Mobile Edge Computing-Based Vehicular Cloud of Cooperative Adaptive Driving for Platooning Autonomous Self Driving

Ren-Hung Huang, Ben-Jye Chang, Yueh-Lin Tsai, Ying-Hsin Liang
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引用次数: 27

Abstract

The Cooperative Adaptive Cruise Control (CACC) for Human and Autonomous Self-Driving aims to achieve active safe driving that avoids vehicle accidents or traffic jam by exchanging the road traffic information (e.g., traffic flow, traffic density, velocity variation, etc.) among neighbor vehicles. However, in CACC, the butterfly effect is happened while exhibiting asynchronous brakes that easily lead to backward shockwaves and difficult to be removed. Several critical issues should be addressed in CACC, including: 1) difficult to adaptively control the inter-vehicle distances among neighbor vehicles and the vehicle speed, 2) suffering from the butterfly effect, 3) unstable vehicle traffic flow, etc. For addressing above issues in CACC, this paper proposes the Mobile Edge Computing-based vehicular cloud of Cooperative Adaptive Driving (CAD) approach to avoid shockwaves efficiently in platoon driving. Numerical results demonstrate that CAD approach outperforms the compared approaches in number of shockwaves, average vehicle velocity, and average travel time. Additionally, the adaptive platoon length is determined according to the traffic information gathered from the global and local clouds.
基于移动边缘计算的车辆协同自适应驾驶云队列自动驾驶
用于人类和自动驾驶的合作自适应巡航控制(Cooperative Adaptive Cruise Control, CACC)旨在通过交换相邻车辆之间的道路交通信息(如交通流量、交通密度、速度变化等),实现避免车辆事故或交通拥堵的主动安全驾驶。然而,在CACC中,蝴蝶效应发生在异步制动时,容易导致反向冲击波,难以消除。在ccc中需要解决的关键问题包括:难以自适应控制相邻车辆间距离和车速;存在蝴蝶效应;车辆交通流不稳定等。针对上述问题,本文提出了一种基于移动边缘计算的协同自适应驾驶车辆云(CAD)方法,以有效地避免队列驾驶中的冲击波。数值结果表明,CAD方法在激波数、平均车速和平均行驶时间等方面优于比较方法。此外,根据从全局和局部云收集的交通信息确定自适应队列长度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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