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Subject-specific mental workload classification using EEG and stochastic configuration network (SCN)

机译:使用EEG和随机配置网络(SCN)的主题特定心理工作负载分类

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摘要

Mental workload assessment of the operators in some safety-critical human-machine systems is an important research topic. In this paper, an experiment was designed to obtain the electroencephalogram (EEG) data under three levels of mental workload. The EEG data of multiple subjects were used for the mental workload classification based on the stochastic configuration network (SCN). The subject-specific classifiers (SSCs) were built by the individual EEG data. The results showed that the range of SSC test accuracy was between 56.5 % and 90.2 % with an average of 75.9 %. The SSC accuracy had a positive correlation with the operating accuracy (r = 0.852, p 0.01). For comparison, the subject-multiple classifiers (SMCs) were established with the EEG data of multiple subjects. The results showed that the SSCs had a lower time-consuming and higher prediction accuracy than the SMCs. But the SMCs might embody the trend of statistical performance for a large number of subjects. This study provided an effective modeling method for the classification of mental workload, and it would bring great convenience to the practical application in the future.
机译:在某些安全关键的人机系统中运营商的心理工作量评估是一个重要的研究主题。在本文中,设计了一个实验,以获得三级心理工作量的脑电图(EEG)数据。基于随机配置网络(SCN)的心理工作负载分类用于多个受试者的EEG数据。主题特定的分类器(SSCS)由各个EEG数据构建。结果表明,SSC检测精度范围为56.5%至90.2%,平均为75.9%。 SSC精度与操作精度(R = 0.852,P <0.01)具有正相关性。为了比较,使用多个受试者的EEG数据建立了主题多分类器(SMC)。结果表明,SSCS具有比SMC更低的耗时和更高的预测精度。但SMC可能会为大量科目提供统计表现的趋势。本研究为心理工作量进行分类提供了一种有效的建模方法,它将为未来的实际应用带来极大的便利。

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