the support force provided by the developed ARAE robot could adaptively change with human arm postures in 3D space. The adaptive gravity compensation framework can improve the usability and feasibility of the 3D end-effector rehabilitation or assistive robot.

基于人体上肢模型的辅助机器人手臂伸展器自适应重力补偿框架。
辅助机器人手臂伸展器(ARAE)是一种上肢辅助和康复机器人,属于末端执行器类型,使其能够在三维空间中帮助上肢运动障碍患者。然而,这种类型的机器人对人类上肢的重力补偿问题至关重要,这直接影响到机器人在辅助或康复领域的部署。本文提出了一种自适应重力补偿框架,该框架基于三维空间中估计的人体姿态来计算补偿力。首先,我们只通过机器人的运动学数据和建立的人体模型,在没有任何可穿戴传感器(如惯性测量单元或磁传感器)的情况下实时估计人体手臂关节角度。通过运动捕捉系统对估计方法的性能进行了评估,验证了联合角度估计的准确性。其次,将估计的人体关节角度输入到刚性连杆模型中,以演示机器人产生的支撑力分布。受力曲线表明,所开发的ARAE机器人提供的支撑力可以在三维空间中随人体手臂姿势自适应地变化。自适应重力补偿框架可以提高3D末端执行器康复或辅助机器人的可用性和可行性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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