Driving Aggressively or Conservatively? Investigating the Effects of Automated Vehicle Interaction Type and Road Event on Drivers' Trust and Preferred Driving Style.

adaptive automation automated driving driving aggressiveness trust

Journal

Human factors
ISSN: 1547-8181
Titre abrégé: Hum Factors
Pays: United States
ID NLM: 0374660

Informations de publication

Date de publication:
09 Jun 2023
Historique:
medline: 9 6 2023
pubmed: 9 6 2023
entrez: 9 6 2023
Statut: aheadofprint

Résumé

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. 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. 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. 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. 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. Findings from this study can support future driver- and situation-aware AVs that can adapt their behavior for improved driver-vehicle interaction.

Sections du résumé

OBJECTIVE 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 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 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 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 CONCLUSIONS
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 CONCLUSIONS
Findings from this study can support future driver- and situation-aware AVs that can adapt their behavior for improved driver-vehicle interaction.

Identifiants

pubmed: 37295016
doi: 10.1177/00187208231181199
doi:

Types de publication

Journal Article

Langues

eng

Sous-ensembles de citation

IM

Pagination

187208231181199

Auteurs

Yuni Lee (Y)

Department of Industrial and Systems Engineering, San Jose State University, San Jose, CA, USA.

Miaomiao Dong (M)

Department of Industrial and Systems Engineering, San Jose State University, San Jose, CA, USA.

Vidya Krishnamoorthy (V)

Department of Industrial and Systems Engineering, San Jose State University, San Jose, CA, USA.

Kumar Akash (K)

Honda Research Institute USA, Inc., San Jose, CA, USA.

Teruhisa Misu (T)

Honda Research Institute USA, Inc., San Jose, CA, USA.

Zhaobo Zheng (Z)

Honda Research Institute USA, Inc., San Jose, CA, USA.

Gaojian Huang (G)

Department of Industrial and Systems Engineering, San Jose State University, San Jose, CA, USA.

Classifications MeSH