EEG-Based Human Factors Evaluation of Air Traffic Control Operators (ATCOs) for Optimal Training

Yisi Liu, Zirui Lan, F. Trapsilawati, O. Sourina, Chun-Hsien Chen, W. Müller-Wittig
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引用次数: 2

Abstract

To deal with the increasing demands in Air Traffic Control (ATC), new working place designs are proposed and developed that need novel human factors evaluation tools. In this paper, we propose a novel application of Electroencephalogram (EEG)-based emotion, workload, and stress recognition algorithms to investigate the optimal length of training for Air Traffic Control Officers (ATCOs) to learn working with three-dimensional (3D) display as a supplementary to the existing 2D display. We tested and applied the state-of-the-art EEG-based subject-dependent algorithms. The following experiment was carried out. Twelve ATCOs were recruited to take part in the experiment. The participants were in charge of the Terminal Control Area, providing navigation assistance to aircraft departing and approaching the airport using 2D and 3D displays. EEG data were recorded, and traditional human factors questionnaires were given to the participants after 15-minute, 60-minute, and 120-minute training. Different from the questionnaires, the EEG-based evaluation tools allow the recognition of emotions, workload, and stress with different temporal resolutions during the task performance by subjects. The results showed that 50-minute training could be enough for the ATCOs to learn the new display setting as they had relatively low stress and workload. The study demonstrated that there is a potential of applying the EEG-based human factors evaluation tools to assess novel system designs in addition to traditional questionnaire and feedback, which can be beneficial for future improvements and developments of the systems and interfaces.
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基于脑电图的空管人员最佳培训人因评价
为了应对空中交通管制(ATC)日益增长的需求,新的工作场所设计被提出和发展,需要新的人为因素评估工具。在本文中,我们提出了一种基于脑电图(EEG)的情绪、工作量和压力识别算法的新应用,以研究空中交通管制人员(atco)学习使用三维(3D)显示器作为现有二维显示器的补充的最佳训练长度。我们测试并应用了最先进的基于脑电图的主题相关算法。进行了以下实验。12名空中交通管制员被招募来参加实验。参加者负责终端管制区,使用2D和3D显示器为离境和接近机场的飞机提供导航协助。在训练15分钟、60分钟和120分钟后,记录脑电数据,并对参与者进行传统的人为因素问卷调查。与问卷调查不同的是,基于脑电图的评估工具允许被试在任务执行过程中对不同时间分辨率的情绪、工作量和压力进行识别。结果表明,50分钟的训练足以让atco学习新的显示设置,因为他们的压力和工作量相对较小。研究表明,除了传统的问卷调查和反馈之外,基于脑电图的人因评价工具有可能用于评价新系统设计,这对未来系统和界面的改进和发展有益。
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