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首页> 外文期刊>Advanced engineering informatics >A neurophysiological approach to assess training outcome under stress: A virtual reality experiment of industrial shutdown maintenance using Functional Near-Infrared Spectroscopy (fNIRS)
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A neurophysiological approach to assess training outcome under stress: A virtual reality experiment of industrial shutdown maintenance using Functional Near-Infrared Spectroscopy (fNIRS)

机译:评估压力下培训结果的神经生理方法:使用功能近红外光谱(FNIR)的工业关闭维护的虚拟现实实验

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摘要

Shutdown maintenance, i.e., turning off a facility for a short period for renewal or replacement operations is a highly stressful task. With the limited time and complex operation procedures, human stress is a leading risk. Especially shutdown maintenance workers often need to go through excessive and stressful on-site trainings to digest complex operation information in limited time. The challenge is that workers' stress status and task performance are hard to predict, as most trainings are only assessed after the shutdown maintenance operation is finished. A proactive assessment or intervention is needed to evaluate workers' stress status and task performance during the training to enable early warning and interventions. This study proposes a neurophysiological approach to assess workers' stress status and task performance under different virtual training scenarios. A Virtual Reality (VR) system integrated with the eye-tracking function was developed to simulate the power plant shutdown maintenance operations of replacing a heat exchanger in both normal and stressful scenarios. Meanwhile, a portable neuroimaging device - Functional Near-Infrared Spectroscopy (fNIRS) was also utilized to collect user's brain activities by measuring hemodynamic responses associated with neuron behavior. A human-subject experiment (n = 16) was conducted to evaluate participants' neural activity patterns and physiological metrics (gaze movement) related to their stress status and final task performance. Each participant was required to review the operational instructions for a pipe maintenance task for a short period and then perform the task based on their memory in both normal and stressful scenarios. Our experiment results indicated that stressful training had a strong impact on participants' neural connectivity patterns and final performance, suggesting the use of stressors during training to be an important and useful control factors. We further found significant correlations between gaze movement patterns in review phase and final task performance, and between the neural features and final task performance. In summary, we proposed a variety of supervised machine learning classification models that use the fNIRS data in the review session to estimate individual's task performance. The classification models were validated with the k-fold (k = 10) cross-validation method. The Random Forest classification model achieved the best average classification accuracy (80.38%) in classifying participants' task performance compared to other classification models. The contribution of our study is to help establish the knowledge and methodological basis for an early warning and estimating system of the final task performance based on the neurophysiological measures during the training for industrial operations. These findings are expected to provide more evidence about an early performance warning and prediction system based on a hybrid neurophysiological measure method, inspiring the design of a cognition-driven personalized training system for industrial workers.
机译:关闭维护,即,关闭续订或更换操作的短时间内设施是一个高度紧张的任务。通过有限的时间和复杂的操作程序,人类压力是一种主要的风险。特别是关闭维护工人经常需要在有限的时间内通过过多和压力的现场培训来消化复杂的运营信息。挑战是,工人的压力状态和任务表现很难预测,因为只有在关闭维护操作完成后才会评估大多数培训。需要进行积极的评估或干预,以评估培训期间工人的压力状态和任务表现,以实现预警和干预措施。本研究提出了一种在不同虚拟培训场景下评估工人的应力地位和任务绩效的神经生理方法。开发了与眼跟踪功能集成的虚拟现实(VR)系统,以模拟在正常和压力方案中更换热交换器的电厂关闭维护操作。同时,还用于通过测量与神经元行为相关的血流动力学反应来收集用户的脑活动的便携式神经影像近红外光谱(FNIR)。进行人对象实验(N = 16),以评估与其压力状态和最终任务表现相关的参与者的神经活动模式和生理指标(凝视运动)。每个参与者都需要在短时间内审查管道维护任务的操作指令,然后根据其内存在正常和压力方案中执行任务。我们的实验结果表明,压力培训对参与者的神经连接模式和最终表现产生了强烈影响,这表明在培训期间使用压力源是一个重要的和有用的控制因素。我们进一步发现了揭示运动模式在审查阶段和最终任务性能之间以及神经特征和最终任务性能之间的显着相关性。总之,我们提出了各种监督机器学习分类模型,该分类模型在审阅会话中使用FNIR数据来估计个人的任务性能。分类模型用K折叠(k = 10)交叉验证方法验证。随机森林分类模型在与其他分类模型相比,在分类参与者的任务表现方面实现了最佳平均分类准确性(80.38%)。我们研究的贡献是帮助建立基于工业行动培训期间神经生理学措施的最终任务绩效的预警和估算系统的知识和方法论。这些调查结果有望提供有关基于混合神经生理测量方法的早期性能警告和预测系统的具体证据,鼓励工业工人的认知驱动个性化培训系统的设计。

著录项

  • 来源
    《Advanced engineering informatics》 |2020年第10期|101153.1-101153.16|共16页
  • 作者单位

    Department of Civil and Coastal Engineering Engineering School of Sustainable Infrastructure and Environment (ESSIE) Herbert Wertheim College of Engineering University of Florida Gainesville FL 32611 United States;

    Department of Industrial & Systems Engineering Texas A&M University College Station TX 77843 United States;

    Department of Industrial & Systems Engineering Texas A&M University College Station TX 77843 United States;

    Department of Civil and Coastal Engineering Engineering School of Sustainable Infrastructure and Environment (ESSIE) Herbert Wertheim College of Engineering University of Florida Gainesville FL 32611 United States;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Shutdown maintenance training; Virtual reality; Eye-tracking; fNIRS;

    机译:关闭维护培训;虚拟现实;追踪;Fnirs.;

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