Deadlock Resolution for Intelligent Intersection Management with Changeable Trajectories

Li-Heng Lin, Kuan-Chun Wang, Ying-Hua Lee, Kai-En Lin, Chung-Wei Lin, I. Jiang
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Abstract

Intelligent intersection management aims to schedule vehicles so that vehicles can pass through an intersection efficiently and safely. However, inaccurate control, imperfect communication, and malicious information or behavior lead to robustness issues of intelligent intersection management. In this work, we focus on improving robustness against deadlocks by changing the trajectories of vehicles. To guarantee the resolvability of deadlocks, we limit the number of vehicles in an intersection to be smaller than or equal to an intersection-specific value called the maximal deadlock-free load. We develop an algorithm to compute the maximal deadlock-free load. We further reduce the computation time by computing the loads which are pessimistic (smaller) but still deadlock-free. Since the maximal deadlock-free load only depends on the given intersection, it can be integrated with different scheduling algorithms. Experimental results demonstrate that, by changing the trajectories of vehicles and limiting the number of vehicles under maximal deadlock-free loads, our approach can guarantee deadlock-freeness and maintain good traffic efficiency.
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可变轨迹智能交叉口管理的死锁解析
智能交叉口管理的目的是对车辆进行调度,使车辆能够高效、安全地通过交叉口。然而,由于控制不准确、通信不完善以及恶意信息或行为,导致智能交叉口管理存在鲁棒性问题。在这项工作中,我们专注于通过改变车辆的轨迹来提高对死锁的鲁棒性。为了保证死锁的可解决性,我们将十字路口的车辆数量限制为小于或等于一个特定于十字路口的值,称为最大无死锁负载。我们开发了一种算法来计算最大无死锁负载。我们通过计算悲观(较小)但仍然无死锁的负载来进一步减少计算时间。由于最大无死锁负载只依赖于给定的交叉口,因此可以与不同的调度算法相结合。实验结果表明,该方法通过改变车辆运行轨迹和限制最大无死锁载荷下的车辆数量,既能保证无死锁,又能保持良好的交通效率。
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