具有有限风险的自动驾驶与人类驾驶车辆事故感知交叉口系统

Rashid Alyassi, Majid Khonji, Xin Huang, Sungkweon Hong, Jorge Dias
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引用次数: 0

摘要

交通路口是交通网络的天然瓶颈,传统上使用红绿灯来协调车辆。随着通信网络和自动驾驶汽车(AV)技术的出现,为更高效的自动化方案提供了新的机会。然而,对于现有的自动化方法,一个关键的挑战在于检测和推理操作环境中的不确定性。不确定性主要来自自动驾驶汽车轨迹跟踪误差和人为驾驶车辆行为。在本文中,我们提出了一种自动驾驶汽车与人类驾驶汽车的风险感知智能交叉口系统。我们将该问题表述为一个视界后退-机会约束部分可观察马尔可夫决策过程(CC-POMDP)。提出了两种用于车辆碰撞检测的快速风险估计方法。前者提供了一个理论上的风险上限,而后者提供了一个经验上限,运行速度更快,因此更适合于实时规划。我们在两种情况下研究了我们的方法:(1)只有自动驾驶汽车的完全自主交叉路口,以及(2)人类驾驶车辆的信号交叉口和自动驾驶汽车的智能方案的混合交叉口。我们通过模拟表明,该系统提高了交叉口的效率,并生成了在风险阈值内运行的策略。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Contingency-Aware Intersection System for Autonomous and Human-Driven Vehicles with Bounded Risk
Traffic intersections are natural bottlenecks in transportation networks where traffic lights have traditionally been used for vehicle coordination. With the advent of communication networks and Autonomous Vehicle (AV) technologies, new opportunities arise for more efficient automated schemes. However, with existing automated approaches, a key challenge lies in detecting and reasoning about uncertainty in the operating environment. Uncertainty arises primarily from AV trajectory tracking error and human-driven vehicle behavior. In this paper, we propose a risk-aware intelligent intersection system for AVs along with human-driven vehicles. We formulate the problem as a receding-horizon Chance-Constrained Partially Observable Markov Decision Process (CC-POMDP). We propose two fast risk estimation methods for detecting vehicle collisions. The first provides a theoretical upper bound on risk, whereas the second provides an empirical upper bound and runs faster, hence more suitable for real-time planning. We examine our approach under two scenarios: (1) a fully autonomous intersection with AVs only, and (2) a hybrid of signalized intersection for human-driven vehicles along with an intelligent scheme for AVs. We show via simulation that the system improves the intersection's efficiency and generates policies that operate within a risk threshold.
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