학술논문

Classification of Automated Lane-Change Styles by Modeling and Analyzing Truck Driver Behavior: A Driving Simulator Study
Document Type
Periodical
Source
IEEE Open Journal of Intelligent Transportation Systems IEEE Open J. Intell. Transp. Syst. Intelligent Transportation Systems, IEEE Open Journal of. 3:772-785 2022
Subject
Transportation
Communication, Networking and Broadcast Technologies
Intelligent vehicles
Decision making
Task analysis
Behavioral sciences
Vehicle safety
Automation
Intelligent transportation systems
human factors
automated driving
human–machine systems
driving styles
Language
ISSN
2687-7813
Abstract
Lane change is a highly demanding driving task. A number of traffic accidents are induced by erroneous maneuvers. An automated lane-change system has the potential to reduce the driver workload and improve driving safety. A challenge is to improve the driver acceptance of the automated system. From the perspective of human factors, an automated system with different styles would improve user acceptance, because drivers could drive with different styles in different driving scenarios. This paper proposes a method to design different lane-change styles for automated driving by analyzing and modeling truck-driver behavior. A truck driving simulator experiment with 12 participants was conducted to identify the driver-model parameters. The lane change styles were classified into three types: aggressive, medium, and conservative. The proposed automated lane-change system was evaluated by another truck driving simulator experiment with the same 12 participants. Moreover, the effects of different lane-change decisionmaking styles on the driver experience and acceptance were evaluated from the perspectives of both the ego truck and surrounding vehicles. The evaluation results demonstrate that different lane-change decisionmaking styles can be distinguished by drivers. Overall, the three styles were evaluated by the human drivers as being safe and reliable. The main contribution of this study is that it provides the insights into the design of an automated driving system with different driving styles. Furthermore, these observations can be applied to commercial automated trucks.