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Process Control Operator EEG Feature Extraction Based on Empirical Mode Decomposition and Spectral Analysis

机译:基于经验模态分解和谱分析的过程控制算子脑电特征提取

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The aim of this study is to extract salient features from EEG signals that reflect the process control operator functional state. The EEG feature extraction process contains two stages. Firstly, the segmented EEG signals are decomposed into IMFs via empirical mode decomposition. And then Welch's method for power spectrum estimation is applied to four lower-order IMFs, of which the frequency ranges from 0.5 to 30 Hz. After that the features, including peak frequency, peak power, gravity frequency, absolute power and relative power of the IMFs are calculated. The correlations between features and operator task load, subjective mental workload measurements are analyzed and the features significantly relating to operator functional state are selected.
机译:这项研究的目的是从反映过程控制操作员功能状态的EEG信号中提取显着特征。脑电特征提取过程包括两个阶段。首先,分段的脑电信号通过经验模式分解分解为IMF。然后,将Welch的功率谱估计方法应用于四个低阶IMF,其频率范围为0.5到30 Hz。之后,计算包括IMF的峰值频率,峰值功率,重力频率,绝对功率和相对功率在内的特征。分析特征与操作员任务负荷,主观心理工作量测量之间的相关性,并选择与操作员功能状态显着相关的特征。

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