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Electroencephalography-Based Intention Monitoring to Support Nuclear Operators' Communications for Safety-Relevant Tasks

机译:基于脑电图的意图监控,支持核运营商的安全相关任务通信

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摘要

The safe operation of a nuclear power plant (NPP) can be guaranteed through the team effort of operators in the main control room (MCR). Among the various features, peer checks, concurrent verification, independent verification, and communication reconfirmation are major contributors to effective operations in the MCR. In the digital MCR environment of advanced NPPs, there are potential emerging issues of concern related to these contributors resulting from the use of PC-soft controls for reactor operations. The objective of this study is to investigate the development of quantitative indicators for estimating the implicit intentions of reactor operators as a way to mitigate such concerns. The proposed quantitative indicators support peer checks and concurrent/independent verifications for diagnosing and preventing human errors through communication enhancement in a digital technology-based MCR. A machine learning-based algorithm was used to classify two implicit intentions of agreement and disagreement. The classification was based on electroencephalogra-phy data measured from human subjects while they performed mock operational tasks using soft controls. The mock operational tasks were based on using a Windows-based nuclear plant performance analyzer (Win-NPA). Statistical analysis was performed on the measured data to identify significant differences between the agreement and disagreement judgments by the operators. An average classification accuracy of 72% was achieved by using a support vector machine classifier for the Win-NPA task with a low number of features across the various Brodmann areas. The methodology proposed in this study may also serve to enhance communications in conventional MCRs for human error minimization.
机译:通过主控制室(MCR)的运营商的团队努力,可以保证核电厂(NPP)的安全操作。在各种特征,对等体检查,并发验证,独立验证和通信重新确认中是MCR中有效操作的主要贡献者。在高级NPP的数字MCR环境中,潜在的新出现问题与这些贡献者相关的关注问题,这些贡献者是由于使用PC-Suft Controls进行反应堆操作而导致的这些贡献者。本研究的目的是调查估计反应堆运营商隐含意图的定量指标的发展,作为减轻此类问题的方法。建议的定量指标支持通过基于数字技术的MCR中的沟通增强来诊断和预防人类错误的同行检查和同时/独立的验证。基于机器学习的算法用于对协议和分歧的两个隐含意图进行分类。分类基于使用软控制执行模拟操作任务的人类受试者测量的脑电图数据。模拟操作任务是基于使用基于Windows的核植物性能分析仪(Win-NPA)。对测量数据进行统计分析,以确定经营者协议与分歧判决之间的显着差异。通过使用各种Brodmann区域的特征数量低的Win-NPA任务来实现72%的平均分类准确度。本研究中提出的方法还可用于增强常规MCR的通信,用于最小化人类误差。

著录项

  • 来源
    《Nuclear Technology》 |2021年第11期|1753-1767|共15页
  • 作者单位

    Korea Advanced Institute of Science and Technology Department of Nuclear and Quantum Engineering Daejeon 34141 Republic of Korea;

    Korea Advanced Institute of Science and Technology Department of Nuclear and Quantum Engineering Daejeon 34141 Republic of Korea;

    Korea Atomic Energy Research Institute Daejeon 34057 Republic of Korea;

    Korea Advanced Institute of Science and Technology Department of Nuclear and Quantum Engineering Daejeon 34141 Republic of 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

    Human error; electroencephalography; nuclear safety; implicit intention; machine learning;

    机译:人为错误;脑电图;核安全;隐含意图;机器学习;

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