The Impact of Increasing Autonomy on Training Requirements in a UAV Supervisory Control Task

IF 2.2 Q3 ENGINEERING, INDUSTRIAL
M. Cummings, Lixiao Huang, Haibei Zhu, D. Finkelstein, Ran Wei
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引用次数: 10

Abstract

A common assumption across many industries is that inserting advanced autonomy can often replace humans for low-level tasks, with cost reduction benefits. However, humans are often only partially replaced and moved into a supervisory capacity with reduced training. It is not clear how this shift from human to automation control and subsequent training reduction influences human performance, errors, and a tendency toward automation bias. To this end, a study was conducted to determine whether adding autonomy and skipping skill-based training could influence performance in a supervisory control task. In the human-in-the-loop experiment, operators performed unmanned aerial vehicle (UAV) search tasks with varying degrees of autonomy and training. At the lowest level of autonomy, operators searched images and, at the highest level, an automated target recognition algorithm presented its best estimate of a possible target, occasionally incorrectly. Results were mixed, with search time not affected by skill-based training. However, novices with skill-based training and automated target search misclassified more targets, suggesting a propensity toward automation bias. More experienced operators had significantly fewer misclassifications when the autonomy erred. A descriptive machine learning model in the form of a hidden Markov model also provided new insights for improved training protocols and interventional technologies.
无人机监控任务中自主性增强对训练需求的影响
许多行业的一个普遍假设是,在低级任务中引入高级自治通常可以取代人类,从而降低成本。然而,人类往往只是部分地被取代,并在较少的培训下进入监督能力。目前尚不清楚这种从人类到自动化控制的转变以及随后的培训减少如何影响人类的表现、错误和自动化偏见的倾向。为此,我们进行了一项研究,以确定增加自主权和跳过技能培训是否会影响监督控制任务的表现。在人在环实验中,操作人员执行不同程度的自主性和训练的无人机搜索任务。在最低级别的自治中,操作员搜索图像,在最高级别上,自动目标识别算法对可能的目标进行最佳估计,偶尔会出错。结果好坏参半,搜索时间不受技能培训的影响。然而,经过技能培训和自动目标搜索的新手错误分类了更多的目标,这表明他们倾向于自动化偏见。更有经验的操作员在自动驾驶系统出现错误时的错误分类明显更少。隐马尔可夫模型形式的描述性机器学习模型也为改进训练协议和干预技术提供了新的见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
4.60
自引率
10.00%
发文量
21
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