Liu Xiaoguang, Shi Lu, Ye Cong, Li Yangyang, Wang Jing
School of Naval Architecture, Ocean & Civil Engineering, Shanghai Jiao Tong University, Shanghai 200240, China.
Shanghai Jiao Tong University and Chiba University International Cooperative Research Center (SJTC-CU-ICRC), Shanghai 200231, China.
Bioengineering (Basel). 2023 Aug 31;10(9):1027. doi: 10.3390/bioengineering10091027.
A person's present mental state is closely associated with the frequency and temporal domain features of spontaneous electroencephalogram (EEG) impulses, which directly reflect neurophysiological signals of brain activity. EEG signals are employed in this study to measure the mental workload of drivers while they are operating a vehicle. A technique based on the quantum genetic algorithm (QGA) is suggested for improving the kernel function parameters of the multi-class support vector machine (MSVM). The performance of the algorithm based on the quantum genetic algorithm is found to be superior to that of other ways when other methods and the quantum genetic algorithm are evaluated for the parameter optimization of kernel function via simulation. A multi-classification support vector machine based on the quantum genetic algorithm (QGA-MSVM) is applied to identify the mental workload of oceanauts through the collection and feature extraction of EEG signals during driving simulation operation experiments in a sea basin area, a seamount area, and a hydrothermal area. Even with a limited data set, QGA-MSVM is able to accurately identify the cognitive burden experienced by ocean sailors, with an overall accuracy of 91.8%.
人的当前心理状态与自发脑电图(EEG)脉冲的频率和时域特征密切相关,这些特征直接反映大脑活动的神经生理信号。本研究采用脑电图信号来测量驾驶员在操作车辆时的心理负荷。提出了一种基于量子遗传算法(QGA)的技术,用于改进多类支持向量机(MSVM)的核函数参数。通过仿真对其他方法和量子遗传算法进行核函数参数优化评估时,发现基于量子遗传算法的算法性能优于其他方法。在海盆区域、海山区和热液区的驾驶模拟操作实验中,基于量子遗传算法的多分类支持向量机(QGA-MSVM)通过收集和提取脑电图信号来识别航天员的心理负荷。即使数据集有限,QGA-MSVM也能够准确识别海员所经历的认知负担,总体准确率为91.8%。