Merging is, in general, a challenging task for both human drivers and autonomous vehicles, especially in dense traffic, because the merging vehicle typically needs to interact with other vehicles to identify or create a gap and safely merge into. In this paper, we consider the problem of autonomous vehicle control for forced merge scenarios. We propose a novel game-theoretic controller, called the Leader-Follower Game Controller (LFGC), in which the interactions between the autonomous ego vehicle and other vehicles with a priori uncertain driving intentions is modeled as a partially observable leader-follower game. The LFGC estimates the other vehicles' intentions online based on observed trajectories, and then predicts their future trajectories and plans the ego vehicle's own trajectory using Model Predictive Control (MPC) to simultaneously achieve probabilistically guaranteed safety and merging objectives. To verify the performance of LFGC, we test it in simulations and with the NGSIM data, where the LFGC demonstrates a high success rate of 97.5% in merging.
翻译:一般说来,合并是人类驾驶员和自主车辆,特别是交通繁忙的车辆的一项艰巨任务,因为合并车辆通常需要与其他车辆互动,以识别或制造缺口,安全合并。在本文件中,我们考虑了强制合并情况下自动控制车辆的问题。我们提议了一个新的游戏理论控制器,称为 " 领导-执行者游戏控制器 " (LFGC),其中自主自驾车与其他具有先验性不确定驾驶意图的车辆之间的相互作用模拟为部分可观测的领先追随者游戏。LFGC根据观察到的轨迹在网上估计其他车辆的意图,然后预测其未来轨迹,并计划使用模型预测控制器(MPC)实现自我驾驶车本身的轨迹,同时实现概率保障的安全和合并目标。为了核查LFGC的性能,我们用模拟和NGSIM数据测试它,其中LFGC显示合并成功率高达97.5%。