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A Worker's Fitness-for-Duty Status Identification Based on Biosignals to Reduce Human Error in Nuclear Power Plants

机译:基于生物社会的工人的健身状况识别,以减少核电厂的人为错误

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摘要

Human error has been highlighted as main cause of industrial and nuclear accidents. One of the key issues related to human error is a worker's fitness for duty (FFD). FFD refers to the mental and physical ability of employees to safely perform their job. The objective of this study is to investigate the feasibility of identifying a worker's FFD status using biosignals. The FFD statuses examined were with respect to alcohol use, depression, stress, anxiety, and sleep deprivation. Biosignals examined in the study include electrical activity in the brain measured by electroencephalogram and referred to as EEG, electrical activity of the heartbeat measured by electrocardiogram and referred to as ECG, galvanic skin response (GSR), blood volume pulse (BVP), dynamic changes in blood pressure and referred to as BPHEG, and respiration. A total of 114 volunteers participated in the study as experimental subjects from whom biodata were collected during their resting states (eyes closed and eyes open). The steps followed in the study include signal preprocessing, power spectrum feature analysis, important feature selection, and support vector machine (SVM) classification using 5-fold cross validation to identify a worker's FFD status. Among the 70 biosignal indicators, important features were selected by Multivariate Analysis of Variance (MANOVA). The best model developed with the SVM used 64 biosignal indicators and showed a binary (fit or unfit) classification accuracy of 99.4% and a multi-classification accuracy of 97.7%. While limitations of the current work remain, the study indicates the possibility of implementing an effective FFD management program to reduce human error in plant operations. A thumbnail sketch of the study is as follows: 1. To reduce human error in nuclear operations, use of biosignals was investigated to identify FFD status of workers. 2. EEG, ECG, GSR, BVP, BPHEG, and respiration signals were used to identify a worker's FFD status. 3. The SVM-based model was successfully implemented for multi-class and binary-class FFD classification.
机译:人为错误被强调为工业和核事故的主要原因。与人为错误有关的关键问题之一是工人的责任(FFD)的健身。 FFD是指员工安全地执行工作的心理和身体能力。本研究的目的是调查使用生物资料识别工人的FFD状态的可行性。检查的FFD状态是关于酒精使用,抑郁,压力,焦虑和睡眠剥夺的。在该研究中检测的生物关像物包括通过脑电图测量的大脑中的电活动,并被称为EEG,通过心电图测量的心跳的电活动,并称为ECG,电催化皮肤响应(GSR),血容量脉冲(BVP),动态变化在血压和称为Bpheg和呼吸中。共有114名志愿者参与该研究作为在休息状态收集生物数据的实验科目(闭着眼睛和睁眼)。在该研究中遵循的步骤包括使用5倍交叉验证的信号预处理,功率谱特征分析,重要特征选择,以及支持向量机(SVM)分类,以识别工人的FFD状态。在70个生物关键指标中,通过多元差异(MANOVA)选择了重要特征。使用SVM使用64个生物指示器开发的最佳模型,并显示了二进制(适合或不适合)的分类精度为99.4%,多分类准确度为97.7%。虽然目前工作的局限性仍然存在,但该研究表明可能实施有效的FFD管理计划,以减少工厂运营中的人为错误。该研究的缩略图草图如下:1。为了减少核动作机的人类错误,调查了生物资源的使用,以确定工人的FFD状态。 2. EEG,ECG,GSR,BVP,BPHEG和呼吸信号用于识别工人的FFD状态。 3.成功实现了基于SVM的模型,用于多级和二进制类FFD分类。

著录项

  • 来源
    《Nuclear Technology》 |2020年第12期|1840-1860|共21页
  • 作者

    Young A Suh; Man-Sung Yim;

  • 作者单位

    Korea Advanced Institute of Science and Technology Department of Nuclear and Quantum Engineering Nuclear Environment and Nuclear Security Laboratory Daejeon Korea;

    Korea Advanced Institute of Science and Technology Department of Nuclear and Quantum Engineering Nuclear Environment and Nuclear Security Laboratory Daejeon Korea;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);美国《生物学医学文摘》(MEDLINE);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Fitness for duty; biosignals; MANOVA; support vector machine for classification; human error reduction;

    机译:职责的健身;生物社会;马诺瓦;支持向量机进行分类;减少人为错误;

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