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A Learning-Based Discretionary Lane-Change Decision-Making Model With Driving Style Awareness

Yifan Zhang, Qian Xu, Jianping Wang, Kui Wu, Zuduo Zheng, Kejie Lu

2022IEEE Transactions on Intelligent Transportation Systems84 citationsDOI

Abstract

Discretionary lane change (DLC) is a basic but complex maneuver in driving, which aims at reaching a faster speed or better driving conditions, e.g., further line of sight or better ride quality. Although modeling DLC decision-making has been studied for years, the impact of human factors, which is crucial in accurately modelling human DLC decision-making strategies, is largely ignored in the existing literature. In this paper, we integrate the human factors that are represented by driving styles to design a new DLC decision-making model. Specifically, our proposed model takes not only the contextual traffic information but also the driving styles of surrounding vehicles into consideration and makes lane-change/keep decisions. Moreover, the model can imitate human drivers’ decision-making maneuvers by learning the driving style of the ego vehicle. Our evaluation results show that the proposed model captures the human decision-making strategies and imitates human drivers’ lane-change maneuvers, which can achieve 98.66% prediction accuracy. Moreover, we also analyze the lane-change impact of our model compared with human drivers in terms of improving the safety and speed of traffic.

Topics & Concepts

Style (visual arts)Computer sciencePolicy learningHuman–computer interactionTransport engineeringEngineeringMachine learningArchaeologyHistoryTraffic control and managementAutonomous Vehicle Technology and SafetyTransportation Planning and Optimization
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