一种考虑攻击性驾驶行为的自动驾驶汽车强化学习决策系统

Liuwang Kang, Haiying Shen
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引用次数: 3

摘要

随着自动驾驶汽车技术的快速发展和自动驾驶汽车可能在不久的将来普及,自动驾驶汽车与其周围的人类驾驶车辆在同一条道路上行驶的混合车辆类型的驾驶环境将长期存在并持续下去。自动驾驶汽车实时测量其驾驶环境,并做出控制决策,以确保驾驶安全。然而,在实践中,周围的人类驾驶车辆可能会出现攻击性驾驶行为(如突然减速、突然加速、突然左右变道),这就需要自动驾驶汽车做出正确的控制决策,以消除攻击性驾驶行为对其驾驶安全的影响。本文提出了一种基于强化学习的决策系统(red),该系统在决策过程中考虑了周围人类驾驶车辆的攻击性驾驶行为。在red中,我们首先构建了一种基于混合密度网络的攻击性驾驶行为检测方法,检测自动驾驶汽车周围车辆之间可能存在的攻击性驾驶行为,然后基于攻击性驾驶行为检测结果构建奖励函数,并将奖励函数纳入强化学习模型,考虑攻击性驾驶行为做出最优控制决策。我们使用来自美国交通部联邦公路管理局的真实交通数据集,与最先进的方法相比,评估了red的最优控制决策确定性能。对比结果表明,与现有方法相比,该方法可将最优控制决策成功率提高43%,表明该方法具有较好的最优控制决策确定性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Reinforcement Learning based Decision-making System with Aggressive Driving Behavior Consideration for Autonomous Vehicles
With the fast development of autonomous vehicle (AV) technology and possible popularity of AVs in the near future, a mixed-vehicle type driving environment where both AVs and their surrounding human-driving vehicles drive on the same road will exist and last for a long time. An AV measures its driving environments in real time and make control decisions to ensure driving safety. However, surrounding human-driving vehicles may conduct aggressive driving behaviors (e.g., sudden deceleration, sudden acceleration, sudden left or right lane change) in practice, which requires an AV to make correct control decisions to eliminate the effect of aggressive driving behaviors on its driving safety. In this paper, we propose a reinforcement learning based decision-making system (ReDS) which considers aggressive driving behaviors of surrounding human-driving vehicles during the decision making process. In ReDS, we firstly build a mixture density network based aggressive driving behavior detection method to detect possible aggressive driving behaviors among surrounding vehicles of an AV. We then build a reward function based on aggressive driving behavior detection results and incorporate the reward function into a reinforcement learning model to make optimal control decisions considering aggressive driving behaviors. We use a real-world traffic dataset from the United States Department of Transportation Federal Highway Administration to evaluate optimal control decision determination performance of ReDS in comparison with the state-of-the-art methods. The comparison results show that ReDS can improve optimal control decision success rate by 43% compared with existing methods, which demonstrates that ReDS has good optimal control decision determination performance.
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