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Subjective Workload Assessment Technique (SWAT) in Real Time: Affordable Methodology to Continuously Assess Human Operators’ Workload

机译:主体工作量评估技术(SWAT)实时:经济实惠的方法,以不断评估人类运营商的工作量

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Real-time continuous workload assessment is important for researchers and developers of tools that aim to reduce human operators’ cognitive workload, especially in dynamic environments, as the military environment, where task demands and workload change rapidly. Most workload measurement techniques provide a single retrospective value or require expensive high-end sensing equipment. This study aimed to introduce an affordable continuous machine learning (ML) based workload assessment tool, that can provide real-time workload scores. Using experienced military unmanned aerial vehicle (UAV) operators in a simulated operational setting, muscle behavior represented by their interaction with a joystick was modeled to predict Subjective Workload Assessment Technique (SWAT) scores. Data were obtained from six professional participants. Four machine learning (ML) modeling methodologies were tested on each participant’s data. It has been shown that after running an ML setup phase for each participant, an already in use available tool as the UAV joystick controller can be used to predict SWAT scores at any given time. By implementing the approach presented in this study, researchers can more accurately evaluate various aspects of the human operator’s cognitive workload, and developers can evaluate the progression of their solutions on operators’ cognitive workload over time.
机译:实时持续工作量评估对于工具的研究人员和开发人员来说很重要,旨在减少人类运营商的认知工作量,特别是在动态环境中,作为军事环境,任务需求和工作量迅速变化。大多数工作负载测量技术提供单个回顾性值或需要昂贵的高端传感设备。本研究旨在引入基于实惠的工作负载评估工具的实惠的连续机器学习(ML),可以提供实时工作量分数。在模拟操作环境中使用经验丰富的军事无人驾驶飞行器(UAV)操作员,通过与操纵杆的互动表示的肌肉行为被建模以预测主观工作量评估技术(SWAT)得分。数据是从六位专业参与者获得的。在每个参与者的数据上测试了四种机器学习(ML)建模方法。已经表明,在为每个参与者运行ML设置阶段之后,已经使用了一个已使用的可用工具,因为UAV操纵杆控制器可用于在任何给定时间预测SWAT分数。通过实施本研究中呈现的方法,研究人员可以更准确地评估人类操作员的认知工作量的各个方面,开发人员可以随着时间的推移评估他们对运营商的认知工作量的解决方案的进展。

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