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A human workload assessment algorithm for collaborative human-machine teams

机译:合作人员团队的人力工作量评估算法

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Mass casualty events caused by a biological weapon require fully capable first response teams. However, human first responders are equipped with protective gear, which limits their capabilities to complete tasks. Robots can be employed to work collaboratively with the first responders in order to augment the human's reduced abilities. The robot needs to understand and adapt to the human's workload level in order for the human-machine team to effectively complete tasks. The automatic detection of human workload levels can provide valuable insight into the human's capabilities, as workload has a direct relationship with task performance. The robot can monitor the objective metrics of the human's workload level in order to accurately estimate workload via a workload assessment algorithm. The algorithm must be able to assess overall workload and the components of workload, in order for the robot to correctly adapt its interactions or reallocate tasks among the team. A novel workload assessment algorithm that provides an accurate estimate of overall workload and each workload component is presented and evaluated. The algorithm is capable of distinguishing between high and low workload conditions; however, the algorithm's workload values correlate poorly to a generated workload model. Modifications to enhance the algorithm's capabilities are discussed and will be investigated in future work.
机译:由生物武器引起的大规模伤亡事件需要完全有能力的第一队。然而,人类的第一响应者配备了保护齿轮,限制了它们的能力来完成任务。机器人可以用来与第一响应者协作地协同工作,以增加人类的减少能力。机器人需要了解并适应人类的工作量水平,以便为人机团队有效地完成任务。人类工作量水平的自动检测可以为人类的能力提供有价值的洞察力,因为工作量与任务性能有直接关系。机器人可以监控人类工作量水平的客观度量,以便通过工作负载评估算法准确估计工作负载。该算法必须能够评估整体工作量和工作量的组件,以便机器人正确调整其在团队中的交互或重新分配任务。提出和评估了一种新颖的工作量评估算法,提供了对整个工作量的准确估计和每个工作负载组件。该算法能够区分高和低工作量;但是,算法的工作负载值与生成的工作负载模型相关不良。讨论了提高算法的能力的修改,并将在将来的工作中进行调查。

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