ROHCSYDec 30, 2020

Analysis of Truck Driver Behavior to Design Different Lane Change Styles in Automated Driving

arXiv:2012.15164v13 citations
AI Analysis

This study addresses the problem of improving driver acceptance of automated lane change systems for commercial truck drivers by offering customizable driving styles.

This paper analyzed truck driver behavior to design three distinct lane change styles (aggressive, medium, conservative) for automated driving systems. A simulator experiment with 12 participants confirmed that drivers could distinguish these styles, and all three were deemed acceptable for safety and reliability.

Lane change is a very demanding driving task and number of traffic accidents are induced by mistaken maneuvers. An automated lane change system has the potential to reduce driver workload and to improve driving safety. One challenge is how to improve driver acceptance on the automated system. From the viewpoint of human factors, an automated system with different styles would improve user acceptance as the drivers can adapt the style to different driving situations. This paper proposes a method to design different lane change styles in automated driving by analysis and modeling of truck driver behavior. A truck driving simulator experiment with 12 participants was conducted to identify the driver model parameters and three lane change styles were classified as the aggressive, medium, and conservative ones. The proposed automated lane change system was evaluated by another truck driving simulator experiment with the same 12 participants. Moreover, the effect of different driving styles on driver experience and acceptance was evaluated. The evaluation results demonstrate that the different lane change styles could be distinguished by the drivers; meanwhile, the three styles were overall evaluated as acceptable on safety issues and reliable by the human drivers. This study provides insight into designing the automated driving system with different driving styles and the findings can be applied to commercial automated trucks.

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