Research on lane-changing decision and control of autonomous vehicles based on game theory

Guozhen Li, Wankai Shi
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Abstract

Designing a secure and reliable decision-planning model for vehicle lane changing is of utmost practical significance because it is one of the most frequent driving behaviors and has a substantial impact on the safety of drivers’ lives and property. First, a Gaussian mixed Hidden Markov model (GMHMM) is trained for lane change intention recognition (LCIR), and the results reveal that the model has a great performance. This will simplify the game process and provide drivers and passengers with warnings. Second, the safety, efficiency, and comfort payoffs of vehicle lane changes are taken into account when building the game model. When building the safety payoff function, temporal collision risk and spatial collision risk of vehicles are two of them that are carefully taken into account. After that, the vehicle’s trajectory tracking control is decoupled into lateral LQR + feedforward control and longitudinal dual proportional integral derivative (PID) control based on the Frenet coordinate system. Finally, a vehicle lane change scenario is built for simulation analysis, and the effects of driving comfort factor and driving efficiency factor on lane change results are considered. The results show that the proposed game theory lane change model ensures lane change safety while satisfying human drivers’ requirements for lane change efficiency and comfort.
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基于博弈论的自动驾驶汽车变道决策与控制研究
变道是最常见的驾驶行为之一,对驾驶员的生命财产安全有重大影响,因此设计一种安全可靠的车辆变道决策规划模型具有重要的现实意义。首先,针对变道意图识别(LCIR)训练了一个高斯混合隐马尔可夫模型(GMHMM),结果表明该模型具有很好的性能。这将简化游戏过程,并为驾驶员和乘客提供警告。其次,在建立博弈模型时考虑了车辆变道的安全性、效率和舒适性回报。在建立安全回报函数时,要仔细考虑车辆的时间碰撞风险和空间碰撞风险。然后,基于 Frenet 坐标系,将车辆的轨迹跟踪控制解耦为横向 LQR + 前馈控制和纵向双比例积分导数(PID)控制。最后,建立了车辆变道场景进行仿真分析,并考虑了驾驶舒适度系数和驾驶效率系数对变道结果的影响。结果表明,所提出的博弈论变道模型既能确保变道安全性,又能满足人类驾驶员对变道效率和舒适性的要求。
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