Shanghai Key Laboratory of Intelligent Manufacturing and Robotics, School of Mechatronic Engineering and Automation, Shanghai University, Shanghai 200444, China.
Zhejiang Key Laboratory of Robotics and Intelligent Manufacturing Equipment Technology, Ningbo Institute of Materials Technology & Engineering, Chinese Academy of Sciences, Ningbo 315201, China.
Sensors (Basel). 2024 Oct 14;24(20):6613. doi: 10.3390/s24206613.
Motion sickness is a common issue in electric vehicles, significantly impacting passenger comfort. This study aims to develop a functional brain network analysis model by integrating electroencephalography (EEG) and functional near-infrared spectroscopy (fNIRS) signals to evaluate motion sickness symptoms. During real-world testing with the Feifan F7 series of new energy-electric vehicles from SAIC Motor Corp, data were collected from 32 participants. The EEG signals were divided into four frequency bands: delta-range, theta-range, alpha-range, and beta-range, and brain oxygenation variation was calculated from the fNIRS signals. Functional connectivity between brain regions was measured to construct functional brain network models for motion sickness analysis. A motion sickness detection model was developed using a graph convolutional network (GCN) to integrate EEG and fNIRS data. Our results show significant differences in brain functional connectivity between participants in motion and non-motion sickness states. The model that combined fNIRS data with high-frequency EEG signals achieved the best performance, improving the F1 score by 11.4% compared to using EEG data alone and by 8.2% compared to using fNIRS data alone. These results highlight the effectiveness of integrating EEG and fNIRS signals using GCN for motion sickness detection. They demonstrate the model's superiority over single-modality approaches, showcasing its potential for real-world applications in electric vehicles.
晕车是电动汽车中常见的问题,会显著影响乘客的舒适度。本研究旨在开发一种功能脑网络分析模型,将脑电图(EEG)和功能近红外光谱(fNIRS)信号相结合,以评估晕车症状。在对上汽集团生产的非凡 F7 系列新能源电动汽车进行实际测试时,从 32 名参与者那里收集了数据。EEG 信号被分为四个频带:delta 范围、theta 范围、alpha 范围和 beta 范围,从 fNIRS 信号中计算出脑氧变化。测量了脑区之间的功能连接,以构建用于晕车分析的功能脑网络模型。使用图卷积网络(GCN)开发了晕车检测模型,以整合 EEG 和 fNIRS 数据。我们的结果表明,在运动和非晕车状态下,参与者的脑功能连接存在显著差异。与单独使用 EEG 数据相比,结合 fNIRS 数据和高频 EEG 信号的模型性能最佳,F1 得分提高了 11.4%,与单独使用 fNIRS 数据相比,F1 得分提高了 8.2%。这些结果突出了使用 GCN 整合 EEG 和 fNIRS 信号进行晕车检测的有效性。它们表明该模型优于单一模态方法,展示了其在电动汽车实际应用中的潜力。