Fanti Vasco, Leggieri Sergio, Poliero Tommaso, Sposito Matteo, Caldwell Darwin G, Di Natali Christian
Department of Advanced Robotics (ADVR), Istituto Italiano di Tecnologia (IIT), 16163 Genova, Italy.
Department of Informatics, Bioengineering, Robotics and Systems Engineering (DIBRIS), Università degli Studi di Genova (UniGe), 16145 Genova, Italy.
Bioengineering (Basel). 2024 Dec 5;11(12):1231. doi: 10.3390/bioengineering11121231.
The assessment of realistic work tasks is a critical aspect of introducing exoskeletons to work environments. However, as the experimental task's complexity increases, the analysis of muscle activity becomes increasingly challenging. Thus, it is essential to use metrics that adequately represent the physical human-exoskeleton interaction (pHEI). Muscle activity analysis is usually reduced to a comparison of point values (average or maximum muscle contraction), neglecting the signals' trend. Metrics based on single values, however, lack information about the dynamism of the task and its duration. Their meaning can be uncertain, especially when analyzing complex movements or temporally extended activities, and it is reduced to an overall assessment of the interaction on the whole task. This work proposes a method based on integrated EMGs (iEMGs) to evaluate the pHEI by considering task dynamism, temporal duration, and the neural energy associated with muscle activity. The resulting signal highlights the task phases in which the exoskeleton reduces or increases the effort required to accomplish the task, allowing the calculation of specific indices that quantify the energy exchange in terms of assistance (AII), resistance (RII), and overall interaction (OII). The method provides an analysis tool that enables developers and controller designers to receive insights into the exoskeleton performances and the quality of the user-robot interaction. The application of this method is provided for passive and two active back support exoskeletons: the Laevo, XoTrunk, and StreamEXO.
对实际工作任务进行评估是将外骨骼引入工作环境的一个关键方面。然而,随着实验任务复杂性的增加,对肌肉活动的分析变得越来越具有挑战性。因此,使用能够充分代表人体与外骨骼物理交互(pHEI)的指标至关重要。肌肉活动分析通常简化为点值比较(平均或最大肌肉收缩),而忽略了信号的趋势。然而,基于单一值的指标缺乏关于任务动态性及其持续时间的信息。它们的含义可能不确定,尤其是在分析复杂运动或时间上扩展的活动时,并且简化为对整个任务交互的总体评估。这项工作提出了一种基于集成肌电图(iEMG)的方法,通过考虑任务动态性、时间持续时间以及与肌肉活动相关的神经能量来评估pHEI。所得信号突出显示了外骨骼减少或增加完成任务所需努力的任务阶段,从而能够计算出以辅助(AII)、阻力(RII)和总体交互(OII)来量化能量交换的特定指标。该方法提供了一种分析工具,使开发者和控制器设计者能够深入了解外骨骼性能以及用户与机器人交互的质量。本文给出了该方法在被动式和两种主动式背部支撑外骨骼(Laevo、XoTrunk和StreamEXO)上的应用。