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Support Vector Machine Approaches to Classifying Operator Functional State in Human-Machine System

机译:支持矢量机器方法对人机系统中的操作员功能状态进行分类

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The safety of a sophisticated human-machine system is closely related to the operator functional states (OFS) and the OFS is also associated with the physiological and mental state. The precise evaluation of OFS can realize an adaptive auxiliary system to assist operator decrease the accident risk. This paper has assessed and classified OFS based on a series of operator performance data, subjective evaluation data and electrophysiological signals. The classification model of OFS is based on the support vector machine (SVM). Analysis demonstrated that SVM can classify the OFS into three levels and the suitable feature selection contributes to increasing correct classification rate.
机译:复杂的人机系统的安全性与操作员功能状态(OFS)密切相关,而OFS也与生理和精神状态相关联。对对此的精确评估可以实现自适应辅助系统,以帮助操作员降低事故风险。本文根据一系列操作员性能数据,主观评估数据和电生理信号进行了评估和分类。 of ofs的分类模型基于支持向量机(SVM)。分析证明SVM可以将SVM分为三个级别,并且合适的特征选择有助于提高正确的分类率。

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