The development of cognitive workload management framework based on neuronal dynamics principle to maintain train driver’s health and railway safety

Q3 Engineering
S. Sugiono, W. Nugroho, Bayu Rahayudi, A. Lintangsari, A. Lustyana
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引用次数: 0

Abstract

Fatigue increases the tendency of poor train driving strategy decision. Decision making in cognitive overload and cognitive underload situation mostly outputs bad decisions. Accordingly, train driver’s cognitive function is required to be sTable during travel so that they can give correct response at a given situation. This study constructs a conceptual framework for cognitive workload management (CWM) of train driver by taking the energy expenses from cognition into the account. This study combines objective and subjective cognitive workload analysis to evaluate train driver duty readiness. The objective load analysis was performed through energy level approximation based on neuronal dynamics simulation from 76 brain regions. The cognitive energy expenditure (CEE) calculated from neuron action potential (NAP) and the ion-membrane current (IMC) from the simulation results. The cognitive load (CL) approximated by converts the continuous time-based CEE to discrete frequency-based CL using Fourier series. The subjective cognitive workload obtained from train simulation results followed by 27 participants. The participants fill the questionnaire based on their simulated journey experience. The results of the evaluation used to build readiness evaluation classifier based on control chart. The control chart evaluation helps the management to determine weekly rest period and daily short rest period treatment base on each train driver workload. The CWM framework allows different recovery treatment to be applied to each train driver. The impact of the CWM application is the performance of train drivers are kept stable. Thus, the CWM framework based on CEE is useful to prevent physical and mental fatigue
基于神经动力学原理的认知工作量管理框架的开发,以维护列车驾驶员健康和铁路安全
疲劳增加了列车行驶策略决策不良的倾向。认知超载和认知欠负荷情况下的决策大多输出不良决策。因此,要求列车驾驶员的认知功能在行驶过程中保持稳定,才能在给定的情况下做出正确的反应。本研究通过考虑认知过程中的能量消耗,构建了列车驾驶员认知负荷管理的概念框架。本研究结合客观与主观认知负荷分析来评估列车驾驶员的执勤准备状态。通过基于76个脑区神经元动力学模拟的能级近似进行客观负荷分析。通过神经元动作电位(NAP)计算认知能量消耗(CEE),通过模拟结果计算离子膜电流(IMC)。该方法利用傅立叶级数将基于连续时间的认知负荷近似为基于离散频率的认知负荷。对27名受试者进行了列车模拟实验,获得主观认知负荷。参与者根据他们的模拟旅行经历填写问卷。将评价结果用于构建基于控制图的战备度评价分类器。控制图评价有助于管理层根据每个列车驾驶员的工作量确定每周休息时间和每日短休息时间的处理。CWM框架允许对每个列车驾驶员应用不同的恢复处理。CWM应用的影响是保持列车驾驶员的工作性能稳定。因此,基于CEE的CWM框架有助于防止身心疲劳
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
EUREKA: Physics and Engineering
EUREKA: Physics and Engineering Engineering-Engineering (all)
CiteScore
1.90
自引率
0.00%
发文量
78
审稿时长
12 weeks
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