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Psychophysiological Sensing and State Classification for Attention Management in Commercial Aviation

机译:商业航空中注意力管理的心理生理感知和状态分类

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Attention-related human performance limiting states (AHPLS) can cause pilots to lose airplane state awareness (ASA), and their detection is important to improving commercial aviation safety. The Commercial Aviation Safety Team found that the majority of recent international commercial aviation accidents attributable to loss of control inflight involved flight crew loss of airplane state awareness, and that distraction of various forms was involved in all of them. Research on AHPLS, including channelized attention, diverted attention, startle / surprise, and confirmation bias, has been recommended in a Safety Enhancement (SE) entitled "Training for Attention Management." To accomplish the detection of such cognitive and psychophysiological states, a broad suite of sensors has been implemented to simultaneously measure their physiological markers during high fidelity flight simulation human subject studies. Pilot participants were asked to perform benchmark tasks and experimental flight scenarios designed to induce AHPLS. Pattern classification was employed to discriminate the AHPLS induced by the benchmark tasks. Unimodal classification using pre-processed electroencephalography (EEG) signals as input features to extreme gradient boosting, random forest and deep neural network multi-state classifiers was implemented. Multi-modal classification using galvanic skin response (GSR) in addition to the same EEG signals and using the same types of classifiers produced increased accuracy with respect to the unimodal case (90% vs. 86%), although only via the deep neural network classifier. Using EEG, GSR and heart rate variability across five participants, multi-state prediction accuracy averaged 89%. These initial results are a first step toward the goal of demonstrating simultaneous real time classification of multiple states using multiple sensing modalities in high-fidelity flight simulators. This detection is intended to support and inform training methods under development to mitigate the loss of ASA and thus reduce accidents and incidents.
机译:与注意力相关的人类绩效限制状态(AHPLS)可能会导致飞行员失去飞机状态意识(ASA),并且对其进行检测对于提高民航安全至关重要。商业航空安全团队发现,最近由于控制失误造成的国际商业航空事故大多数涉及飞行机组人员对飞机状态意识的丧失,并且所有形式的干扰都涉及其中。在名为“注意力管理培训”的安全增强(SE)中,已建议对AHPLS进行研究,包括引导注意力,转移注意力,惊吓/惊奇和确认偏差。为了完成对这种认知和心理生理状态的检测,已经实现了多种传感器,以在高保真飞行模拟人类受试者研究期间同时测量其生理标记。要求飞行员参与者执行旨在诱发AHPLS的基准任务和实验飞行方案。使用模式分类来区分基准任务引起的AHPLS。使用预处理的脑电图(EEG)信号作为极端梯度增强,随机森林和深度神经网络多状态分类器的输入特征,实现了单峰分类。尽管仅通过深层神经网络,但使用电皮肤反应(GSR)以及相同的EEG信号并使用相同类型的分类器进行多模式分类,相对于单峰情况,其准确性有所提高(90%比86%)。分类器。使用五名参与者的EEG,GSR和心率变异性,多状态预测准确性平均为89%。这些初步结果是朝着展示在高保真飞行模拟器中使用多种感应方式同时对多个状态进行实时分类的目标迈出的第一步。此检测旨在支持和告知正在开发的培训方法,以减轻ASA的损失,从而减少事故和事故征候。

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