Assistive Upper-Limb Control using a Novel Measure of Human Muscular Manipulability based on Force Envelopes

Rafael J. Escarabajal, Elena París, T. Petrič, Ángel Valera, Vicente Mata, Jan Babič
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Abstract

This paper presents a novel approach to measuring upper limb muscular manipulability considering human biomechanics. We address the limitations of classical manipulability measures in robotics when applied to the human body. Our method introduces the concept of a force envelope to estimate the capability of the human arm to exert forces in different directions, considering the contributions of the muscles. To achieve this, we employed a biomechanical model based on Hill’s muscle model, calibrated using both geometric (segmental lengths) and strength-based (muscle activation) approaches to adapt to individual users. Furthermore, we designed a control algorithm that enables a robotic device to assist the user in unfavorable directions, guided by the manipulability measure. By providing a more isotropic response, the robotic device compensates for low manipulability in certain regions of the workspace. We conducted experiments using a haptic robot in admittance mode along the sagittal plane, where a viscous environment acted as a load to hinder human movement throughout the workspace. Our results demonstrate the effectiveness of the proposed method in reducing human effort by assisting in less manipulable directions while leaving high manipulability directions unassisted. Additionally, we successfully verified the superiority in performance of our novel approach against existing methods.
利用基于力包络的人体肌肉可操控性新测量方法进行辅助上肢控制
考虑到人体生物力学,本文提出了一种测量上肢肌肉可操控性的新方法。我们解决了机器人技术中经典可操控性测量方法在应用于人体时的局限性。我们的方法引入了力包络的概念,以估算人体手臂在不同方向上的施力能力,同时考虑到肌肉的贡献。为此,我们采用了基于希尔肌肉模型的生物力学模型,通过几何(节段长度)和基于力量(肌肉激活)的方法进行校准,以适应个体用户。此外,我们还设计了一种控制算法,使机器人设备能够在可操控性指标的指导下,在不利方向上为用户提供帮助。通过提供更加各向同性的响应,机器人设备可以补偿工作空间某些区域的低可操作性。我们使用触觉机器人在矢状面上进行了实验,在矢状面上,粘性环境作为负载阻碍了人类在整个工作空间的移动。实验结果表明,所提出的方法可以在可操作性较低的方向上提供帮助,而在可操作性较高的方向上则不提供帮助,从而有效减少了人类的体力消耗。此外,我们还成功验证了我们的新方法在性能上优于现有方法。
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