Suppr超能文献

多无人机系统仿真中的过载和自动化依赖:任务需求和个体差异因素。

Overload and automation-dependence in a multi-UAS simulation: Task demand and individual difference factors.

机构信息

Institute for Simulation and Training.

Air Force Research Laboratory.

出版信息

J Exp Psychol Appl. 2020 Jun;26(2):218-235. doi: 10.1037/xap0000248. Epub 2019 Oct 17.

Abstract

Future unmanned aerial systems (UAS) operations will require control of multiple vehicles. Operators are vulnerable to cognitive overload, despite support from system automation. This study tested whether attentional resource theory predicts impacts of cognitive demands on performance measures, including automation-dependence and stress. It also investigated individual differences in response to demands. One-hundred and 1 university student participants performed a multi-UAS simulation mission incorporating 2 surveillance tasks. Cognitive demands and level of automation (LOA) of key tasks were manipulated between-subjects. Results were partially consistent with predictions. Higher task demands impaired performance and elevated distress and workload, as expected. Higher LOA produced greater dependence on automation, but failed to mitigate workload. It was expected that, as the automation was quite reliable, participants would attempt to conserve resources by depending more on automation under high demand. In fact, the opposite tendency was observed. Individuals high in conscientiousness were especially likely to override the automation under high demand, apparently taking charge personally. Neuroticism and distress were also associated with performance, but results did not fit a resource theory interpretation. Thus, understanding impacts of overload in the multi-UAS context requires understanding operator strategy as well as resource insufficiency. Findings have implications for system design, and operator selection and training. (PsycInfo Database Record (c) 2020 APA, all rights reserved).

摘要

未来的无人航空系统 (UAS) 操作将需要控制多架飞行器。尽管有系统自动化的支持,操作人员仍容易受到认知过载的影响。本研究测试了注意资源理论是否可以预测认知需求对性能指标的影响,包括对自动化的依赖和压力。它还研究了对需求的个体差异的反应。101 名大学生参与者执行了一项多 UAS 模拟任务,其中包含 2 项监视任务。在被试间操纵认知需求和关键任务的自动化水平 (LOA)。结果部分符合预测。正如预期的那样,较高的任务需求会降低绩效,并增加压力和工作量。较高的 LOA 会导致对自动化的更大依赖,但未能减轻工作量。预计,由于自动化非常可靠,参与者在高需求下会试图通过更多地依赖自动化来节省资源。但实际上,观察到的趋势恰恰相反。尽责性较高的个体在高需求下尤其可能会超越自动化,显然会亲自负责。神经质和压力也与绩效相关,但结果不符合资源理论的解释。因此,要了解多 UAS 环境中的过载影响,需要了解操作员的策略以及资源不足。研究结果对系统设计以及操作员的选择和培训具有启示意义。(PsycInfo 数据库记录(c)2020 APA,保留所有权利)。

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验