Impedance characteristic of the human arm during passive movements

M. Rahman, R. Ikeura
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Abstract

This paper describes the impedance characteristics of the human arm during passive movement. The arm was moved in the desired trajectory. The motion was actuated by a 1-degree-of-freedom robot system. Trajectories used in the experiment were minimum jerk (the rate of change of acceleration) trajectories, which were found during a human and human cooperative task and optimum for muscle movement. As the muscle is mechanically analogous to a spring-damper system, a second-order equation was considered as the model for arm dynamics. In the model, inertia, stiffness, and damping factor were considered. The impedance parameters were estimated from the position and torque data obtained from the experiment and based on the “Estimation of Parametric Model”. It was found that the inertia is almost constant over the operational time. The damping factor and stiffness were high at the starting position and became near zero after 0.4 seconds.
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人体手臂被动运动时的阻抗特性
本文描述了人体手臂在被动运动过程中的阻抗特性。手臂按所需轨迹移动。该运动由一个1自由度机器人系统驱动。实验中使用的轨迹是最小急动(加速度变化率)轨迹,这是在人与人的合作任务中发现的,最适合肌肉运动。由于肌肉在机械上类似于弹簧-阻尼器系统,因此考虑将二阶方程作为手臂动力学模型。在该模型中,考虑了惯性、刚度和阻尼因子。阻抗参数是根据从实验中获得的位置和扭矩数据并基于“参数模型的估计”来估计的。研究发现,惯性在整个运行时间内几乎是恒定的。阻尼系数和刚度在起始位置较高,0.4秒后接近零。
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来源期刊
IAES International Journal of Artificial Intelligence
IAES International Journal of Artificial Intelligence Decision Sciences-Information Systems and Management
CiteScore
3.90
自引率
0.00%
发文量
170
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