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New real-time methods for operator situational awareness retrieval and higher process safety in the control room

机译:在控制室中获取操作员态势感知的新实时方法和更高的过程安全性

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Objective: To evaluate the application of a Deep Learning based emotion recognition system for detecting operator stress, where operator stress is a proxy for Situation Awareness (SA) changes during abnormal/contingency situation management and decision making. Background: When operators are overwhelmed by stress, their perceptions, thinking, and judgments are impaired, increasing the chance of misinterpretation of events and increasing the potential for human error. The "intelligent control room" has been proposed as a possible solution for helping operators to deal with such stress. The control room comprises a variety of components used to monitor the operator and infrastructure under his/her control in an effort to optimize the performance of the human-technical system as a whole. A critical component of this control room solution is the provision of human monitoring and assessment data in order to determine the operator's situation awareness. Methods: An emotion recognition system is designed based on two Deep Learning models, the Bidirectional Long Short Term Memory network (BiD-LSTM) and the Deep Convolutional Neural Network (DCNN), in order to process audio and facial data respectively. The system is first validated against a standard corpus of expert-coded emotion data. Post-validation, a dataset of expert-coded user stress data is coded by the system for emotional valence, and these system-generated emotional readings are compared to the expert-coded stress markers to determine any significant correlations. Contribution: This research contributes to developing the idea of intelligent and automated decision-making support in situational awareness measurement systems. Such systems support users by real-time collecting and processing data, and assist decision-making based on operator behavioral patterns.
机译:目的:评估基于深度学习的情绪识别系统在检测操作员压力中的应用,其中操作员压力是异常/应急情况管理和决策过程中情况意识(SA)变化的代理。背景:当操作员不堪重负时,他们的感知,思维和判断力将受到损害,从而增加了对事件进行误解的机会,并增加了人为错误的可能性。已经提出了“智能控制室”作为可能的解决方案,以帮助操作员应对这种压力。控制室包括各种组件,用于在其控制下监视操作员和基础设施,以优化整个人类技术系统的性能。该控制室解决方案的关键组成部分是提供人工监控和评估数据,以确定操作员的情况意识。方法:基于双向深度短期记忆网络(BiD-LSTM)和深度卷积神经网络(DCNN)两种深度学习模型,设计了一种情感识别系统,以便分别处理音频和面部数据。该系统首先针对专家编码的情绪数据的标准语料库进行了验证。验证后,专家编码的用户压力数据的数据集由系统进行情绪价编码,并将这些系统生成的情绪读数与专家编码的压力标记进行比较,以确定任何重要的相关性。贡献:这项研究有助于发展态势感知测量系统中智能和自动化决策支持的概念。这样的系统通过实时收集和处理数据来支持用户,并基于操作员的行为模式协助决策。

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