Afifah Harmayanti, I. Tama, F. Gapsari, Zuardin Akbar, Hans Juliano
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The objective of this study was to understand the relationship of cardiac biometrics to perceived workload as an indicator of cognitive workload analysis. The study utilized four biometrics, heart rate, HRV low frequency power, total frequency power and ratio of low and high frequency power, were used to analyzed a one hour long cognitive based study case. The study case was designed in a manufacturing planning context referring to manufacturing aptitude tests, to induce cognition process on 30 participants. The biometrics and NASA – TLX score result of all the participants, were then calculated as effect size standardization before input into random forest regressor model to analyze relationship between cardiac biometrics and perceived workload. The result found a moderate relationship between the two (r2 = 0.576). Features importance also showed the most impactful feature to the model is the effect size of frequency power ratio. 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引用次数: 0
摘要
工作量对于管理和保持人力资源的良好绩效和分配至关重要。在先进的制造业中,人的工作职能已转向认知任务。因此,应使用认知工作量评估来监测工人的最佳工作量。最常见的认知工作量工具是感知测量,如 NASA - TLX 问卷。尽管这种主观测量方法能敏感地捕捉到工人的工作量感受,但容易产生偏差。利用工作状态下人体的生物统计学数据进行客观测量有助于消除偏差。心脏生物测量是与心理活动变化密切相关的众多测量之一。本研究的目的是了解作为认知工作量分析指标的心脏生物测量与感知工作量之间的关系。研究利用心率、心率变异低频功率、总频功率以及低频和高频功率比这四种生物测量来分析一个长达一小时的基于认知的研究案例。该研究案例是在制造规划背景下设计的,参考了制造能力测试,以诱导 30 名参与者的认知过程。然后,计算所有参与者的生物统计学和 NASA - TLX 分数,作为效应大小标准化,然后输入随机森林回归模型,分析心脏生物统计学和感知工作量之间的关系。结果发现,两者之间的关系适中(r2 = 0.576)。特征重要性还表明,对模型影响最大的特征是频率功率比的效应大小。不过,建议在进行工作量分析时始终考虑评估多种心脏生物特征,以确保良好的模型性能。
CARDIAC BIOMETRICS AND PERCEIVED WORKLOAD REGRESSION ANALYSIS USING RANDOM FOREST REGRESSOR IN COGNITIVE MANUFACTURING TASKS
Workload is crucial in managing and maintaining good performance of human resources and allocations. In an advanced manufacturing industry, human job functions had shifted to cognitive tasks. Thus, cognitive workload evaluation should be used to monitor worker’s workload in optimal condition. Most common tool of cognitive workload tools are perceived measurement, like NASA – TLX questionnaire. Despite of its sensitivity to capture workload felt by the workers, this subjective measurement was prone to bias. Objective measurement utilizing biometrics data of the human body during working state was useful to eliminate bias. Cardiac biometrics were one of the many that were closely related to mental activity changes. The objective of this study was to understand the relationship of cardiac biometrics to perceived workload as an indicator of cognitive workload analysis. The study utilized four biometrics, heart rate, HRV low frequency power, total frequency power and ratio of low and high frequency power, were used to analyzed a one hour long cognitive based study case. The study case was designed in a manufacturing planning context referring to manufacturing aptitude tests, to induce cognition process on 30 participants. The biometrics and NASA – TLX score result of all the participants, were then calculated as effect size standardization before input into random forest regressor model to analyze relationship between cardiac biometrics and perceived workload. The result found a moderate relationship between the two (r2 = 0.576). Features importance also showed the most impactful feature to the model is the effect size of frequency power ratio. However, it is recommended to always consider evaluating multiple cardiac biometrics in workload analysis to ensure good model performance.