Marcus Department of Industrial and Manufacturing Engineering, The Pennsylvania State University, University Park, PA 16802, USA.
Sensors (Basel). 2024 Mar 18;24(6):1943. doi: 10.3390/s24061943.
The advancement in digital technology is transforming the world. It enables smart product-service systems that improve productivity by changing tasks, processes, and the ways we work. There are great opportunities in maintenance because many tasks require physical and cognitive work, but are still carried out manually. However, the interaction between a human and a smart system is inevitable, since not all tasks in maintenance can be fully automated. Therefore, we conducted a controlled laboratory experiment to investigate the impact on technicians' workload and performance due to the introduction of smart technology. Especially, we focused on the effects of different diagnosis support systems on technicians during maintenance activity. We experimented with a model that replicates the key components of a computer numerical control (CNC) machine with a proximity sensor, a component that requires frequent maintenance. Forty-five participants were evenly assigned to three groups: a group that used a Fault-Tree diagnosis support system (FTd-system), a group that used an artificial intelligence diagnosis support system (AId-system), and a group that used neither of the diagnosis support systems. The results show that the group that used the FTd-system completed the task 15% faster than the group that used the AId-system. There was no significant difference in the workload between groups. Further analysis using the NGOMSL model implied that the difference in time to complete was probably due to the difference in system interfaces. In summary, the experimental results and further analysis imply that adopting the new diagnosis support system may improve maintenance productivity by reducing the number of diagnosis attempts without burdening technicians with new workloads. Estimates indicate that the maintenance time and the cognitive load can be reduced by 8.4 s and 15% if only two options are shown in the user interface.
数字技术的进步正在改变世界。它使智能产品-服务系统得以实现,这些系统通过改变任务、流程和工作方式来提高生产力。在维护中有很多机会,因为许多任务需要体力和认知工作,但仍然是手动完成的。然而,由于并非所有维护任务都可以完全自动化,因此人与智能系统之间的交互是不可避免的。因此,我们进行了一项对照实验室实验,以研究由于引入智能技术而对技术人员的工作负荷和绩效产生的影响。特别是,我们专注于不同的诊断支持系统对维护活动期间技术人员的影响。我们通过实验模拟了一个带有接近传感器的数控机床(CNC)模型,该模型是一个需要频繁维护的组件。45 名参与者被平均分配到三个组:使用故障树诊断支持系统(FTd-系统)的组、使用人工智能诊断支持系统(AId-系统)的组和既不使用也不使用诊断支持系统的组。结果表明,使用 FTd-系统的组完成任务的速度比使用 AId-系统的组快 15%。组间的工作量没有显著差异。使用 NGOMSL 模型进行的进一步分析表明,完成时间的差异可能是由于系统接口的差异造成的。总之,实验结果和进一步分析表明,采用新的诊断支持系统可以通过减少诊断尝试的次数而不会增加技术人员的新工作量来提高维护生产力。估计表明,如果在用户界面中仅显示两个选项,则可以将维护时间和认知负荷减少 8.4 秒和 15%。