A model for operator endpoint stiffness prediction during physical human-robot interaction

Antonio Moualeu, J. Ueda
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引用次数: 3

Abstract

Physical contact established during interaction between a human operator and a haptic device creates a coupled system with stability and performance characteristics different than its individual subsystems taken in isolation. Proper incorporation of operator dynamics in physical human-robot interaction (pHRI) conditions requires knowledge of system variables and parameters, some of which are not directly measurable. Operator endpoint impedance, for instance, cannot be directly measured in typical haptic control conditions. Several endpoint impedance estimation techniques have been explored in previous literature, based on measured kinematics and/or other correlated metrics. Arm muscle activity, measured through surface electromyography (sEMG), has been used in previous literature to estimate endpoint stiffness, which is the static component of impedance. Co-activation (co-contraction) of antagonistic arm muscles forming a pair around a joint is known to be the driving factor in modulation of endpoint stiffness. However, previous work employing muscle co-contraction to predict endpoint stiffness has mainly been absent, due in part to the inefficacy of operator models to incorporate muscle co-activation into the prediction scheme. The current study proposes a method for prediction of operator endpoint stiffness based on measured co-contraction levels of a select group of muscles. The proposed methodology incorporates an upper extremity musculoskeletal model that accounts for muscle redundancy and the role of muscle co-contraction on arm stiffness modulation. The study hypothesizes that a free parameter, currently known in the literature to represent the nullspace of the mapping between muscle forces and joint torques, is a random variable of which probability density function can be estimated. Changes in this parameter directly affect changes in operator endpoint stiffness. Ten healthy subjects were asked to resist perturbations induced by a one degree of freedom (DOF) haptic paddle device while measurements, including muscle activities of four arm muscles, were being carried out. Direct derivation of stiffness values at the endpoint was compared to simulated endpoint stiffness values obtained using the proposed predictive methodology. Ten out of forty prediction trials resulted in a statistically significant correlation between predicted and actual stiffness values. Impressive stiffness prediction results, with over 99% peak accuracy in value, were found in only one trial using a combination of the proposed method along with a standard static optimization method for muscle force computation. Though the possibility of using a probabilistic approach to stiffness prediction was shown, robustness and generalizability of the proposed approach to multi-DOF systems remain to be addressed.
人机物理交互过程中算子端点刚度预测模型
在人类操作员和触觉设备之间的交互过程中建立的物理接触创建了一个耦合系统,其稳定性和性能特征不同于单独采取的各个子系统。在物理人机交互(pHRI)条件下,适当地结合操作员动力学需要了解系统变量和参数,其中一些变量和参数是不能直接测量的。例如,在典型的触觉控制条件下,不能直接测量操作员端点阻抗。在以前的文献中,基于测量的运动学和/或其他相关指标,已经探索了几种端点阻抗估计技术。通过表面肌电图(sEMG)测量的手臂肌肉活动,已在先前的文献中用于估计端点刚度,端点刚度是阻抗的静态成分。在关节周围形成一对拮抗臂肌肉的共激活(共收缩)是已知的端点刚度调节的驱动因素。然而,先前使用肌肉共收缩来预测端点刚度的工作主要是缺乏的,部分原因是将肌肉共激活纳入预测方案的算子模型无效。目前的研究提出了一种方法,预测操作员端点刚度基于测量的共同收缩水平的一组选定的肌肉。提出的方法结合了上肢肌肉骨骼模型,该模型考虑了肌肉冗余和肌肉共同收缩对手臂刚度调节的作用。本研究假设一个自由参数是一个随机变量,其概率密度函数可以估计,目前文献中已知的自由参数表示肌肉力与关节扭矩之间映射的零空间。该参数的变化直接影响算子端点刚度的变化。10名健康受试者被要求抵抗由一自由度(DOF)触觉桨装置引起的扰动,同时进行测量,包括四个手臂肌肉的肌肉活动。将直接推导的端点刚度值与使用所提出的预测方法获得的模拟端点刚度值进行了比较。40个预测试验中有10个在预测值和实际刚度值之间产生了统计上显著的相关性。将提出的方法与肌肉力计算的标准静态优化方法相结合,仅在一次试验中就发现了令人印象深刻的刚度预测结果,其峰值精度超过99%。虽然表明了使用概率方法进行刚度预测的可能性,但所提出的方法在多自由度系统中的鲁棒性和泛化性仍有待解决。
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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