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Objective-Analytical Measures of Workload -the Third Pillar of Workload Triangulation?

机译:工作量的客观分析方法-工作量三角剖分的第三支柱?

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The ability to assess operator workload is important for dynamically allocating tasks in a way that allows efficient and effective goal completion. For over fifty years, human factors professionals have relied upon self-reported measures of workload. However, these subjective-empirical measures have limited use for real-time applications because they are often collected only at the completion of the activity. In contrast, objective-empirical measurements of workload, such as physiological data, can be recorded continuously, and provide frequently-updated information over the course of a trial. Linking the low-sample-rate subjective-empirical measurement to the high-sample-rate objective-empirical measurements poses a significant challenge. While the series of objective-empirical measurements could be down-sampled or averaged over a longer time period to match the subjective-empirical sample rate, this process discards potentially relevant information, and may produce meaningless values for certain types of physiological data. This paper demonstrates the technique of using an objective-analytical measurement produced by mathematical models of workload to bridge the gap between subjective-empirical and objective-empirical measures. As a proof of concept, we predicted operator workload from physiological data using VACP, an objective-analytical measure, which was validated against NASA-TLX scores. Strong predictive results pave the way to use the objective-empirical measures in real-time augmentation (such as dynamic task allocation) to improve operator performance.
机译:评估操作员工作量的能力对于以允许高效,有效地完成目标的方式动态分配任务很重要。五十多年来,人为因素专业人士一直依靠自我报告的工作量测度。但是,这些主观经验方法在实时应用中的使用受到限制,因为它们通常仅在活动完成时才收集。相反,工作负荷的客观经验测量(例如生理数据)可以连续记录,并在试验过程中提供经常更新的信息。将低样本率的主观经验度量与高样本率的客观经验度量联系起来构成了重大挑战。虽然可以在更长的时间段内对一系列客观经验测量值进行降采样或平均以匹配主观经验采样率,但是此过程会丢弃潜在的相关信息,并且可能会为某些类型的生理数据产生无意义的值。本文演示了使用由工作量数学模型产生的客观分析度量来弥合主观经验度量和客观经验度量之间的差距的技术。作为概念的证明,我们使用客观分析方法VACP根据生理数据预测了操作员的工作量,该方法已针对NASA-TLX分数进行了验证。强大的预测结果为在实时增强(例如动态任务分配)中使用客观经验方法改善操作员绩效铺平了道路。

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