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认知负荷对自动驾驶中驾驶员状态和任务表现的影响:引入一种新的方法来确定接管控制后的稳定时间。

Effect of cognitive load on drivers' State and task performance during automated driving: Introducing a novel method for determining stabilisation time following take-over of control.

机构信息

Lotus Cars, Potash Lane, Hethel, Norwich, NR14 8EZ, United Kingdom.

Jaguar Land Rover, Banbury Road, Gaydon, CV35 0RR, United Kingdom.

出版信息

Accid Anal Prev. 2021 Mar;151:105967. doi: 10.1016/j.aap.2020.105967. Epub 2021 Jan 11.

DOI:10.1016/j.aap.2020.105967
PMID:33444868
Abstract

This research paper explores the impact of cognitive load on drivers' physiological state and driving performance during an automated driving to manual control transition scenario, using a driving simulator. Whilst driving in the automated mode, cognitive load was manipulated using the "N-Back" task, which participants engaged with via a visual display. Results suggest that non-optimal levels of workload during the automated driving conditions impair driving performance, especially lateral control of the vehicle, and the magnitude of this impairment varied with increasing cognitive load. In addition to these findings, the present paper introduces a novel method for determining stabilisation times of both driver state and driving performance indicators following a transition of vehicle control. Using this method we demonstrate that mean and standard deviation of lane position impairments were found to take longer to stabilise following transition to manual driving following a higher level of cognitive load during the automated driving period, taking up to 22 s for driving performance to normalise after take-over. In addition, heart rate parameters take between 20 and 30 s to stabilise following a planned take-over request. Finally, this paper demonstrates how the magnitude of cognitive load can be estimated in context of automated driving using physiological measures, captured by consumer electronic devices. We discuss the impact our findings have on the design of SAE Level 3 systems. Relevant suggestions are provided to the research community and automakers working on future implementation of vehicles capable of conditional automation.

摘要

本研究论文探讨了在自动驾驶向手动控制过渡场景中,使用驾驶模拟器,认知负荷对驾驶员生理状态和驾驶性能的影响。在自动驾驶模式下,通过视觉显示器进行“N-Back”任务来操纵认知负荷。结果表明,非最优水平的工作负荷会损害自动驾驶期间的驾驶性能,特别是车辆的横向控制,并且这种损害的程度随着认知负荷的增加而变化。除了这些发现,本文还介绍了一种确定驾驶员状态和驾驶性能指标在车辆控制转换后的稳定时间的新方法。使用这种方法,我们证明了在自动驾驶期间的认知负荷较高的情况下,车道位置损伤的平均值和标准差在手动驾驶后需要更长的时间才能稳定下来,在接管后需要长达 22 秒的时间才能恢复正常。此外,心率参数在计划接管请求后需要 20 到 30 秒才能稳定下来。最后,本文展示了如何使用消费电子产品捕获的生理测量来估计自动驾驶环境下认知负荷的大小。我们讨论了我们的发现对 SAE 级别 3 系统设计的影响。向研究社区和致力于未来实现具备条件自动化的车辆的汽车制造商提供了相关建议。

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