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An Investigation of Speech Features, Plant System Alarms, and Operator-System Interaction for the Classification of Operator Cognitive Workload During Dynamic Work

机译:动态工作过程中操作员认知工作量分类的语音特征,工厂系统报警和操作员系统交互的调查

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Objective To investigate speech features, human–machine alarms, and operator–system interaction for the estimation of cognitive workload in full-scale realistic simulated scenarios. Background Theories and models of cognitive workload are critical for the design and evaluation of human–machine systems. Unfortunately, there are very few nonintrusive cognitive workload measures available for realistic dynamic human–machine interaction. Method The study was conducted in a full-scope control room research simulator of an advanced nuclear reactor. Six crews, each consisting of three operators, participated in 12 scenarios. The operators rated their workload every second minute. Machine learning algorithms were trained to estimate operators’ workload based on crew communication, operator–system interaction, and system alarms. Results Random Forest (RF) utilizing speech and system features achieved an accuracy of 67% on test data. Utilizing speech features only, the accuracy achieved was 63%. The most important speech features were pitch, amplitude, and articulation rate. A 61% accuracy was achieved when alarms and operator–system interaction features were used. The most important features were the number of alarms and amount of operator–system interaction. Accuracy for algorithms trained for each operator ranged from 39% to 98%, with an average of 72%. For a majority of analyses performed, RF and extreme gradient boosting (XGB) outperformed other algorithms. Conclusion The results demonstrate that the features investigated and machine learning models developed provide a potential for the dynamic nonintrusive measurement of cognitive workload. Application The approach presented can be developed for nonintrusive workload measurement in real-world human–machine applications, simulator-based training, and research.
机译:目的探讨语音特征,人机报警和操作员系统交互,以估计认知工作量,以满量程的逼真模拟场景。背景技术认知工作量的理论和模型对于人机系统的设计和评估至关重要。不幸的是,有很少的非流体认知工作负载措施可用于现实的动态人机交互。该研究在先进的核反应堆的全范围控制室研究模拟器中进行。六名船员,每个人由三个运营商组成,参加了12个情景。操作员每隔一分钟评定其工作量。根据机组通信,操作员 - 系统交互和系统警报,机器学习算法训练以估计运算符的工作负载。结果随机森林(RF)利用语音和系统特征在测试数据上实现了67%的准确性。仅利用语音特征,所达到的准确性为63%。最重要的语音特征是音高,振幅和铰接率。使用警报和操作员系统交互功能时,实现了61%的准确性。最重要的功能是报警数量和操作员系统交互的数量。每个操作员培训的算法精度范围为39%至98%,平均为72%。对于大多数分析,RF和极端梯度升压(XGB)优于其他算法。结论结果表明,调查和机器学习模型的特征为认知工作量的动态非流程测量提供了一种潜力。应用程序可以在现实世界的人机应用中的非目的工作负载测量,基于模拟器的培训和研究中开发出呈现的方法。

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