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Modeling the neurodynamic complexity of submarine navigation teams

机译:潜艇导航团队的神经动力学复杂性建模

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Our objective was to apply ideas from complexity theory to derive neuro-physiologic models of Submarine Piloting and Navigation showing how teams cog-nitively organize around changes in the task and how this organization is altered with experience. The cognitive metric highlighted was an electroencephalography (EEG)-derived measure of engagement (termed NS_E) which was modeled into a collective team variable showing the engagement of each of 6 team members as well as the engagement of the team as a whole. We show that during a navigation task the NS_E data stream contains historical information about the cognitive organization of the team and that this organization can be quantified by fluctuations in the Shannon entropy of the data stream. The fluctuations in the NS_E entropy were complex, showing both rapid changes over a period of seconds and longer fluctuations that occurred over periods of minutes. The periods of low NS_E entropy represented moments when the team's cognition had undergone significant re-organization, i.e. when fewer NS_E symbols were being expressed. Decreases in NS_E entropy were associated with periods of poorer team performance as indicated by delays/omissions in the regular determination of the submarine's position; parallel communication data suggested that these were also periods of increased stress. Experienced submarine navigation teams performed better than Junior Officer teams, had higher overall levels of NS_E entropy and appeared more cognitively flexible as indicated by the use of a larger repertoire of available NS_E patterns. The quantitative information in the NS_E entropy may provide a framework for designing future adaptive team training systems as it can be modeled and reported in near real time.
机译:我们的目标是运用来自复杂性理论的思想来推导潜艇航行和导航的神经生理模型,以显示团队如何围绕任务的变化认知地组织以及如何随着经验的变化而变化。突出显示的认知度量是脑电图(EEG)得出的参与度(称为NS_E),该度量建模为集体团队变量,显示了6个团队成员中每个成员的参与度以及整个团队的参与度。我们表明,在导航任务期间,NS_E数据流包含有关团队认知组织的历史信息,并且可以通过数据流的Shannon熵的波动来量化该组织。 NS_E熵的波动非常复杂,既显示了几秒钟内的快速变化,又显示了几分钟内发生的较长波动。 NS_E熵低的时间段代表了团队的认知经历了重大重组的时刻,即表达较少的NS_E符号的时刻。定期确定潜艇位置的延迟/遗漏表明,NS_E熵的下降与团队绩效差的时期有关;并行通信数据表明,这些时期也是压力增加的时期。经验丰富的潜艇导航小组的表现要优于初级军官的小组,NS_E熵的总体水平更高,并且在认知上更加灵活,如使用大量可用NS_E模式所表明的那样。 NS_E熵中的定量信息可以为设计未来的自适应团队训练系统提供框架,因为它可以近实时地建模和报告。

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