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An improved pheromone-based vehicle rerouting system to reduce traffic congestion

机译:一种改进的基于信息素的车辆重新排出系统,以减少交通拥堵

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The growing number of vehicles necessitates the implementation of effective vehicle rerouting systems. Designing an effective vehicle rerouting system is challenging due to the dynamic nature of vehicular network. In this paper, a Proactive Travel-time based Pheromone Rerouting (PTPR) system is proposed. First, PTPR system predicts future congestion level using travel time and vehicle density information. Then, vehicles are distributed to multiple paths to balance the traffic load. Different from the existing pheromone-based rerouting systems, each ant (vehicle) in PTPR system can deposit its pheromone on multiple road segments away, instead of its direct adjacent road segment, based on its route. This new pheromone model aims to improve the performance of PTPR system. In addition, a localized dynamic k-shortest path (LDkSP) algorithm is proposed to reduce computational effort of PTPR system. Experiments were conducted on two different areas (i.e. suburban and urban) using Simulation of Urban Mobility (SUMO). Results show that the proposed PTPR system outperforms the existing rerouting system by reducing mean travel time, fuel consumption, and increasing number of arrive vehicles by 8.2%, 2%, and 15.1% respectively in Woodlands (suburban) and 28.7%, 17.2%, and 29.5% respectively in Novena (urban). The computation time used to reroute each vehicle is also reduced by 68.3% and 92.1% in suburban and urban area respectively using the proposed LDkSP. Finally, experiments over various usage rates and estimation errors showed that the proposed PTPR system is robust to usage rates ranging from 80% to 100% and is able to function properly with estimation error of up to 20%. (C) 2019 Elsevier B.V. All rights reserved.
机译:越来越多的车辆需要实施有效的车辆重新路由系统。设计有效的车辆REROUTING系统由于车辆网络的动态性质而挑战。在本文中,提出了一种基于主动的行进时间的信息素重新路由(PTPR)系统。首先,PTPR系统使用旅行时间和车辆密度信息预测未来拥塞水平。然后,将车辆分发给多个路径以平衡交通负载。与现有的信息素基重型系统不同,PTPR系统中的每个蚂蚁(车辆)可以根据其路线将其信息素存放在多个路段上,而不是其直接相邻的道路段。这种新的信息素模型旨在提高PTPR系统的性能。此外,提出了一种局部动态的K-Shirest路径(LDKSP)算法来降低PTPR系统的计算工作。使用城市移动性模拟(SUMO)的两种不同地区(即郊区和城市)进行实验。结果表明,所提出的PTPR系统通过减少平均旅行时间,燃料消耗和越来越多的车辆,伍德地(郊区)和28.7%,17.2%诺贝斯(城市)分别为29.5%。使用所提出的LDKSP,在郊区和城市地区的郊区也减少了每辆车的计算时间在郊区也减少了68.3%和92.1%。最后,对各种使用率和估计误差的实验表明,所提出的PTPR系统的使用率从80%到100%的使用率很高,并且能够使用高达20%的估计误差正常运行。 (c)2019年Elsevier B.V.保留所有权利。

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