A Distributed Intelligent Traffic System Using Ant Colony Optimization: A NetLogo Modeling Approach

J. J. Kponyo, K. Nwizege, K. A. Opare, A.-R. Ahmed, H. Hamdoun, L.O.Akazua, S. Alshehri, H. Frank
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引用次数: 6

Abstract

As vehicle population continues to increase, trafficmanagement and issues related to congestion is an inevitable consequence. The path taken by drivers to arrive at their destination has the tendency of reducing the traffic within the network or increasing it. The choice of path, however, depends on how much traffic information is available to the drivers at the time of deciding the path to take. It is, therefore, the desire of most drivers to have information on the status of traffic on the candidate routes to a destination. A Distributed Intelligent Traffic System (DITS) which uses Ant Colony Optimization(ACO) to solve the traffic problem is presented in this paper. The DITS is implemented in NetLogo and simulated while studying traffic factors such as average travel speed, average waiting time of cars and the number of stopped cars in queue. Ten separate cases of the simulation have been considered for two scenarios of the DITS, one with ACO and the other without ACO. The average speed for the ACO case was found to be higher in all 10 cases and the average waiting time and the number of stopped cars were lower for the ACO case than the case without ACO, which is the preferred result.
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基于蚁群优化的分布式智能交通系统:一种NetLogo建模方法
随着车辆数量的不断增加,交通管理和与拥堵相关的问题是一个不可避免的后果。司机到达目的地的路径有减少或增加交通流量的趋势。然而,路径的选择取决于驾驶员在决定路径时可获得多少交通信息。因此,大多数驾驶员都希望获得通往目的地的候选路线上的交通状况信息。提出了一种基于蚁群算法的分布式智能交通系统(DITS)。在NetLogo中实现了DITS,并对平均行驶速度、平均车辆等待时间、排队停车次数等交通因素进行了仿真研究。对DITS的两种情况,一种有蚁群控制,另一种没有蚁群控制,进行了10个独立的模拟。有蚁群控制的情况下,10种情况下的平均速度均高于无蚁群控制的情况,平均等待时间和停车次数均低于无蚁群控制的情况,这是首选结果。
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