论文标题

具有驾驶风格意识的基于学习的酌情换档决策模型

A Learning-based Discretionary Lane-Change Decision-Making Model with Driving Style Awareness

论文作者

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

论文摘要

Distionary Lane Change(DLC)是驾驶的基本但复杂的操作,旨在达到更快的速度或更好的驾驶条件,例如,进一步的视线或更好的骑行质量。尽管已经在交通工程和自动驾驶中研究了许多DLC决策模型,但在现有文献中,人为因素的影响是当前和未来交通流量不可或缺的一部分。在自动驾驶中,对周围车辆的人为因素的无知将导致自我车辆与周围车辆之间的相互作用不佳,因此发生了高的事故风险。人为因素也是模拟交通工程区域中类似人类的交通流量的关键部分。在本文中,我们整合了通过驱动风格来设计新的DLC决策模型所代表的人为因素。具体而言,我们提出的模型不仅要考虑上下文流量信息,而且还要考虑周围车辆的驾驶方式,并做出换车/换取/保留决策。此外,该模型可以通过学习自我车辆的驾驶风格来模仿人类驾驶员的决策动作。我们的评估结果表明,拟议的模型几乎遵循人类决策的动作,该动作可以达到98.66%的预测准确性,以针对人类驾驶员针对地面真理的决策。此外,车道变化的影响分析结果表明,在提高交通的安全性和速度方面,我们的模型甚至比人类驱动程序更好。

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 many DLC decision-making models have been studied in traffic engineering and autonomous driving, the impact of human factors, which is an integral part of current and future traffic flow, is largely ignored in the existing literature. In autonomous driving, the ignorance of human factors of surrounding vehicles will lead to poor interaction between the ego vehicle and the surrounding vehicles, thus, a high risk of accidents. The human factors are also a crucial part to simulate a human-like traffic flow in the traffic engineering area. 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 to the greatest extent by learning the driving style of the ego vehicle. Our evaluation results show that the proposed model almost follows the human decision-making maneuvers, which can achieve 98.66% prediction accuracy with respect to human drivers' decisions against the ground truth. Besides, the lane-change impact analysis results demonstrate that our model even performs better than human drivers in terms of improving the safety and speed of traffic.

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