The Impacts of Human-Cobot Collaboration on Perceived Cognitive Load and Usability during an Industrial Task: An Exploratory Experiment
May 30, 2023 Β· Declared Dead Β· π IISE Transactions on Occupational Ergonomics and Human Factors
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Authors
Γtienne Fournier, Dorilys Kilgus, AurΓ©lie Landry, Belal Hmedan, Damien Pellier, Humbert Fiorino, Christine Jeoffrion
arXiv ID
2305.18913
Category
cs.HC: Human-Computer Interaction
Cross-listed
cs.RO
Citations
32
Venue
IISE Transactions on Occupational Ergonomics and Human Factors
Last Checked
4 months ago
Abstract
Since cobots (collaborative robots) are increasingly being introduced in industrial environments, being aware of their potential positive and negative impacts on human collaborators is essential. This study guides occupational health workers by identifying the potential gains (reduced perceived time demand, number of gestures and number of errors) and concerns (the cobot takes a long time to perceive its environment, which eads to an increased completion time) associated with working with cobots. In our study, the collaboration between human and cobot during an assembly task did not negatively impact perceived cognitive load, increased completion time (but decreased perceived time demand), and decreased the number of gestures performed by participants and the number of errors made. Thus, performing the task in collaboration with a cobot improved the user's experience and performance, except for completion time, which increased. This study opens up avenues to investigate how to improve cobots to ensure the usability of the human-machine system at work.
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