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Boredom and Distraction in Multiple Unmanned Vehicle Supervisory Control

机译:多种无人驾驶车辆监控中的无聊与分心

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Operators currently controlling unmanned aerial vehicles report significant boredom, and such systems will likely become more automated in the future. Similar problems are found in process control, commercial aviation and medical settings. To examine the effect of boredom in such settings, a long-duration low-task-load experiment was conducted. Three low-task-load levels requiring operator input every 10,20 or 30 min were tested in a 4-h study, using a multiple unmanned vehicle simulation environment that leverages decentralized algorithms for sometimes-imperfect vehicle scheduling. Reaction times to system-generated events generally decreased across the 4h, as did participants' ability to maintain directed attention. Overall, the participants spent almost half of the time in a distracted state. The top performer spent the majority of time in directed and divided attention states. Unexpectedly, the second-best participant, only 1% worse than the top performer, was distracted for almost one-third of the experiment, but exhibited a periodic switching strategy, allowing himself to pay just enough attention to assist the automation when needed. Indeed, four of the five top performers were distracted for more than one-third of the time. These findings suggest that distraction due to boring, low-task-load environments can be effectively managed through efficient attention switching. Future work is needed to determine optimal frequency and duration of attention state switches, given various exogenous attributes, as well as individual variability. These findings have implications for the design of and personnel selection for supervisory control systems where operators monitor highly automated systems for long durations with only occasional or rare input.
机译:当前控制无人飞行器的运营商报告说,他们很无聊,并且这种系统将来可能会变得更加自动化。在过程控制,商业航空和医疗环境中也发现了类似的问题。为了检查无聊在这种情况下的影响,进行了长期的低任务负荷实验。在4小时的研究中,使用了多个无人驾驶汽车模拟环境,利用分散算法进行有时不完善的车辆调度,测试了每10、20或30分钟需要操作员输入的三个低任务负荷水平。在整个4小时内,对系统生成事件的反应时间通常会减少,参与者保持定向注意力的能力也会下降。总体而言,参与者在分心状态下花费了将近一半的时间。表现最好的人将大部分时间花费在定向注意力和分散注意力状态上。出乎意料的是,排名第二的参与者(仅比表现最好的参与者差1%)在几乎三分之一的实验中分散了注意力,但表现出周期性的切换策略,从而使自己能够在需要时给予足够的关注以帮助自动化。确实,在五个表现最好的人中,有四个人的注意力分散了三分之一以上。这些发现表明,可以通过有效的注意力切换来有效地管理无聊的低任务负荷环境引起的分心。给定各种外在属性以及个体可变性,需要进一步的工作来确定注意力状态转换的最佳频率和持续时间。这些发现对监督控制系统的设计和人员选择具有影响,在该系统中,操作员只需偶尔或很少的输入就可以长时间监视高度自动化的系统。

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