An EMG-Based Objective Function for Human-in-the-Loop Optimization.

Maria Alejandra Diaz, Sander De Bock, Philipp Beckerle, Jan Babic, Tom Verstraten, Kevin De Pauw
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Abstract

Advancements in wearable robots aim to improve the users' motion, performance, and comfort by optimizing, mainly, energetic cost (EC). However, EC is a noisy measurement with a physiological delayed response that requires long evaluation periods and wearing an uncomfortable mask. This study aims to estimate and minimize an EMG-based objective function that describes the natural energetic expenditure of individuals walking. This objective is assessed by combining multiple electromyography (EMG) variables from the EMG intensity and muscle synergies. To evaluate this objective function simply and repeatedly, we prescribed step frequency (SF) via a metronome and optimized this frequency to minimize muscle activity demands. Further, a linear mixed-effects model was fitted for EC, with the EMG variables as fixed-effects and a random intercept that varies by participant. After the model was fitted to the data, a cubic polynomial was used to identify the optimal SF that reduces the overall EMG-based objective function. Our analysis outlines that the proposed objective function is comparable to the EC during walking, the primary objective function used in human-in-the-loop optimization. Thus, this EMG-based objective function could be potentially used to optimize wearable robots and improve human-robot interaction.

一种基于EMG的人在环优化目标函数。
可穿戴机器人的进步旨在通过优化能量成本(EC)来提高用户的运动、性能和舒适度。然而,EC是一种具有生理延迟反应的嘈杂测量,需要长时间的评估和佩戴不舒服的口罩。本研究旨在估计和最小化一个基于肌电图的目标函数,该函数描述了个人步行的自然能量消耗。这一目标是通过结合来自肌电图强度和肌肉协同作用的多个肌电图(EMG)变量来评估的。为了简单而重复地评估这个目标函数,我们通过节拍器规定了步进频率(SF),并优化了这个频率,以最大限度地减少肌肉活动需求。此外,将EMG变量作为固定效应和随参与者变化的随机截距,拟合了EC的线性混合效应模型。在将模型与数据拟合后,使用三次多项式来确定最佳SF,该SF减少了基于EMG的整体目标函数。我们的分析表明,所提出的目标函数与步行过程中的EC相当,EC是人在环优化中使用的主要目标函数。因此,这种基于EMG的目标函数有可能用于优化可穿戴机器人和改善人机交互。
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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