Integrating information on the subjective experience reported by workers operating in collaborative human-machine environments with objective data, collected with wearable sensors capable of monitoring participants’ physiological responses, may lead to novel findings regarding the recognition and handling of potentially stressful work situations. To this aim, data were collected from seven participants working in production lines of manufactory companies employing collaborative robots. The experience associated with daily activities by cobot-workers in manufacturing enterprises was investigated for one week through the Experience Sampling Method. Data were analyzed through the Experience Fluctuation Model, relying on the relationship between perceived task related challenges and personal skills to identify eight experiential profiles: arousal, flow or optimal experience, control, relaxation, boredom, apathy, worry and anxiety. Physiological data were continuously collected throughout the same week using a smartwatch and processed to obtain real-time estimation of the mental energy use and recovery. Results showed that flow experience was predominant in tasks involving cobots; production line activities without cobot were instead mostly associated with relaxation. The real-time monitoring of the mental energy levels associated with work corroborated these results by showing that participants were, on average, 2.5 times longer in the focus zone when working with the cobot than when working without it. These findings suggest the heuristic potential of combining psychological and physiological assessment procedures to identify both advantages and areas of implementation emerging from the employment of cobots in industrial settings.

Quality of Experience and Mental Energy Use of Cobot Workers in Manufacturing Enterprises / F.A. Storm, L. Negri, C. Carissoli, A. Pena Fernandez, C. Dei, M. Bassi, D. Berckmans, A. Delle Fave (LECTURE NOTES IN COMPUTER SCIENCE). - In: Digital Human Modeling and Applications in Health, Safety, Ergonomics and Risk Management / [a cura di] V. G. Duffy. - Cham : Springer, 2023. - ISBN 978-3-031-35740-4. - pp. 444-458 (( Intervento presentato al 14. convegno International Conference Digital Human Modeling and Applications in Health, Safety, Ergonomics and Risk Management, DHM 2023, held as part of the 25th International Conference on Human-Computer Interaction, HCII tenutosi a Copenhagen : 23-28 July nel 2023 [10.1007/978-3-031-35741-1_33].

Quality of Experience and Mental Energy Use of Cobot Workers in Manufacturing Enterprises

L. Negri
Secondo
;
M. Bassi;A. Delle Fave
Ultimo
2023

Abstract

Integrating information on the subjective experience reported by workers operating in collaborative human-machine environments with objective data, collected with wearable sensors capable of monitoring participants’ physiological responses, may lead to novel findings regarding the recognition and handling of potentially stressful work situations. To this aim, data were collected from seven participants working in production lines of manufactory companies employing collaborative robots. The experience associated with daily activities by cobot-workers in manufacturing enterprises was investigated for one week through the Experience Sampling Method. Data were analyzed through the Experience Fluctuation Model, relying on the relationship between perceived task related challenges and personal skills to identify eight experiential profiles: arousal, flow or optimal experience, control, relaxation, boredom, apathy, worry and anxiety. Physiological data were continuously collected throughout the same week using a smartwatch and processed to obtain real-time estimation of the mental energy use and recovery. Results showed that flow experience was predominant in tasks involving cobots; production line activities without cobot were instead mostly associated with relaxation. The real-time monitoring of the mental energy levels associated with work corroborated these results by showing that participants were, on average, 2.5 times longer in the focus zone when working with the cobot than when working without it. These findings suggest the heuristic potential of combining psychological and physiological assessment procedures to identify both advantages and areas of implementation emerging from the employment of cobots in industrial settings.
cobots; physiological data; quality of experience; workers’ well-being
Settore M-PSI/01 - Psicologia Generale
Settore M-PSI/02 - Psicobiologia e Psicologia Fisiologica
   Mental Health promotion of cobot Workers in Industry 4.0 (MindBot)
   MindBot
   EUROPEAN COMMISSION
   H2020
   847926
2023
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2434/1004412
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