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Assessing operator stress in collaborative robotics: A multimodal approach

Simone Borghi, Andrea Ruo, Lorenzo Sabattini, Margherita Peruzzini, Valeria Villani

发表年份
2024
引用次数
19

摘要

In the era of Industry 4.0, the study of Human–Robot Collaboration (HRC) in advancing modern manufacturing and automation is paramount. An operator approaching a collaborative robot (cobot) may have feelings of distrust, and experience discomfort and stress, especially during the early stages of training. Human factors cannot be neglected: for efficient implementation, the complex psycho-physiological state and responses of the operator must be taken into consideration. In this study, volunteers were asked to carry out a set of cobot programming tasks, while several physiological signals, such as electroencephalogram (EEG), electrocardiogram (ECG), Galvanic skin response (GSR), and facial expressions were recorded. In addition, a subjective questionnaire (NASA-TLX) was administered at the end, to assess if the derived physiological parameters are related to the subjective perception of stress. Parameters exhibiting a higher degree of alignment with subjective perception are mean Theta (76.67%), Alpha (70.53%) and Beta (67.65%) power extracted from EEG, recovery time (72.86%) and rise time (71.43%) extracted from GSR and heart rate variability (HRV) metrics PNN25 (71.58%), SDNN (70.53%), PNN50 (68.95%) and RMSSD (66.84%). Parameters extracted from raw RR Intervals appear to be more variable and less accurate (42.11%) so as recorded emotions (51.43%). • Real-time monitoring of operator stress in Industry 4.0 is essential. • Different psychophysiological signals recorded in real-time with modern biosensors. • The subjective stress response is very variable and dependent on various factors. • Record if variations in physiological parameters agree with individual perceptions. • Select metrics best in accordance with subjective stress perception.

关键词

RoboticsArtificial intelligenceOperator (biology)Computer scienceStress (linguistics)EngineeringMachine learningRobotChemistry

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