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首页> 外文期刊>The Journal of Artificial Intelligence Research >A Multiagent Approach to Autonomous Intersection Management
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A Multiagent Approach to Autonomous Intersection Management

机译:自治路口管理的多主体方法

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Artificial intelligence research is ushering in a new era of sophisticated, mass-market transportation technology. While computers can already y a passenger jet better than a trained human pilot, people are still faced with the dangerous yet tedious task of driving automobiles. Intelligent Transportation Systems (ITS) is the field that focuses on integrating information technology with vehicles and transportation infrastructure to make transportation safer, cheaper, and more efficient. Recent advances in ITS point to a future in which vehicles themselves handle the vast majority of the driving task. Once autonomous vehicles become popular, autonomous interactions amongst multiple vehicles will be possible. Current methods of vehicle coordination, which are all designed to work with human drivers, will be outdated. The bottleneck for roadway efficiency will no longer be the drivers, but rather the mechanism by which those drivers' actions are coordinated. While open-road driving is a well-studied and more-or-less-solved problem, urban traffic scenarios, especially intersections, are much more challenging. We believe current methods for controlling traffic, specifically at intersections, will not be able to take advantage of the increased sensitivity and precision of autonomous vehicles as compared to human drivers. In this article, we suggest an alternative mechanism for coordinating the movement of autonomous vehicles through intersections. Drivers and intersections in this mechanism are treated as autonomous agents in a multiagent system. In this multiagent system, intersections use a new reservation-based approach built around a detailed communication protocol, which we also present. We demonstrate in simulation that our new mechanism has the potential to significantly outperform current intersection control technology-traffic lights and stop signs. Because our mechanism can emulate a traffic light or stop sign, it subsumes the most popular current methods of intersection control. This article also presents two extensions to the mechanism. The first extension allows the system to control human-driven vehicles in addition to autonomous vehicles. The second gives priority to emergency vehicles without significant cost to civilian vehicles. The mechanism, including both extensions, is implemented and tested in simulation, and we present experimental results that strongly attest to the efficacy of this approach.
机译:人工智能研究正在开创尖端的大众市场运输技术的新时代。尽管计算机已经可以比训练有素的飞行员更好地使用喷气式客机,但是人们仍然面临着驾驶汽车的危险而乏味的任务。智能交通系统(ITS)致力于将信息技术与车辆和交通基础设施相集成,以使交通更安全,更便宜,更高效。 ITS的最新进展指出了未来,车辆本身将承担绝大部分驾驶任务。一旦自动驾驶汽车变得流行,多辆汽车之间的自动驾驶互动将成为可能。旨在与人类驾驶员一起使用的当前车辆协调方法将过时。道路效率的瓶颈将不再是驱动因素,而是协调这些驾驶员行为的机制。尽管开路驾驶是一个经过充分研究且几乎无法解决的问题,但城市交通场景,尤其是十字路口,更具挑战性。我们认为,与人类驾驶员相比,当前用于控制交通(特别是在十字路口)的方法将无法利用自动驾驶汽车提高的灵敏度和精度。在本文中,我们建议了一种用于协调自动驾驶汽车通过交叉路口的运动的替代机制。这种机制中的驱动程序和交叉点在多主体系统中被视为自治主体。在此多主体系统中,交叉路口使用围绕详细通信协议构建的新的基于预留的方法,我们也介绍了该方法。我们在仿真中证明了我们的新机制具有显着优于当前路口控制技术(交通信号灯和停车标志)的潜力。因为我们的机制可以模拟交通信号灯或停车标志,所以它包含了目前最流行的交叉路口控制方法。本文还介绍了对该机制的两个扩展。第一个扩展允许系统除自动驾驶汽车外还控制人类驾驶的汽车。第二个优先事项是紧急车辆,而民用车辆则不花费大笔费用。该机制(包括两个扩展)均在仿真中实现和测试,我们提供的实验结果充分证明了该方法的有效性。

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