Genetic Based Approach For Novosibirsk Traffic Light Scheduling

I. Davydov, D. Tolstykh, P. Kononova, Irina Legkih
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引用次数: 3

Abstract

Congestion, derived from the permanent increase in road traffic, is a pressing problem in the big cities all around the world nowadays. Thus, the methods of the intelligent control of vehicles traffic have to answer the growing demand. Optimization of traffic signal plans is an important step in this direction. Well-tuned traffic lights schedule augments the efficiency of vehicles flows processing. The research in intelligent traffic signal control helps to significantly improve a traffic situation, reduce the average vehicles waiting time and increase the average speed in the road network.In this study, we propose different configurations of a genetic algorithm to find an effective traffic lights schedule on the real road network. This heuristic evolutionary algorithm is known to cope well with different kinds of optimization problems. For application part of our research, we consider a complex segment of the street network in the city of Novosibirsk, Russia. Using a microscopic traffic simulator, SUMO, we model a corresponding road map fragment. The obtained model serves to evaluate the solutions of the traffic scheduling problem. We analyze the performance of the proposed genetic algorithm with different parameters and discuss the results of numerical experiments considering three different objectives functions which reflect traffic congestion. We show that the proposed approach can be applied to increase the quality of the traffic lights schedule, reducing traffic jams.
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基于遗传的新西伯利亚红绿灯调度方法
由于道路交通的持续增长而导致的拥堵,是当今世界各大城市面临的一个紧迫问题。因此,车辆交通的智能控制方法必须满足日益增长的需求。交通信号方案的优化是实现这一目标的重要一步。良好的交通灯调度提高了车辆流处理的效率。智能交通信号控制的研究有助于显著改善交通状况,减少车辆平均等待时间,提高路网平均速度。在本研究中,我们提出了不同配置的遗传算法,以找出一个有效的交通灯调度在真实的道路网络。这种启发式进化算法可以很好地处理各种优化问题。作为我们研究的应用部分,我们考虑了俄罗斯新西伯利亚市街道网络的一个复杂部分。使用微观交通模拟器,SUMO,我们对相应的路线图片段进行建模。所得模型用于评价交通调度问题的解。分析了遗传算法在不同参数下的性能,并讨论了反映交通拥堵的三种不同目标函数的数值实验结果。结果表明,该方法可用于提高交通信号灯调度质量,减少交通堵塞。
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