School of Mechanical, Electrical and Manufacturing Engineering, Loughborough University, Leicestershire LE11 3TU, UK.
Sensors (Basel). 2024 Mar 21;24(6):2010. doi: 10.3390/s24062010.
The adoption of Industry 4.0 technologies in manufacturing systems has accelerated in recent years, with a shift towards understanding operators' well-being and resilience within the context of creating a human-centric manufacturing environment. In addition to measuring physical workload, monitoring operators' cognitive workload is becoming a key element in maintaining a healthy and high-performing working environment in future digitalized manufacturing systems. The current approaches to the measurement of cognitive workload may be inadequate when human operators are faced with a series of new digitalized technologies, where their impact on operators' mental workload and performance needs to be better understood. Therefore, a new method for measuring and determining the cognitive workload is required. Here, we propose a new method for determining cognitive-workload indices in a human-centric environment. The approach provides a method to define and verify the relationships between the factors of task complexity, cognitive workload, operators' level of expertise, and indirectly, the operator performance level in a highly digitalized manufacturing environment. Our strategy is tested in a series of experiments where operators perform assembly tasks on a Wankel Engine block. The physiological signals from heart-rate variability and pupillometry bio-markers of 17 operators were captured and analysed using eye-tracking and electrocardiogram sensors. The experimental results demonstrate statistically significant differences in both cardiac and pupillometry-based cognitive load indices across the four task complexity levels (rest, low, medium, and high). Notably, these developed indices also provide better indications of cognitive load responding to changes in complexity compared to other measures. Additionally, while experts appear to exhibit lower cognitive loads across all complexity levels, further analysis is required to confirm statistically significant differences. In conclusion, the results from both measurement sensors are found to be compatible and in support of the proposed new approach. Our strategy should be useful for designing and optimizing workplace environments based on the cognitive load experienced by operators.
近年来,制造业系统中工业 4.0 技术的采用速度加快,人们开始关注在创建以人为本的制造环境的背景下操作人员的幸福感和适应能力。除了衡量体力工作负荷外,监测操作人员的认知工作负荷正成为维护未来数字化制造系统中健康高效工作环境的关键要素。当人类操作人员面对一系列新的数字化技术时,当前的认知工作负荷测量方法可能不够充分,需要更好地了解这些技术对操作人员心理工作负荷和绩效的影响。因此,需要一种新的测量和确定认知工作负荷的方法。在这里,我们提出了一种在以人为中心的环境中确定认知工作负荷指数的新方法。该方法提供了一种定义和验证任务复杂性、认知工作负荷、操作人员专业水平等因素之间关系的方法,并间接地验证了操作人员在高度数字化制造环境中的绩效水平。我们的策略在一系列实验中进行了测试,操作人员在汪克尔发动机缸体上执行装配任务。使用眼动追踪和心电图传感器捕获和分析了 17 名操作人员的心率变异性和瞳孔测量生物标志物的生理信号。实验结果表明,在四个任务复杂性水平(休息、低、中、高)上,基于心率变异性和瞳孔测量的认知负荷指数存在统计学上的显著差异。值得注意的是,与其他测量方法相比,这些开发的指数还能更好地反映对复杂性变化的认知负荷响应。此外,虽然专家在所有复杂性水平下似乎表现出较低的认知负荷,但需要进一步的分析来确认统计学上的显著差异。总之,两种测量传感器的结果都被发现是兼容的,并支持所提出的新方法。我们的策略应该有助于根据操作人员的认知负荷来设计和优化工作场所环境。