RIM: Robust Intersection Management for Connected Autonomous Vehicles

M. Khayatian, Mohammadreza Mehrabian, Aviral Shrivastava
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引用次数: 33

Abstract

Utilizing intelligent transportation infrastructures can significantly improve the throughput of intersections of Connected Autonomous Vehicles (CAV), where an Intersection Manager (IM) assigns a target velocity to incoming CAVs in order to achieve a high throughput. Since the IM calculates the assigned velocity for a CAV based on the model of the CAV, it's vulnerable to model mismatches and possible external disturbances. As a result, IM must consider a large safety buffer around all CAVs to ensure a safe scheduling, which greatly degrades the throughput. In addition, IM has to assign a relatively lower speed to CAVs that intend to make a turn at the intersection to avoid rollover. This issue reduces the throughput of the intersection even more. In this paper, we propose a space and time-aware technique to manage intersections of CAVs that is robust against external disturbances and model mismatches. In our method, RIM, IM is responsible for assigning a safe Time of Arrival (TOA) and Velocity of Arrival (VOA) to an approaching CAV such that trajectories of CAVs before and inside the intersection does not conflict. Accordingly, CAVs are responsible for determining and tracking an optimal trajectory to reach the intersection at the assigned TOA while driving at VOA. Since CAVs track a position trajectory, the effect of bounded model mismatch and external disturbances can be compensated. In addition, CAVs that intend to make a turn at the intersection do not need to drive at a slow velocity before entering the intersection. Results from conducting experiments on a 1/10 scale intersection of CAVs show that RIM can reduce the position error at the expected TOA by 18X on average in presence of up to 10% model mismatch and an external disturbance with an amplitude of 5% of max range. In total, our technique can achieve 2.7X better throughput on average compared to velocity assignment techniques.
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RIM:面向互联自动驾驶汽车的稳健交叉口管理
利用智能交通基础设施可以显著提高互联自动驾驶汽车(CAV)的交叉口吞吐量,其中交叉口管理器(IM)为进入的CAV分配目标速度,以实现高吞吐量。由于IM基于CAV的模型计算CAV的分配速度,因此容易受到模型不匹配和可能的外部干扰的影响。因此,IM必须在所有cav周围考虑一个大的安全缓冲区,以确保安全调度,这大大降低了吞吐量。此外,为了避免翻车,IM必须给想要在十字路口转弯的自动驾驶汽车分配一个相对较低的速度。这个问题进一步降低了交叉口的吞吐量。在本文中,我们提出了一种空间和时间感知技术来管理cav的交叉点,该技术对外部干扰和模型不匹配具有鲁棒性。在我们的方法中,RIM, IM负责为接近的CAV分配安全到达时间(TOA)和到达速度(VOA),以使交叉口前和交叉口内的CAV轨迹不冲突。因此,自动驾驶汽车负责确定和跟踪最优轨迹,以在指定的TOA到达路口,同时以VOA速度行驶。由于cav跟踪位置轨迹,可以补偿有界模型失配和外部干扰的影响。此外,打算在十字路口转弯的自动驾驶汽车在进入十字路口之前不需要以低速行驶。在1/10尺度的cav交叉口上进行的实验结果表明,在存在高达10%的模型失配和幅度为最大范围5%的外部干扰的情况下,RIM可以将预期TOA处的位置误差平均降低18X。总的来说,与速度分配技术相比,我们的技术平均可以实现2.7倍的吞吐量。
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