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Classifying human operator functional state based on electrophysiological and performance measures and fuzzy clustering method

机译:基于电生理和性能指标及模糊聚类的操作员功能状态分类

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摘要

The human operator’s ability to perform their tasks can fluctuate over time. Because the cognitive demands of the task can also vary it is possible that the capabilities of the operator are not sufficient to satisfy the job demands. This can lead to serious errors when the operator is overwhelmed by the task demands. Psychophysiological measures, such as heart rate and brain activity, can be used to monitor operator cognitive workload. In this paper, the most influential psychophysiological measures are extracted to characterize Operator Functional State (OFS) in automated tasks under a complex form of human–automation interaction. The fuzzy c-mean (FCM) algorithm is used and tested for its OFS classification performance. The results obtained have shown the feasibility and effectiveness of the FCM algorithm as well as the utility of the selected input features for OFS classification. Besides being able to cope with nonlinearity and fuzzy uncertainty in the psychophysiological data it can provide information about the relative importance of the input features as well as the confidence estimate of the classification results. The OFS pattern classification method developed can be incorporated into an adaptive aiding system in order to enhance the overall performance of a large class of safety–critical human–machine cooperative systems.
机译:操作员执行任务的能力会随着时间而波动。由于任务的认知要求也可能会发生变化,因此操作员的能力可能不足以满足工作要求。当操作员对任务要求不知所措时,这可能导致严重的错误。心跳和脑部活动等心理生理指标可用于监控操作员的认知工作量。在本文中,提取了最有影响力的心理生理措施,以在复杂的人机交互形式下表征自动化任务中的操作员功能状态(OFS)。使用模糊c均值(FCM)算法并对其OFS分类性能进行了测试。获得的结果表明了FCM算法的可行性和有效性,以及所选输入特征用于OFS分类的效用。除了能够应对心理生理数据中的非线性和模糊不确定性之外,它还可以提供有关输入特征的相对重要性以及分类结果的置信度估计的信息。可以将开发出的OFS模式分类方法并入自适应辅助系统中,以增强一大类安全关键的人机协作系统的整体性能。

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