Wu Yu, Yao Xiaoyu, Deng Fenghui, Yuan Xiaofang
School of Art and Design, Wuhan University of Technology, Wuhan, China.
College of Design and Innovation, TongJi University, Shanghai, China.
Hum Factors. 2025 May;67(5):427-444. doi: 10.1177/00187208241278433. Epub 2024 Aug 30.
ObjectiveThis study investigated the effects of four takeover request (TOR) times and seven warning modalities on performance and trust in automated driving on a mildly congested urban road scenario, as well as the relationship between takeover performance and trust.BackgroundTakeover is crucial in L3 automated driving, where human-machine codriving is employed. Establishing trust in takeover scenarios among drivers can enhance the acceptance of autonomous vehicles, thereby promoting their widespread adoption.MethodUsing a driving simulator, data from 28 participants, including collision counts, takeover time (ToT), electrodermal activity (EDA) data, and self-reported trust scores, were collected and analyzed primarily using Generalized Linear Mixed Models (GLMM).ResultsCollisions during the takeover undermined participants' trust in the autonomous driving system. As TOR time increased, participants' trust improved, and the longer TOR time did not lead to participant confusion. There was no significant relationship between warning modality and trust. Furthermore, the combination of three warning modalities did not exhibit a notable advantage over the combination of two modalities.ConclusionThe study examined the effects of TOR time and warning modality on trust, as well as preliminarily explored the potential association between takeover performance, including collisions and ToT, and trust in autonomous driving takeovers.ApplicationResearchers and designers of automotive interactions were given referenceable TOR time and warning modality by this study, which extended the autonomous driving takeover scenarios. These findings contributed to boosting drivers' confidence in transferring control to the automated system.
目的
本研究调查了在轻度拥堵的城市道路场景中,四种接管请求(TOR)时间和七种警告方式对自动驾驶性能和信任度的影响,以及接管性能与信任度之间的关系。
背景
在采用人机协同驾驶的L3级自动驾驶中,接管至关重要。在驾驶员中建立对接管场景的信任可以提高对自动驾驶车辆的接受度,从而促进其广泛应用。
方法
使用驾驶模拟器,收集了28名参与者的数据,包括碰撞次数、接管时间(ToT)、皮肤电活动(EDA)数据和自我报告的信任分数,并主要使用广义线性混合模型(GLMM)进行分析。
结果
接管过程中的碰撞削弱了参与者对自动驾驶系统的信任。随着TOR时间增加,参与者的信任度提高,且较长的TOR时间不会导致参与者困惑。警告方式与信任度之间没有显著关系。此外,三种警告方式的组合相较于两种警告方式的组合没有显著优势。
结论
本研究考察了TOR时间和警告方式对信任度的影响,并初步探索了包括碰撞和ToT在内的接管性能与自动驾驶接管信任度之间的潜在关联。
应用
本研究为汽车交互的研究人员和设计师提供了可参考的TOR时间和警告方式,扩展了自动驾驶接管场景。这些发现有助于增强驾驶员将控制权转移给自动化系统的信心。