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Inicio  /  Aerospace  /  Vol: 9 Par: 10 (2022)  /  Artículo
ARTÍCULO
TITULO

EEG Feature Analysis Related to Situation Awareness Assessment and Discrimination

Chuanyan Feng    
Shuang Liu    
Xiaoru Wanyan    
Hao Chen    
Yuchen Min and Yilan Ma    

Resumen

In order to discriminate situation awareness (SA) levels on the basis of SA-sensitive electroencephalography (EEG) features, the high-SA (HSA) group and low-SA (LSA) groups, which are representative of two SA levels, were classified according to the situation awareness global assessment technology (SAGAT) scores measured in the multi-attribute task battery (MATB) II tasks. Furthermore, three types of EEG features, namely, absolute power, relative power, and slow-wave/fast-wave (SW/FW), were explored using spectral analysis. In addition, repeated analysis of variance (ANOVA) was conducted in three brain regions (frontal, central, and parietal) × three brain lateralities (left, middle, and right) × two SA groups (LSA and HSA) to explore SA-sensitive EEG features. The statistical results indicate a significant difference between the two SA groups according to SAGAT scores; moreover, no significant difference was found for the absolute power of four waves (delta (d), theta (?), alpha (a), and beta (ß)). In addition, the LSA group had a significantly lower ß relative power than the HSA group in central and partial regions. Lastly, compared with the HSA group, the LSA group had higher ?/ß and (? + a)/(a + ß) in all analyzed brain regions, higher a/ß in the parietal region, and higher (? + a)/ß in all analyzed regions except for the left and right laterality in the frontal region. The above SA-sensitive EEG features were fed into principal component analysis (PCA) and the Bayes method to discriminate different SA groups, and the accuracies were 83.3% for the original validation and 70.8% for the cross-validation. The results provide a basis for real-time assessment and discrimination of SA by investigating EEG features, thus contributing to monitoring SA decrement that might lead to threats to flight safety.

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