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先进工作站与协作机器人:利用眼动追踪和心脏活动指标揭示老年工人在装配任务中的心理负荷

Advanced workstations and collaborative robots: exploiting eye-tracking and cardiac activity indices to unveil senior workers' mental workload in assembly tasks.

作者信息

Pluchino Patrik, Pernice Gabriella F A, Nenna Federica, Mingardi Michele, Bettelli Alice, Bacchin Davide, Spagnolli Anna, Jacucci Giulio, Ragazzon Andrea, Miglioranzi Leonardo, Pettenon Carlo, Gamberini Luciano

机构信息

Department of General Psychology, University of Padova, Padova, Italy.

Human Inspired Technology (HIT) Research Centre, University of Padova, Padova, Italy.

出版信息

Front Robot AI. 2023 Dec 12;10:1275572. doi: 10.3389/frobt.2023.1275572. eCollection 2023.

Abstract

As a result of Industry 5.0's technological advancements, collaborative robots (cobots) have emerged as pivotal enablers for refining manufacturing processes while re-focusing on humans. However, the successful integration of these cutting-edge tools hinges on a better understanding of human factors when interacting with such new technologies, eventually fostering workers' trust and acceptance and promoting low-fatigue work. This study thus delves into the intricate dynamics of human-cobot interactions by adopting a human-centric view. With this intent, we targeted senior workers, who often contend with diminishing work capabilities, and we explored the nexus between various human factors and task outcomes during a joint assembly operation with a cobot on an ergonomic workstation. Exploiting a dual-task manipulation to increase the task demand, we measured performance, subjective perceptions, eye-tracking indices and cardiac activity during the task. Firstly, we provided an overview of the senior workers' perceptions regarding their shared work with the cobot, by measuring technology acceptance, perceived wellbeing, work experience, and the estimated social impact of this technology in the industrial sector. Secondly, we asked whether the considered human factors varied significantly under dual-tasking, thus responding to a higher mental load while working alongside the cobot. Finally, we explored the predictive power of the collected measurements over the number of errors committed at the work task and the participants' perceived workload. The present findings demonstrated how senior workers exhibited strong acceptance and positive experiences with our advanced workstation and the cobot, even under higher mental strain. Besides, their task performance suffered increased errors and duration during dual-tasking, while the eye behavior partially reflected the increased mental demand. Some interesting outcomes were also gained about the predictive power of some of the collected indices over the number of errors committed at the assembly task, even though the same did not apply to predicting perceived workload levels. Overall, the paper discusses possible applications of these results in the 5.0 manufacturing sector, emphasizing the importance of adopting a holistic human-centered approach to understand the human-cobot complex better.

摘要

由于工业 5.0 的技术进步,协作机器人(cobots)已成为优化制造流程同时重新关注人的关键推动因素。然而,这些前沿工具的成功整合取决于在与此类新技术交互时对人为因素有更好的理解,最终增强工人的信任和接受度,并促进低疲劳工作。因此,本研究通过采用以人为本的观点深入探究人机协作交互的复杂动态。为此,我们将目标对准了经常面临工作能力下降的老年工人,并在符合人体工程学的工作站上与协作机器人进行联合装配操作期间,探索了各种人为因素与任务结果之间的关系。通过采用双任务操作来增加任务需求,我们在任务期间测量了绩效、主观感受、眼动追踪指标和心脏活动。首先,我们通过测量技术接受度、感知幸福感、工作体验以及该技术在工业领域的估计社会影响,概述了老年工人对与协作机器人共同工作的看法。其次,我们询问所考虑的人为因素在双任务情况下是否有显著差异,即在与协作机器人一起工作时应对更高的心理负荷。最后,我们探讨了所收集测量数据对工作任务中犯错误的数量以及参与者感知工作量的预测能力。目前的研究结果表明,即使在更高的心理压力下,老年工人对我们先进的工作站和协作机器人仍表现出强烈的接受度和积极的体验。此外,他们在双任务期间的任务绩效出现了更多错误和更长时间,而眼部行为部分反映了心理需求的增加。关于一些收集到的指标对装配任务中犯错误数量的预测能力也获得了一些有趣的结果,尽管同样不适用于预测感知工作量水平。总体而言,本文讨论了这些结果在 5.0 制造业中的可能应用,强调了采用整体以人为本的方法来更好地理解人机协作复合体的重要性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a46d/10749956/7163975cbeb6/frobt-10-1275572-g001.jpg

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