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Design of an Adaptive Human-Machine System Based on Dynamical Pattern Recognition of Cognitive Task-Load

机译:基于认知任务负荷动态模式识别的自适应人机系统设计

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摘要

This paper developed a cognitive task-load (CTL) classification algorithm and allocation strategy to sustain the optimal operator CTL levels over time in safety-critical human-machine integrated systems. An adaptive human-machine system is designed based on a non-linear dynamic CTL classifier, which maps a set of electroencephalogram (EEG) and electrocardiogram (ECG) related features to a few CTL classes. The least-squares support vector machine (LSSVM) is used as dynamic pattern classifier. A series of electrophysiological and performance data acquisition experiments were performed on seven volunteer participants under a simulated process control task environment. The participant-specific dynamic LSSVM model is constructed to classify the instantaneous CTL into five classes at each time instant. The initial feature set, comprising 56 EEG and ECG related features, is reduced to a set of 12 salient features (including 11 EEG-related features) by using the locality preserving projection (LPP) technique. An overall correct classification rate of about 80% is achieved for the 5-class CTL classification problem. Then the predicted CTL is used to adaptively allocate the number of process control tasks between operator and computer-based controller. Simulation results showed that the overall performance of the human-machine system can be improved by using the adaptive automation strategy proposed.
机译:本文开发了一种认知任务负荷(CTL)分类算法和分配策略,以在安全关键的人机集成系统中长期保持最佳操作员CTL水平。基于非线性动态CTL分类器设计了一种自适应人机系统,该系统将一组脑电图(EEG)和心电图(ECG)相关功能映射到一些CTL类。最小二乘支持向量机(LSSVM)用作动态模式分类器。在模拟过程控制任务环境下,对七名志愿者进行了一系列电生理和性能数据采集实验。特定于参与者的动态LSSVM模型被构造为在每个时刻将瞬时CTL分为五类。通过使用局部性保留投影(LPP)技术,将包含56个EEG和ECG相关特征的初始特征集简化为12个显着特征(包括11个EEG相关特征)的集合。对于5类CTL分类问题,总体正确分类率约为80%。然后,将预测的CTL用于在操作员和基于计算机的控制器之间自适应地分配过程控制任务的数量。仿真结果表明,采用提出的自适应自动化策略可以提高人机系统的整体性能。

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