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Real-time prediction of short-timescale fluctuations in cognitive workload

机译:认知工作量的短时间尺度波动的实时预测

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Human operators often experience large fluctuations in cognitive workload over seconds timescales that can lead to sub-optimal performance, ranging from overload to neglect. Adaptive automation could potentially address this issue, but to do so it needs to be aware of real-time changes in operators’ spare cognitive capacity, so it can provide help in times of peak demand and take advantage of troughs to elicit operator engagement. However, it is unclear whether rapid changes in task demands are reflected in similarly rapid fluctuations in spare capacity, and if so what aspects of responses to those demands are predictive of?the current level of spare capacity. We used the ISO standard detection response task (DRT) to measure cognitive workload approximately every 4?s in a demanding task requiring monitoring and refueling of a fleet of simulated unmanned aerial vehicles (UAVs). We showed that the DRT provided a valid measure that can detect differences in workload due to changes in the number of UAVs. We used cross-validation to assess whether measures related to task performance immediately preceding the DRT could predict detection performance as a proxy for cognitive workload. Although the simple occurrence of task events had weak predictive ability, composite measures that tapped operators’ situational awareness with respect to fuel levels were much more effective. We conclude that cognitive workload does vary rapidly as a function of recent task events, and that real-time predictive models of operators’ cognitive workload provide a potential avenue for automation to adapt without an ongoing need for intrusive workload measurements.
机译:人类运营商经常在可能导致次优性能的时间尺度上的认知工作量方面经历大的波动,从而从过载到忽略。自适应自动化可能会解决这个问题,但这样做可能会意识到运营商的备用认知能力的实时变化,因此它可以在峰值需求中提供帮助,并利用低谷以引出运营商参与。但是,目前尚不清楚任务需求的快速变化是否反映在备用容量中同样快速的波动,如果有的话对这些需求的响应是哪些方面的预测性?当前的备用能力水平。我们使用ISO标准检测响应任务(DRT)来测量每4次的认知工作量,要求在苛刻的任务中,要求监测和加油的模拟无人驾驶飞行器(无人机)。我们展示DRT提供了一个有效的措施,可以检测由于无人机数量的变化导致的工作量差异。我们使用交叉验证来评估与在DRT之前的任务性能相关的措施是否可以将检测性能预测为认知工作量的代理。虽然任务事件的简单发生了预测能力薄弱,但挖掘了运营商对燃料水平的态势意识的复合措施更有效。我们得出结论,认知工作量根据最近的任务事件的函数变化,并且操作员的认知工作量的实时预测模型为自动化提供了潜在的自动化,而不需要持续需要侵入性工作负载测量。

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