{"title":"积极驾驶还是保守驾驶?研究自动驾驶车辆交互类型和道路事件对驾驶员信任度和首选驾驶方式的影响。","authors":"Yuni Lee, Miaomiao Dong, Vidya Krishnamoorthy, Kumar Akash, Teruhisa Misu, Zhaobo Zheng, Gaojian Huang","doi":"10.1177/00187208231181199","DOIUrl":null,"url":null,"abstract":"<p><strong>Objective: </strong>This study aimed to investigate the impact of automated vehicle (AV) interaction mode on drivers' trust and preferred driving styles in response to pedestrian- and traffic-related road events.</p><p><strong>Background: </strong>The rising popularity of AVs highlights the need for a deeper understanding of the factors that influence trust in AV. Trust is a crucial element, particularly because current AVs are only partially automated and may require manual takeover; miscalibrated trust could have an adverse effect on safe driver-vehicle interaction. However, before attempting to calibrate trust, it is vital to comprehend the factors that contribute to trust in automation.</p><p><strong>Methods: </strong>Thirty-six individuals participated in the experiment. Driving scenarios incorporated adaptive SAE Level 2 AV algorithms, driven by participants' event-based trust in AVs and preferences for AV driving styles. The study measured participants' trust, preferences, and the number of takeover behaviors.</p><p><strong>Results: </strong>Higher levels of trust and preference for more aggressive AV driving styles were found in response to pedestrian-related events compared to traffic-related events. Furthermore, drivers preferred the trust-based adaptive mode and had fewer takeover behaviors than the preference-based adaptive and fixed modes. Lastly, participants with higher trust in AVs favored more aggressive driving styles and made fewer takeover attempts.</p><p><strong>Conclusion: </strong>Adaptive AV interaction modes that depend on real-time event-based trust and event types may represent a promising approach to human-automation interaction in vehicles.</p><p><strong>Application: </strong>Findings from this study can support future driver- and situation-aware AVs that can adapt their behavior for improved driver-vehicle interaction.</p>","PeriodicalId":56333,"journal":{"name":"Human Factors","volume":" ","pages":"2166-2178"},"PeriodicalIF":2.9000,"publicationDate":"2024-09-01","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Driving Aggressively or Conservatively? 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However, before attempting to calibrate trust, it is vital to comprehend the factors that contribute to trust in automation.</p><p><strong>Methods: </strong>Thirty-six individuals participated in the experiment. Driving scenarios incorporated adaptive SAE Level 2 AV algorithms, driven by participants' event-based trust in AVs and preferences for AV driving styles. The study measured participants' trust, preferences, and the number of takeover behaviors.</p><p><strong>Results: </strong>Higher levels of trust and preference for more aggressive AV driving styles were found in response to pedestrian-related events compared to traffic-related events. Furthermore, drivers preferred the trust-based adaptive mode and had fewer takeover behaviors than the preference-based adaptive and fixed modes. 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引用次数: 0
摘要
目的:本研究旨在调查自动驾驶汽车(AV)交互模式对驾驶员在应对行人和交通相关道路事件时的信任度和首选驾驶方式的影响:本研究旨在调查自动驾驶汽车(AV)交互模式对驾驶员信任度的影响,以及驾驶员在应对行人和交通相关道路事件时的首选驾驶方式:背景:随着自动驾驶汽车的日益普及,人们需要更深入地了解影响对自动驾驶汽车信任的因素。信任是一个至关重要的因素,特别是因为目前的自动驾驶汽车只是部分自动化,可能需要人工接管;错误的信任可能会对驾驶员与车辆的安全互动产生不利影响。然而,在尝试校准信任度之前,了解促成对自动驾驶信任的因素至关重要:36人参加了实验。驾驶场景包含自适应 SAE 2 级自动驾驶算法,由参与者基于事件对自动驾驶汽车的信任和对自动驾驶汽车驾驶风格的偏好驱动。研究测量了参与者的信任度、偏好和接管行为的数量:结果:与交通相关事件相比,行人相关事件中的信任度更高,对更具侵略性的自动驾驶汽车驾驶风格的偏好也更高。此外,与基于偏好的自适应模式和固定模式相比,驾驶者更喜欢基于信任的自适应模式,接管行为也更少。最后,对自动驾驶汽车信任度较高的驾驶者倾向于更激进的驾驶方式,并尝试更少的接管行为:结论:依赖于基于实时事件的信任和事件类型的自适应 AV 交互模式可能是一种很有前途的车内人机交互方法:应用:本研究的结果可为未来的驾驶员和情况感知型自动驾驶汽车提供支持,使其能够调整自己的行为,从而改善驾驶员与车辆之间的互动。
Driving Aggressively or Conservatively? Investigating the Effects of Automated Vehicle Interaction Type and Road Event on Drivers' Trust and Preferred Driving Style.
Objective: This study aimed to investigate the impact of automated vehicle (AV) interaction mode on drivers' trust and preferred driving styles in response to pedestrian- and traffic-related road events.
Background: The rising popularity of AVs highlights the need for a deeper understanding of the factors that influence trust in AV. Trust is a crucial element, particularly because current AVs are only partially automated and may require manual takeover; miscalibrated trust could have an adverse effect on safe driver-vehicle interaction. However, before attempting to calibrate trust, it is vital to comprehend the factors that contribute to trust in automation.
Methods: Thirty-six individuals participated in the experiment. Driving scenarios incorporated adaptive SAE Level 2 AV algorithms, driven by participants' event-based trust in AVs and preferences for AV driving styles. The study measured participants' trust, preferences, and the number of takeover behaviors.
Results: Higher levels of trust and preference for more aggressive AV driving styles were found in response to pedestrian-related events compared to traffic-related events. Furthermore, drivers preferred the trust-based adaptive mode and had fewer takeover behaviors than the preference-based adaptive and fixed modes. Lastly, participants with higher trust in AVs favored more aggressive driving styles and made fewer takeover attempts.
Conclusion: Adaptive AV interaction modes that depend on real-time event-based trust and event types may represent a promising approach to human-automation interaction in vehicles.
Application: Findings from this study can support future driver- and situation-aware AVs that can adapt their behavior for improved driver-vehicle interaction.
期刊介绍:
Human Factors: The Journal of the Human Factors and Ergonomics Society publishes peer-reviewed scientific studies in human factors/ergonomics that present theoretical and practical advances concerning the relationship between people and technologies, tools, environments, and systems. Papers published in Human Factors leverage fundamental knowledge of human capabilities and limitations – and the basic understanding of cognitive, physical, behavioral, physiological, social, developmental, affective, and motivational aspects of human performance – to yield design principles; enhance training, selection, and communication; and ultimately improve human-system interfaces and sociotechnical systems that lead to safer and more effective outcomes.