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通过测力肌电图检测人机协作活动中的安全异常情况。

Detecting Safety Anomalies in pHRI Activities via Force Myography.

作者信息

Zakia Umme, Menon Carlo

机构信息

New York Institute of Technology, Vancouver Campus, Vancouver, BC V5M 4X5, Canada.

Menrva Research Group, Schools of Mechatronic Systems Engineering and Engineering Science, Simon Fraser University, Burnaby, BC V5A 1S6, Canada.

出版信息

Bioengineering (Basel). 2023 Mar 5;10(3):326. doi: 10.3390/bioengineering10030326.

Abstract

The potential application of using a wearable force myography (FMG) band for monitoring the occupational safety of a human participant working in collaboration with an industrial robot was studied. Regular physical human-robot interactions were considered as activities of daily life in pHRI (pHRI-ADL) to recognize human-intended motions during such interactions. The force myography technique was used to read volumetric changes in muscle movements while a human participant interacted with a robot. Data-driven models were used to observe human activities for useful insights. Using three unsupervised learning algorithms, isolation forest, one-class SVM, and Mahalanobis distance, models were trained to determine pHRI-ADL/regular, preset activities by learning the latent features' distributions. The trained models were evaluated separately to recognize any unwanted interactions that differed from the normal activities, i.e., anomalies that were novel, inliers, or outliers to the normal distributions. The models were able to detect unusual, novel movements during a certain scenario that was considered an unsafe interaction. Once a safety hazard was detected, the control system generated a warning signal within seconds of the event. Hence, this study showed the viability of using FMG biofeedback to indicate risky interactions to prevent injuries, improve occupational health, and monitor safety in workplaces that require human participation.

摘要

研究了使用可穿戴式测力肌电(FMG)手环监测与工业机器人协作工作的人类参与者职业安全的潜在应用。在人机物理交互(pHRI)中,常规的人机物理交互被视为日常生活活动(pHRI-ADL),以识别此类交互过程中人类的预期动作。当人类参与者与机器人交互时,测力肌电技术用于读取肌肉运动的体积变化。数据驱动模型用于观察人类活动以获取有用的见解。使用三种无监督学习算法,即孤立森林、单类支持向量机和马氏距离,通过学习潜在特征的分布来训练模型,以确定pHRI-ADL/常规预设活动。对训练好的模型进行单独评估,以识别任何与正常活动不同的有害交互,即对于正态分布而言是新颖的、内点或异常值的异常情况。这些模型能够在被视为不安全交互的特定场景中检测到异常的、新颖的动作。一旦检测到安全隐患,控制系统会在事件发生后的几秒钟内生成警告信号。因此,本研究表明了使用FMG生物反馈来指示危险交互以预防伤害、改善职业健康并监测需要人类参与的工作场所安全的可行性。

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